CN112434289A - Internet of things-based network big data information anti-leakage method and system and server - Google Patents

Internet of things-based network big data information anti-leakage method and system and server Download PDF

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CN112434289A
CN112434289A CN202011372266.0A CN202011372266A CN112434289A CN 112434289 A CN112434289 A CN 112434289A CN 202011372266 A CN202011372266 A CN 202011372266A CN 112434289 A CN112434289 A CN 112434289A
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interface
information
configuration
target
classification
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陈洋洋
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F21/00Security arrangements for protecting computers, components thereof, programs or data against unauthorised activity
    • G06F21/50Monitoring users, programs or devices to maintain the integrity of platforms, e.g. of processors, firmware or operating systems
    • G06F21/55Detecting local intrusion or implementing counter-measures
    • G06F21/556Detecting local intrusion or implementing counter-measures involving covert channels, i.e. data leakage between processes
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F21/00Security arrangements for protecting computers, components thereof, programs or data against unauthorised activity
    • G06F21/60Protecting data
    • G06F21/62Protecting access to data via a platform, e.g. using keys or access control rules
    • G06F21/6218Protecting access to data via a platform, e.g. using keys or access control rules to a system of files or objects, e.g. local or distributed file system or database
    • G06F21/6245Protecting personal data, e.g. for financial or medical purposes

Abstract

The embodiment of the disclosure provides a network big data information anti-leakage method, a system and a server based on the internet of things, which can perform sensitivity-related protection processing on new registered read interface information according to sensitivity-related scanning data of the registered read interface information, then perform information analysis on protection security policy information of the obtained new registered read interface information, determine second interface protection verification information corresponding to the first interface protection verification information from undetermined interface protection programs obtained through the information analysis, thus perform information fusion on the first interface protection verification information and the second interface protection verification information, and perform anti-leakage configuration on the new registered read interface information based on the obtained target interface protection verification information. Therefore, automatic anti-disclosure configuration can be rapidly and effectively carried out on the new registered reading interface, so that the privacy and the safety of the network big data information are ensured.

Description

Internet of things-based network big data information anti-leakage method and system and server
Technical Field
The disclosure relates to the technical field of Internet of things and big data, in particular to a network big data information anti-leakage method, system and server based on the Internet of things.
Background
With the rapid development of the communication technology of the internet of things, the network video service terminal can access the related internet of things services through the cloud communication server at any time, so that the related internet of things equipment is called to check the internet of things services. However, the privacy and security of the network big data information generated by the service of the internet of things in the using process become a great consideration problem. In a traditional scheme, some anti-disclosure strategies are usually configured for some access interfaces registered currently, however, more and more functions of the internet of things service are added in an updating iteration process, so that new registration reading interfaces are also added, and the new registration reading interfaces and the registered reading interfaces often have a certain association relationship, for example, a certain service logic association exists. How to quickly and effectively perform automatic anti-disclosure configuration on the new registration reading interfaces so as to ensure the privacy and the security of the network big data information is a technical problem to be solved urgently in the field.
Disclosure of Invention
In order to overcome at least the above disadvantages in the prior art, an object of the present disclosure is to provide a method, a system, and a server for preventing network big data information from being divulged based on the internet of things, which can quickly and effectively perform automatic configuration for preventing divulgence on a new registered reading interface, so as to ensure privacy and security of the network big data information.
In a first aspect, the present disclosure provides an internet of things-based network big data information anti-leakage method, which is applied to a cloud communication server, where the cloud communication server is in communication connection with a plurality of network video service terminals, and the method includes:
acquiring new registered reading interface information of network big data information which is uploaded by the plurality of network video service terminals and is associated with target Internet of things services and registered reading interface information associated with the new registered reading interface information; the Internet of things access service of the newly registered read interface information and the registered read interface information is a first Internet of things access service;
performing sensitivity-related protection processing on the new registered read interface information according to the sensitivity-related scanning data of the registered read interface information to obtain protection security policy information of the new registered read interface information;
performing information analysis on the protection security policy information, and determining second interface protection verification information corresponding to the first interface protection verification information from an undetermined interface protection program obtained by the information analysis; the first interface protection verification information is interface protection verification information in the protection security policy information;
performing information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information;
outputting interface configuration information corresponding to the newly registered read interface information according to the target interface protection verification information, and performing anti-disclosure configuration on the newly registered read interface information according to the interface configuration information; the internet of things access service of the interface configuration information is the first internet of things access service and a second internet of things access service logically associated with the first internet of things access service.
In a possible implementation manner of the first aspect, the step of performing sensitivity-related protection processing on the new registered read interface information according to the registered read interface information to obtain protection security policy information of the new registered read interface information includes:
performing at least one time of information analysis on the newly registered read interface information, extracting a first registration behavior characteristic in the interface registration information obtained by the information analysis through the sensitive-involved protection interface, and obtaining a security threat clue of at least one registration behavior unit according to the extracted first registration behavior characteristic;
performing at least one time of information analysis on the registered read interface information, extracting a second registration behavior characteristic in the interface registration information obtained by the information analysis through the sensitivity-related protection interface, and obtaining an associated security threat clue of at least one registration behavior unit according to the extracted second registration behavior characteristic;
acquiring source information of a target threat thread in the security threat threads of each registered behavior unit in the at least one registered behavior unit, and determining threat situation information of each threat thread source information in the associated security threat threads of the registered behavior unit and determining threat situation information of the source information of the target threat thread;
determining the Hamming distance between the threat situation information of each threat clue source information and the threat situation information of the target threat clue source information, sequencing the Hamming distances corresponding to each threat clue source information, and selecting similar threat clue source information from each threat clue source information according to the sequencing result;
transmitting and converging at least one piece of similar threat thread source information to obtain convolutional threat thread source information, transmitting and converging the security threat threads of the registration behavior unit and the associated security threat threads of the first registration behavior unit, and obtaining an influence factor bitmap according to a transmission and convergence processing result; the influence factor bitmap comprises influence factors corresponding to all line request nodes of the security threat clues;
determining influence factor threat clue source information corresponding to the clue node in the target threat clue source information from the influence factor bitmap, performing tracking code calculation on threat situation information corresponding to the convolution threat clue source information and influence factor feature vectors corresponding to the influence factor threat clue source information, and taking a result of the tracking code calculation as tracking clue features of the key clue node of the target threat clue source information;
obtaining protection security policy characteristics according to the tracking clue characteristics of the key clue nodes, and performing characteristic analysis on the protection security policy characteristics to obtain protection security policy distribution of the registration behavior unit;
and indexing the protection security policy information of the new registration read interface information from the protection security policy distribution according to the security threat cue and the associated security threat cue of the registration behavior unit.
In a possible implementation manner of the first aspect, the step of performing information analysis on the protection security policy information and determining, from an undetermined interface protection program obtained by the information analysis, second interface protection verification information corresponding to the first interface protection verification information includes:
performing at least one time of information analysis on the protection security policy information to obtain at least one protection program of an interface to be determined;
and determining similar interface protection verification information of the first interface protection verification information from the global interface protection verification information of the at least one undetermined interface protection program to obtain second interface protection verification information.
In a possible implementation manner of the first aspect, the step of performing information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information includes:
respectively determining activated interface protection verification information in the first interface protection verification information and the second interface protection verification information to obtain first target interface protection verification information and second target interface protection verification information;
transmitting and converging the first target interface protection verification information to obtain a first protection verification script instruction, performing information analysis on the first target interface protection verification information, transmitting and converging the interface protection verification information obtained by the information analysis to obtain a second protection verification script instruction, and combining the first protection verification script instruction and the second protection verification script instruction to obtain a first protection verification instruction set corresponding to the first target interface protection verification information;
transmitting and converging the second target interface protection verification information to obtain a third protection verification script instruction, performing information analysis on the second target interface protection verification information, transmitting and converging the interface protection verification information obtained by the information analysis to obtain a fourth protection verification script instruction, and combining the third protection verification script instruction and the fourth protection verification script instruction to obtain a second protection verification instruction set corresponding to the second target interface protection verification information;
and transmitting and converging the first protection verification instruction set and the second protection verification instruction set to obtain the target interface protection verification information.
In a possible implementation manner of the first aspect, the step of outputting interface configuration information corresponding to the newly registered read interface information according to the target interface protection verification information includes:
interface item classification is carried out on the target interface protection verification information to obtain a plurality of interface configuration items, and for any interface configuration item, virtual interface environment information corresponding to a first virtual interface boundary of the interface configuration item is fused with virtual interface environment information corresponding to a second virtual interface boundary of the interface configuration item to obtain first virtual interface environment information corresponding to the interface configuration item;
acquiring an interface configuration incidence relation among the plurality of interface configuration items, and determining an interface configuration incidence array according to the interface configuration incidence relation, wherein elements in the interface configuration incidence array are used for indicating whether the interface configuration incidence relation exists among the interface configuration items;
for any interface configuration incidence relation, acquiring a relation vector corresponding to the interface configuration incidence relation according to the type of the interface configuration incidence relation, and for any interface configuration item in the plurality of interface configuration items, acquiring first virtual interface environment information corresponding to at least one interface configuration item having the interface configuration incidence relation with the interface configuration item;
inputting the interface configuration association array, the plurality of relation vectors and first virtual interface environment information corresponding to the at least one interface configuration item into a virtual interface test program to obtain second virtual interface environment information corresponding to the interface configuration item;
processing first virtual interface environment information corresponding to the plurality of interface configuration items based on a first cloud computing security component to obtain third virtual interface environment information corresponding to the plurality of interface configuration items, wherein the third virtual interface environment information corresponds to the second virtual interface environment information one by one;
fusing corresponding second virtual interface environment information and third virtual interface environment information to obtain fourth virtual interface environment information corresponding to the plurality of interface configuration items, and determining interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items based on the fourth virtual interface environment information corresponding to the plurality of interface configuration items;
and obtaining interface configuration information corresponding to the newly registered read interface information according to the determined interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items.
In a possible implementation manner of the first aspect, the determining, based on fourth virtual interface environment information corresponding to the plurality of interface configuration items, interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items includes:
performing threat perception description on fourth virtual interface environment information corresponding to the plurality of interface configuration items based on a second cloud computing security component to obtain first threat perception description components corresponding to the plurality of interface configuration items;
performing threat perception description on fourth virtual interface environment information corresponding to the plurality of interface configuration items based on a third cloud computing security component to obtain second threat perception description components corresponding to the plurality of interface configuration items;
fusing the first threat perception description component and the second threat perception description component to obtain a third threat perception description component, and obtaining threat perception simulation information obtained by the second cloud computing security component according to second virtual interface environment information corresponding to the plurality of interface configuration items, wherein the threat perception simulation information is used for simulating an interface configuration item belonging to a second target interface configuration item in the plurality of interface configuration items;
performing threat awareness description on the third threat awareness description component based on the third cloud computing security component and the threat awareness simulation information to obtain an updated second threat awareness description component, and performing threat awareness description on the third threat awareness description component based on the second cloud computing security component to obtain an updated first threat awareness description component, where the first threat awareness description component is used to indicate whether any interface configuration item in the plurality of interface configuration items is a first target interface configuration item, and the second threat awareness description component is used to indicate interface configuration information corresponding to each interface configuration item in the plurality of interface configuration items;
fusing the updated first threat perception description component and the updated second threat perception description component to obtain an updated third threat perception description component;
acquiring interface configuration path object information corresponding to the third threat perception description component, wherein the interface configuration path object information comprises at least one interface configuration path object;
extracting feature vectors of interface configuration path object information corresponding to the third threat perception description component, and determining an anti-disclosure channel segment corresponding to at least one first target interface configuration item in the plurality of interface configuration items;
determining a related anti-disclosure channel segment set according to the anti-disclosure channel segments, extracting a highest-level anti-disclosure channel segment of the anti-disclosure channel segments and a target anti-disclosure network segment of the related anti-disclosure channel segment set associated with the highest-level anti-disclosure channel segment by taking a set threshold value as a browsing vector segment interval, wherein the highest-level anti-disclosure channel segment is used for representing an anti-disclosure channel segment formed by the fact that the number of anti-disclosure configuration nodes in an anti-disclosure level space in the anti-disclosure channel segment is larger than a set number;
and according to at least two target anti-leakage configuration nodes related in the target anti-leakage network segment, generating a plurality of vector inclination units by the anti-leakage data segments corresponding to the target anti-leakage configuration nodes according to the grade direction, calculating the same data segments between all the anti-leakage data segments in the next target anti-leakage configuration node and all the anti-leakage data segments in the last target anti-leakage configuration node, and taking the index data configuration information corresponding to the same data segments as the interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items.
In a possible implementation manner of the first aspect, the step of performing anti-disclosure configuration on the newly registered read interface information according to the interface configuration information includes:
based on a target machine learning network, carrying out index classification on each interface configuration item information in the interface configuration information to obtain an index classification target, wherein the target machine learning network is obtained by utilizing a reinforcement learning algorithm for training;
and configuring each interface configuration item information in the interface configuration information into a corresponding index classification target of the anti-disclosure control corresponding to the newly registered read interface information.
In one possible implementation manner of the first aspect, the target machine learning network is obtained by:
randomly initializing a secret leakage prevention configuration classification sample sequence, wherein the secret leakage prevention configuration classification sample sequence comprises a plurality of secret leakage prevention configuration classification samples;
and performing iterative training based on the randomly initialized divulgence-prevention configuration classification sample sequence until a first training termination condition is met to obtain a target machine learning network.
In a possible implementation manner of the first aspect, the step of performing iterative training on the randomly initialized classified sample sequence of the anti-divulgence configuration until a first training termination condition is met to obtain a target machine learning network includes:
dividing the randomly initialized anti-disclosure configuration classification sample sequence into at least one target anti-disclosure configuration classification sample sequence;
for any one secret leakage prevention configuration classification sample in a target secret leakage prevention configuration classification sample sequence, acquiring a first classification feature vector of the secret leakage prevention configuration classification sample based on secret leakage prevention feature representation of each sample item in the secret leakage prevention configuration classification sample;
acquiring a second classification characteristic vector of any one divulgence prevention configuration classification sample based on a comparison result of each sample item in any one divulgence prevention configuration classification sample and an existing corpus database;
obtaining a sample data interval of any one divulgence prevention configuration classification sample based on each sample item in any divulgence prevention configuration classification sample, and obtaining a third classification feature vector of any divulgence prevention configuration classification sample based on the sample data interval of any divulgence prevention configuration classification sample;
obtaining a fourth classification feature vector of any one of the divulgence-prevention configuration classification samples based on the first classification feature vector, the second classification feature vector and the third classification feature vector;
acquiring a configuration classification attribute of any one divulgence prevention configuration classification sample, and acquiring a fifth classification feature vector of the any divulgence prevention configuration classification sample based on the divulgence prevention feature representation of the configuration classification attribute;
acquiring each anti-leakage loading item with the maximum confidence coefficient corresponding to each sample item in any anti-leakage configuration classification sample, and acquiring a sixth classification feature vector of any anti-leakage configuration classification sample based on the anti-leakage feature representation of each anti-leakage loading item with the maximum confidence coefficient;
obtaining the confidence coefficient of each anti-leakage loading item with the maximum confidence coefficient, and obtaining a seventh classification feature vector of any anti-leakage configuration classification sample based on the confidence coefficient of each anti-leakage loading item with the maximum confidence coefficient and the sample data interval of the configuration classification attribute;
acquiring an eighth classification feature vector of any one classified sample of the anti-divulgence configuration based on the fifth classification feature vector, the sixth classification feature vector and the seventh classification feature vector;
acquiring target features of any one of the anti-divulgence configuration classification samples based on the fourth classification feature vector and the eighth classification feature vector, wherein the target anti-divulgence configuration classification sample sequence is a first target anti-divulgence configuration classification sample sequence in the at least one target anti-divulgence configuration classification sample sequence;
inputting the target characteristics of each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence into a first data index classification model to obtain an index classification result of each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence;
for any one divulgence prevention configuration classification sample in the target divulgence prevention configuration classification sample sequence, when the index classification result of the any divulgence prevention configuration classification sample is a first result, taking a first weight value as the weight value of the any divulgence prevention configuration classification sample;
when the index classification result of any one divulgence prevention configuration classification sample is a second result, taking a second weight value as the weight value of any one divulgence prevention configuration classification sample;
generating candidate data corresponding to each anti-disclosure configuration classification sample in the target anti-disclosure configuration classification sample sequence based on the target feature, the index classification result, the weight value and the target feature of each anti-disclosure configuration classification sample in a second target anti-disclosure configuration classification sample sequence, wherein the second target anti-disclosure configuration classification sample sequence is a next target anti-disclosure configuration classification sample sequence of the target anti-disclosure configuration classification sample sequence in the at least one target anti-disclosure configuration classification sample sequence;
selecting candidate data of a target quantity, and updating the target grid unit corresponding to the first data index classification model based on the candidate data of the target quantity;
calculating a difference parameter corresponding to the first data index classification model according to the updated target grid unit;
updating parameters of the first data index classification model based on the difference parameters to obtain an updated first data index classification model;
performing iterative training based on the updated first data index classification model until a first training termination condition is met to obtain a second data index classification model;
and performing iterative training based on the second data index classification model until a second training termination condition is met to obtain a target machine learning network.
In a possible implementation manner of the first aspect, the step of generating candidate data corresponding to each divulgence-prevention configuration classification sample in the target divulgence-prevention configuration classification sample sequence based on the target feature, the index classification result, the weight value, and the target feature of each divulgence-prevention configuration classification sample in the second target divulgence-prevention configuration classification sample sequence includes:
for any one divulgence prevention configuration classification sample in the target divulgence prevention configuration classification sample sequence, when an index classification result of the any divulgence prevention configuration classification sample is a first result, generating first candidate data corresponding to the any divulgence prevention configuration classification sample based on a target feature, a first result, a first weight value and a target feature of interface configuration item information corresponding to the any divulgence prevention configuration classification sample in the second target divulgence prevention configuration classification sample sequence;
and when the index classification result of any one divulgence prevention configuration classification sample is a second result, generating second candidate data corresponding to any divulgence prevention configuration classification sample based on the target feature, the second result, a second weight value and the target feature of the interface configuration item information corresponding to any divulgence prevention configuration classification sample in the second target divulgence prevention configuration classification sample sequence.
In a possible implementation manner of the first aspect, the divulgence-prevention configuration classification sample includes interface configuration item sample information and an index classification label of the interface configuration item sample information.
In a second aspect, an embodiment of the present disclosure further provides a network big data information anti-disclosure device based on the internet of things, which is applied to a cloud communication server, where the cloud communication server is in communication connection with a plurality of network video service terminals, and the device includes:
the acquisition module is used for acquiring new registration reading interface information of network big data information which is uploaded by the plurality of network video service terminals and is associated with target Internet of things services and registered reading interface information associated with the new registration reading interface information; the Internet of things access service of the newly registered read interface information and the registered read interface information is a first Internet of things access service;
the protection processing module is used for carrying out sensitivity-related protection processing on the new registered reading interface information according to the sensitivity-related scanning data of the registered reading interface information to obtain protection safety strategy information of the new registered reading interface information;
the information analysis module is used for carrying out information analysis on the protection security policy information and determining second interface protection verification information corresponding to the first interface protection verification information from the undetermined interface protection program obtained by the information analysis; the first interface protection verification information is interface protection verification information in the protection security policy information;
the fusion module is used for carrying out information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information;
the configuration module is used for outputting interface configuration information corresponding to the new registered read interface information according to the target interface protection verification information and carrying out anti-disclosure configuration on the new registered read interface information according to the interface configuration information; the internet of things access service of the interface configuration information is the first internet of things access service and a second internet of things access service logically associated with the first internet of things access service.
In a third aspect, the embodiment of the disclosure further provides a network big data information leakage prevention system based on the internet of things, which includes a cloud communication server and a plurality of network video service terminals in communication connection with the cloud communication server;
the network big data information anti-leakage system based on the Internet of things is used for acquiring new registration reading interface information of network big data information which is uploaded by the plurality of network video service terminals and is associated with target Internet of things services and registered reading interface information associated with the new registration reading interface information; the Internet of things access service of the newly registered read interface information and the registered read interface information is a first Internet of things access service;
the network big data information anti-disclosure system based on the Internet of things is used for carrying out sensitivity-related protection processing on the newly registered read interface information according to sensitivity-related scanning data of the registered read interface information to obtain protection safety strategy information of the newly registered read interface information;
the network big data information anti-divulgence system based on the Internet of things is used for carrying out information analysis on the protection security policy information and determining second interface protection verification information corresponding to the first interface protection verification information from an undetermined interface protection program obtained by the information analysis; the first interface protection verification information is interface protection verification information in the protection security policy information;
the network big data information anti-disclosure system based on the Internet of things is used for carrying out information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information;
the network big data information anti-leakage system based on the Internet of things is used for outputting interface configuration information corresponding to the newly registered read interface information according to the target interface protection verification information and carrying out anti-leakage configuration on the newly registered read interface information according to the interface configuration information; the internet of things access service of the interface configuration information is the first internet of things access service and a second internet of things access service logically associated with the first internet of things access service.
In a fourth aspect, an embodiment of the present disclosure further provides a cloud communication server, where the cloud communication server includes a processor, a machine-readable storage medium, and a network interface, where the machine-readable storage medium, the network interface, and the processor are connected through a bus system, the network interface is used for being communicatively connected with at least one network video service terminal, the machine-readable storage medium is used for storing a program, an instruction, or a code, and the processor is used for executing the program, the instruction, or the code in the machine-readable storage medium to execute the method for preventing the leakage of the internet-of-things-based network big data information in any one possible design of the first aspect or the first aspect.
In a fifth aspect, an embodiment of the present disclosure provides a computer-readable storage medium, where instructions are stored, and when executed, cause a computer to perform the method for preventing leakage of internet-of-things-based network big data information in the first aspect or any one of the possible designs of the first aspect.
Based on any one of the above aspects, the disclosure can perform sensitivity-related protection processing on new registered read interface information according to sensitivity-related scanning data of the registered read interface information, then perform information analysis on the obtained protection security policy information of the new registered read interface information, determine second interface protection verification information corresponding to the first interface protection verification information from an undetermined interface protection program obtained by the information analysis, thereby perform information fusion on the first interface protection verification information and the second interface protection verification information, and perform anti-disclosure configuration on the new registered read interface information based on the obtained target interface protection verification information. Therefore, automatic anti-disclosure configuration can be rapidly and effectively carried out on the new registered reading interface, so that the privacy and the safety of the network big data information are ensured.
Drawings
To more clearly illustrate the technical solutions of the embodiments of the present disclosure, the drawings that are required to be used in the embodiments will be briefly described below, it should be understood that the following drawings only illustrate some embodiments of the present disclosure and therefore should not be considered as limiting the scope, and for those skilled in the art, other related drawings may be obtained from the drawings without inventive effort.
Fig. 1 is a schematic view of an application scenario of a network big data information anti-disclosure system based on the internet of things according to an embodiment of the present disclosure;
fig. 2 is a schematic flow chart of a network big data information leakage prevention method based on the internet of things according to the embodiment of the present disclosure;
fig. 3 is a functional module schematic diagram of a network big data information anti-disclosure device based on the internet of things according to the embodiment of the present disclosure;
fig. 4 is a block diagram schematically illustrating the structure of a cloud communication server for implementing the internet-of-things-based network big data information leakage prevention method according to the embodiment of the present disclosure.
Detailed Description
Reference will now be made in detail to the embodiments illustrated in the accompanying drawings. In the following detailed description, numerous specific details are set forth in order to provide a thorough understanding of the present disclosure. It will be understood by those skilled in the art, however, that the present disclosure may be practiced without these specific details. In other instances, well-known methods, procedures, components, and circuits have not been described in detail as not to unnecessarily obscure embodiments.
Fig. 1 is an interaction diagram of a network big data information anti-disclosure system 10 based on the internet of things according to an embodiment of the present disclosure. The internet of things-based network big data information anti-disclosure system 10 may include a cloud communication server 100 and a network video service terminal 200 communicatively connected to the cloud communication server 100. The internet of things-based network big data information leakage prevention system 10 shown in fig. 1 is only one possible example, and in other possible embodiments, the internet of things-based network big data information leakage prevention system 10 may also include only a part of the components shown in fig. 1 or may also include other components.
In this embodiment, the network video service terminal 200 may include a mobile device, a tablet computer, a laptop computer, or the like, or any combination thereof. In some embodiments, the mobile device may include a smart home device, a wearable device, a smart mobile device, a virtual reality device, an augmented reality device, or the like, or any combination thereof. In some embodiments, the smart home devices may include control devices of smart electrical devices, smart monitoring devices, smart televisions, smart cameras, and the like, or any combination thereof. In some embodiments, the wearable device may include a smart bracelet, a smart lace, smart glass, a smart helmet, a smart watch, a smart garment, a smart backpack, a smart accessory, or the like, or any combination thereof. In some embodiments, the smart mobile device may include a smartphone, a personal digital assistant, a gaming device, and the like, or any combination thereof. In some embodiments, the virtual reality device and/or the augmented reality device may include a virtual reality helmet, virtual reality glass, a virtual reality patch, an augmented reality helmet, augmented reality glass, an augmented reality patch, or the like, or any combination thereof. For example, the virtual reality device and/or augmented reality device may include various virtual reality products and the like.
In this embodiment, the cloud communication server 100 and the network video service terminal 200 in the internet-of-things-based network big data information leakage prevention system 10 may execute the internet-of-things-based network big data information leakage prevention method described in the following method embodiment in a matching manner, and the detailed description of the following method embodiment may be referred to for the execution steps of the cloud communication server 100 and the network video service terminal 200.
In order to solve the technical problem in the foregoing background, fig. 2 is a schematic flow chart of the method for preventing the network big data information leakage based on the internet of things according to the embodiment of the present disclosure, and the method for preventing the network big data information leakage based on the internet of things according to the embodiment may be executed by the cloud communication server 100 shown in fig. 1, and the method for preventing the network big data information leakage based on the internet of things is described in detail below.
Step S110, new registered read interface information of the network big data information associated with the target internet of things service uploaded by the plurality of network video service terminals 200 and registered read interface information associated with the new registered read interface information are obtained.
And step S120, performing sensitivity-related protection processing on the newly registered read interface information according to the sensitivity-related scanning data of the registered read interface information to obtain protection security policy information of the newly registered read interface information.
And step S130, carrying out information analysis on the protection security policy information, and determining second interface protection verification information corresponding to the first interface protection verification information from the undetermined interface protection program obtained by the information analysis.
Step S140, performing information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information.
And S150, outputting interface configuration information corresponding to the newly registered read interface information according to the target interface protection verification information, and performing anti-disclosure configuration on the newly registered read interface information according to the interface configuration information.
In this embodiment, the internet of things access services of the newly registered read interface information and the registered read interface information are both the first internet of things access service. The first internet of things access service can refer to any service which can be generated by accessible related internet of things equipment, such as information control service of smart homes and linkage service of smart office equipment.
In this embodiment, the first interface protection verification information may be interface protection verification information in the protection security policy information, and the interface protection verification information may refer to related parameter information that needs to generate a verification process when accessing a related interface.
In this embodiment, the internet of things access service of the interface configuration information may be a first internet of things access service and a second internet of things access service logically associated with the first internet of things access service, so that the integrity of the anti-disclosure configuration may be improved in consideration of the first internet of things access service and the second internet of things access service logically associated with the first internet of things access service.
Based on the above design, in this embodiment, the new registered read interface information can be subjected to the sensitivity-related protection processing according to the sensitivity-related scanning data of the registered read interface information, then the obtained protection security policy information of the new registered read interface information is subjected to information analysis, the second interface protection verification information corresponding to the first interface protection verification information is determined from the undetermined interface protection program obtained by the information analysis, so that the first interface protection verification information and the second interface protection verification information are subjected to information fusion, and the new registered read interface information is subjected to the anti-disclosure configuration based on the obtained target interface protection verification information. Therefore, automatic anti-disclosure configuration can be rapidly and effectively carried out on the new registered reading interface, so that the privacy and the safety of the network big data information are ensured.
In one possible implementation manner, for step S120, in order to deeply mine the security threat clue situation related to the sensitive scan data registered with the read interface information, so as to facilitate the sensitive protection processing, the following exemplary sub-steps can be implemented, which are described in detail below.
And a substep S121 of performing at least one time of information analysis on the newly registered read interface information, extracting a first registration behavior characteristic in the interface registration information obtained by the information analysis through the sensitive-involved protection interface, and obtaining a security threat clue of at least one registration behavior unit according to the extracted first registration behavior characteristic.
And a substep S122, performing at least one time of information analysis on the registered read interface information, extracting a second registration behavior characteristic in the interface registration information obtained by the information analysis through the sensitive-involved protection interface, and obtaining an associated security threat clue of at least one registration behavior unit according to the extracted second registration behavior characteristic.
And a substep S123 of obtaining source information of the target threat thread in the security threat threads of each registered behavior unit in the at least one registered behavior unit, determining threat situation information of each threat thread source information in the associated security threat threads of the registered behavior unit, and determining threat situation information of the source information of the target threat thread.
And a substep S124 of determining hamming distances between the threat situation information of each threat cue source information and the threat situation information of the target threat cue source information, sorting the hamming distances corresponding to each threat cue source information, and selecting similar threat cue source information from each threat cue source information according to the sorting result.
And a substep S125, performing transmission convergence processing on at least one similar threat thread source information to obtain the source information of the convolution threat thread, performing transmission convergence processing on the security threat thread of the registration behavior unit and the associated security threat thread of the first registration behavior unit, and obtaining an influence factor bitmap according to a transmission convergence processing result. The influence factor bitmap comprises influence factors corresponding to all line cable nodes of the security threat clues.
And a substep S126 of determining influence factor threat thread source information corresponding to the thread node in the target threat thread source information from the influence factor bitmap, performing tracking code calculation on the threat situation information corresponding to the convolution threat thread source information and the influence factor feature vector corresponding to the influence factor threat thread source information, and taking the result of the tracking code calculation as the tracking thread feature of the key thread node of the target threat thread source information.
And a substep S127 of obtaining the protection security policy characteristics according to the tracking clue characteristics of the key clue nodes, and performing characteristic analysis on the protection security policy characteristics to obtain the protection security policy distribution of the registration behavior unit.
And a substep S128 of indexing the protection security policy information of the new registered read interface information from the protection security policy distribution according to the security threat clue and the associated security threat clue of the registered behavior unit.
Therefore, based on the substep S121 to the substep S128, security threat clues related to the sensitive scan data of the registered read interface information can be deeply mined, so as to facilitate the sensitive protection processing.
In one possible implementation, step S130 may be embodied by the following exemplary sub-steps, which are described in detail below.
And a substep S131, performing at least one information analysis on the protection security policy information to obtain at least one protection program to be determined interface.
And a substep S132, determining similar interface protection verification information of the first interface protection verification information from the global interface protection verification information of at least one undetermined interface protection program to obtain second interface protection verification information.
In one possible implementation, step S140 may be embodied by the following exemplary sub-steps, which are described in detail below.
And a substep S141 of determining activated interface protection verification information in the first interface protection verification information and the second interface protection verification information respectively to obtain first target interface protection verification information and second target interface protection verification information.
And a substep S142, performing transmission convergence processing on the first target interface protection verification information to obtain a first protection verification script instruction, performing information analysis on the first target interface protection verification information, performing transmission convergence processing on the interface protection verification information obtained by the information analysis to obtain a second protection verification script instruction, and combining the first protection verification script instruction and the second protection verification script instruction to obtain a first protection verification instruction set corresponding to the first target interface protection verification information.
And a substep S143, performing transmission convergence processing on the second target interface protection verification information to obtain a third protection verification script instruction, performing information analysis on the second target interface protection verification information, performing transmission convergence processing on the interface protection verification information obtained by the information analysis to obtain a fourth protection verification script instruction, and combining the third protection verification script instruction and the fourth protection verification script instruction to obtain a second protection verification instruction set corresponding to the second target interface protection verification information.
And a substep S144, carrying out transmission convergence processing on the first protection verification instruction set and the second protection verification instruction set to obtain target interface protection verification information.
Therefore, based on the substeps S141 to 144, the fusion is performed by the transmission convergence process, thereby improving the accuracy in the fusion process.
In one possible implementation, step S150 may be embodied by the following exemplary sub-steps, which are described in detail below.
And a substep S151, performing interface item classification on the target interface protection verification information to obtain a plurality of interface configuration items, and fusing virtual interface environment information corresponding to a first virtual interface boundary of an interface configuration item and virtual interface environment information corresponding to a second virtual interface boundary of the interface configuration item for any interface configuration item to obtain first virtual interface environment information corresponding to the interface configuration item.
And a substep S152, obtaining the interface configuration incidence relation among the plurality of interface configuration items, and determining an interface configuration incidence array according to the interface configuration incidence relation, wherein elements in the interface configuration incidence array are used for indicating whether the interface configuration incidence relation exists among the interface configuration items.
And a substep S153, for any interface configuration incidence relation, obtaining a relation vector corresponding to the interface configuration incidence relation according to the type of the interface configuration incidence relation, and for any interface configuration item in the plurality of interface configuration items, obtaining first virtual interface environment information corresponding to at least one interface configuration item having the interface configuration incidence relation with the interface configuration item.
In the substep S154, the interface configuration association array, the plurality of relationship vectors, and the first virtual interface environment information corresponding to the at least one interface configuration item are input into the virtual interface test program, so as to obtain the second virtual interface environment information corresponding to the interface configuration item.
And a substep S155, processing the first virtual interface environment information corresponding to the plurality of interface configuration items based on the first cloud computing security component to obtain third virtual interface environment information corresponding to the plurality of interface configuration items, where the third virtual interface environment information corresponds to the second virtual interface environment information one to one.
And a substep S156, fusing the corresponding second virtual interface environment information and the third virtual interface environment information to obtain fourth virtual interface environment information corresponding to the plurality of interface configuration items, and determining interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items based on the fourth virtual interface environment information corresponding to the plurality of interface configuration items.
In the substep S157, interface configuration information corresponding to the newly registered read interface information is obtained according to the interface configuration information corresponding to at least one first target interface configuration item in the determined plurality of interface configuration items.
Therefore, based on the substeps S151 to 157, the interface configuration information corresponding to the newly registered read interface information is determined after the test of the virtual interface environment, so that the accuracy of the interface configuration information is improved.
In sub-step S156, as one possible example, may be implemented by the following detailed description.
(1) And carrying out threat perception description on fourth virtual interface environment information corresponding to the plurality of interface configuration items based on the second cloud computing security component to obtain first threat perception description components corresponding to the plurality of interface configuration items.
(2) And performing threat perception description on fourth virtual interface environment information corresponding to the plurality of interface configuration items based on the third cloud computing security component to obtain second threat perception description components corresponding to the plurality of interface configuration items.
(3) And fusing the first threat perception description component and the second threat perception description component to obtain a third threat perception description component, and obtaining threat perception simulation information obtained by the second cloud computing security component according to second virtual interface environment information corresponding to the plurality of interface configuration items, wherein the threat perception simulation information is used for simulating an interface configuration item belonging to a second target interface configuration item in the plurality of interface configuration items.
(4) And performing threat awareness description on the third threat awareness description component based on the third cloud computing security component and the threat awareness simulation information to obtain an updated second threat awareness description component, performing threat awareness description on the third threat awareness description component based on the second cloud computing security component to obtain an updated first threat awareness description component, wherein the first threat awareness description component is used for indicating whether any interface configuration item in the plurality of interface configuration items is a first target interface configuration item, and the second threat awareness description component is used for indicating interface configuration information corresponding to each interface configuration item in the plurality of interface configuration items.
(5) And fusing the updated first threat perception description component and the updated second threat perception description component to obtain an updated third threat perception description component.
(6) And acquiring interface configuration path object information corresponding to the third threat perception description component, wherein the interface configuration path object information comprises at least one interface configuration path object.
(7) And extracting the characteristic vector of the interface configuration path object information corresponding to the third threat perception description component, and determining the anti-disclosure channel segment corresponding to at least one first target interface configuration item in the plurality of interface configuration items.
(8) And determining a related anti-disclosure channel segment set according to the anti-disclosure channel segments, extracting the highest-level anti-disclosure channel segment of the anti-disclosure channel segments and a target anti-disclosure network segment of the related anti-disclosure channel segment set by taking a set threshold as a browsing vector segment interval, wherein the highest-level anti-disclosure channel segment is used for indicating that the number of anti-disclosure configuration nodes in an anti-disclosure level space in the anti-disclosure channel segment is greater than the set number of anti-disclosure channel segments.
(9) According to at least two target anti-leakage configuration nodes related in the target anti-leakage network segment, generating a plurality of vector inclination units by the anti-leakage data segments corresponding to the target anti-leakage configuration nodes according to the grade direction, calculating the same data segments between all anti-leakage data segments in the next target anti-leakage configuration node and all anti-leakage data segments in the last target anti-leakage configuration node, and taking index data configuration information corresponding to the same data segments as interface configuration information corresponding to at least one first target interface configuration item in a plurality of interface configuration items.
In a possible implementation manner, for step S150, in the process of performing anti-disclosure configuration on the newly registered read interface information according to the interface configuration information, the following exemplary sub-steps may be implemented in detail, which are described in detail below.
And a substep S158 of performing index classification on each interface configuration item information in the interface configuration information based on the target machine learning network to obtain an index classification target, wherein the target machine learning network is obtained by utilizing a reinforcement learning algorithm for training.
And a substep S159, configuring each interface configuration item information in the interface configuration information into a corresponding index classification target of the anti-disclosure control corresponding to the newly registered read interface information.
As a possible and further success, the target machine learning network may be obtained by:
and step S1581, initializing an anti-disclosure configuration classification sample sequence randomly, wherein the anti-disclosure configuration classification sample sequence comprises a plurality of anti-disclosure configuration classification samples.
And a substep S1582 of performing iterative training based on the randomly initialized classified sample sequence of the anti-disclosure configuration until a first training termination condition is met to obtain a target machine learning network.
In sub-step S1582, the training process may be implemented by the following exemplary implementation, which is described in detail below.
(1) And dividing the randomly initialized anti-disclosure configuration classification sample sequence into at least one target anti-disclosure configuration classification sample sequence.
(2) And for any one secret leakage prevention configuration classification sample in the target secret leakage prevention configuration classification sample sequence, acquiring a first classification feature vector of any one secret leakage prevention configuration classification sample based on the secret leakage prevention feature representation of each sample item in any one secret leakage prevention configuration classification sample.
(3) And acquiring a second classification characteristic vector of any one divulgence-prevention configuration classification sample based on a comparison result of each sample item in any one divulgence-prevention configuration classification sample and the existing corpus database.
(4) And obtaining a sample data interval of any one of the anti-leakage configuration classification samples based on each sample item in any one of the anti-leakage configuration classification samples, and obtaining a third classification feature vector of any one of the anti-leakage configuration classification samples based on the sample data interval of any one of the anti-leakage configuration classification samples.
(5) And acquiring a fourth classification feature vector of any one classified sample of the anti-disclosure configuration based on the first classification feature vector, the second classification feature vector and the third classification feature vector.
(6) And acquiring the configuration classification attribute of any one divulgence prevention configuration classification sample, and acquiring a fifth classification feature vector of any divulgence prevention configuration classification sample based on the divulgence prevention feature representation of the configuration classification attribute.
(7) And acquiring each anti-leakage loading item with the maximum confidence coefficient corresponding to each sample item in any anti-leakage configuration classification sample, and acquiring a sixth classification feature vector of any anti-leakage configuration classification sample based on the anti-leakage feature representation of each anti-leakage loading item with the maximum confidence coefficient.
(8) And obtaining the confidence coefficient of each anti-leakage loading item with the maximum confidence coefficient, and obtaining a seventh classification feature vector of any anti-leakage configuration classification sample based on the confidence coefficient of each anti-leakage loading item with the maximum confidence coefficient and the sample data interval of the configuration classification attribute.
(9) And acquiring an eighth classification feature vector of any one classified sample of the anti-disclosure configuration based on the fifth classification feature vector, the sixth classification feature vector and the seventh classification feature vector.
(10) And acquiring the target characteristics of any one anti-secret-leakage configuration classification sample based on the fourth classification characteristic vector and the eighth classification characteristic vector, wherein the target anti-secret-leakage configuration classification sample sequence is a first target anti-secret-leakage configuration classification sample sequence in at least one target anti-secret-leakage configuration classification sample sequence.
(11) And inputting the target characteristics of each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence into the first data index classification model to obtain the index classification result of each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence.
(12) And for any one anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence, when the index classification result of any one anti-leakage configuration classification sample is a first result, taking the first weight value as the weight value of any one anti-leakage configuration classification sample.
(13) And when the index classification result of any one of the anti-disclosure configuration classification samples is a second result, taking the second weight value as the weight value of any one of the anti-disclosure configuration classification samples.
(14) And generating candidate data corresponding to each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence based on the target characteristics, the index classification result, the weight value and the target characteristics of each anti-leakage configuration classification sample in the second target anti-leakage configuration classification sample sequence, wherein the second target anti-leakage configuration classification sample sequence is a next target anti-leakage configuration classification sample sequence of the target anti-leakage configuration classification sample sequence in the at least one target anti-leakage configuration classification sample sequence.
For example, for any one of the target anti-disclosure configuration classification sample sequences, when the index classification result of any one of the anti-disclosure configuration classification sample sequences is the first result, the first candidate data corresponding to any one of the anti-disclosure configuration classification sample sequences is generated based on the target feature, the first result, the first weight value, and the target feature of the interface configuration item information corresponding to any one of the anti-disclosure configuration classification sample in the second target anti-disclosure configuration classification sample sequence.
For another example, when the index classification result of any one of the divulgence-prevention configuration classification samples is the second result, the second candidate data corresponding to any one of the divulgence-prevention configuration classification samples is generated based on the target feature, the second result, the second weight value, and the target feature of the interface configuration item information corresponding to any one of the divulgence-prevention configuration classification samples in the second target divulgence-prevention configuration classification sample sequence.
(15) And selecting the candidate data with the target quantity, and updating the target grid unit corresponding to the first data index classification model based on the candidate data with the target quantity.
(16) And calculating a difference parameter corresponding to the first data index classification model according to the updated target grid unit.
(17) And updating the parameters of the first data index classification model based on the difference parameters to obtain an updated first data index classification model.
(18) And performing iterative training based on the updated first data index classification model until a first training termination condition is met to obtain a second data index classification model.
(19) And performing iterative training based on the second data index classification model until a second training termination condition is met, and obtaining the target machine learning network.
The divulgence-prevention configuration classification sample may include interface configuration item sample information and an index classification tag of the interface configuration item sample information.
Fig. 3 is a schematic functional module diagram of the internet-of-things-based network big data information anti-divulgence device 300 according to the embodiment of the present disclosure, in this embodiment, functional modules of the internet-of-things-based network big data information anti-divulgence device 300 may be divided according to the method embodiment executed by the cloud communication server 100, that is, the following functional modules corresponding to the internet-of-things-based network big data information anti-divulgence device 300 may be used to execute the method embodiments executed by the cloud communication server 100. The network big data information leakage prevention device 300 based on the internet of things may include an obtaining module 310, a protection processing module 320, an information analyzing module 330, a fusing module 340, and a configuration module 350, and the functions of the functional modules of the network big data information leakage prevention device 300 based on the internet of things are described in detail below.
The obtaining module 310 is configured to obtain new registered read interface information of the network big data information associated with the target internet of things service uploaded by the multiple network video service terminals 200 and registered read interface information associated with the new registered read interface information. The access services of the internet of things of the newly registered reading interface information and the registered reading interface information are first access services of the internet of things. The obtaining module 310 may be configured to perform the step S110, and the detailed implementation of the obtaining module 310 may refer to the detailed description of the step S110.
And the protection processing module 320 is configured to perform sensitivity-related protection processing on the newly registered read interface information according to the sensitivity-related scanning data of the registered read interface information, so as to obtain protection security policy information of the newly registered read interface information. The guard processing module 320 may be configured to execute the step S120, and the detailed implementation of the guard processing module 320 may refer to the detailed description of the step S120.
And the information analysis module 330 is configured to perform information analysis on the protection security policy information, and determine, from the pending interface protection program obtained through the information analysis, second interface protection verification information corresponding to the first interface protection verification information. The first interface protection verification information is interface protection verification information in the protection security policy information. The information parsing module 330 may be configured to perform the step S130, and the detailed implementation of the information parsing module 330 may refer to the detailed description of the step S130.
And the fusion module 340 is configured to perform information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information. The fusion module 340 may be configured to perform the step S140, and the detailed implementation of the fusion module 340 may refer to the detailed description of the step S140.
And a configuration module 350, configured to output interface configuration information corresponding to the newly registered read interface information according to the target interface protection verification information, and perform anti-disclosure configuration on the newly registered read interface information according to the interface configuration information. The internet of things access service of the interface configuration information is a first internet of things access service and a second internet of things access service logically associated with the first internet of things access service. The configuration module 350 may be configured to perform the step S150 of preventing the network big data information from being divulged based on the internet of things, and for a detailed implementation of the configuration module 350, reference may be made to the detailed description of the step S150.
It should be noted that the division of the modules of the above apparatus is only a logical division, and the actual implementation may be wholly or partially integrated into one physical entity, or may be physically separated. And these modules can be realized in the form of software called by processing element; or may be implemented entirely in hardware; and part of the modules can be realized in the form of calling software by the processing element, and part of the modules can be realized in the form of hardware. For example, the obtaining module 310 may be a processing element separately set up, or may be implemented by being integrated into a chip of the apparatus, or may be stored in a memory of the apparatus in the form of program code, and the processing element of the apparatus calls and executes the functions of the obtaining module 310. Other modules are implemented similarly. In addition, all or part of the modules can be integrated together or can be independently realized. The processing element described herein may be an integrated circuit having signal processing capabilities. In implementation, each step of the above method or each module above may be implemented by an integrated logic circuit of hardware in a processor element or an instruction in the form of software.
For example, the above modules may be one or more integrated circuits configured to implement the above methods, such as: one or more Application Specific Integrated Circuits (ASICs), or one or more microprocessors (DSPs), or one or more Field Programmable Gate Arrays (FPGAs), among others. For another example, when some of the above modules are implemented in the form of a processing element scheduler code, the processing element may be a general-purpose processor, such as a Central Processing Unit (CPU) or other processor that can call program code. As another example, these modules may be integrated together, implemented in the form of a system-on-a-chip (SOC).
Fig. 4 shows a hardware structure diagram of the cloud communication server 100 for implementing the control device, where the cloud communication server 100 may include a processor 110, a machine-readable storage medium 120, a bus 130, and a transceiver 140, as shown in fig. 4.
In a specific implementation process, the at least one processor 110 executes computer-executable instructions stored in the machine-readable storage medium 120 (for example, the obtaining module 310, the guard processing module 320, the information parsing module 330, the fusion module 340, and the configuration module 350 included in the internet-of-things-based network big data information anti-divulgence device 300 shown in fig. 3), so that the processor 110 may execute the internet-of-things-based network big data information anti-divulgence method according to the above method embodiment, where the processor 110, the machine-readable storage medium 120, and the transceiver 140 are connected through the bus 130, and the processor 110 may be configured to control a transceiving action of the transceiver 140, so as to perform data transceiving with the network video service terminal 200.
For a specific implementation process of the processor 110, reference may be made to the above-mentioned method embodiments executed by the cloud communication server 100, and implementation principles and technical effects are similar, which are not described herein again.
In the embodiment shown in fig. 4, it should be understood that the Processor may be a Central Processing Unit (CPU), other general purpose Processor, a Digital Signal Processor (DSP), an Application Specific Integrated Circuit (ASIC), etc. A general purpose processor may be a microprocessor or the processor may be any conventional processor or the like. The steps of a method disclosed in connection with the present invention may be embodied directly in a hardware processor, or in a combination of the hardware and software modules within the processor.
The machine-readable storage medium 120 may comprise high-speed RAM memory and may also include non-volatile storage NVM, such as at least one disk memory.
The bus 130 may be an Industry Standard Architecture (ISA) bus, a Peripheral Component Interconnect (PCI) bus, an Extended ISA (EISA) bus, or the like. The bus 130 may be divided into an address bus, a data bus, a control bus, and the like. For ease of illustration, the buses in the figures of the present application are not limited to only one bus or one type of bus.
In addition, the embodiment of the disclosure also provides a readable storage medium, in which computer execution instructions are stored, and when a processor executes the computer execution instructions, the method for preventing the leakage of the network big data information based on the internet of things is implemented.
The readable storage medium described above may be implemented by any type of volatile or non-volatile memory device or combination thereof, such as Static Random Access Memory (SRAM), electrically erasable programmable read-only memory (EEPROM), erasable programmable read-only memory (EPROM), programmable read-only memory (PROM), read-only memory (ROM), magnetic memory, flash memory, magnetic or optical disk. Readable storage media can be any available media that can be accessed by a general purpose or special purpose computer.
The foregoing description, for purpose of explanation, has been described with reference to specific embodiments. However, the illustrative discussions above are not intended to be exhaustive or to limit the disclosure to the precise forms disclosed. Many modifications and variations are possible in light of the above teaching. The embodiments were chosen and described in order to best explain the principles of the disclosure and its practical applications, to thereby enable others skilled in the art to best utilize the disclosure and various embodiments with various modifications as are suited to the particular use contemplated.

Claims (10)

1. The network big data information anti-leakage method based on the Internet of things is applied to a cloud communication server, the cloud communication server is in communication connection with a plurality of network video service terminals, and the method comprises the following steps:
acquiring new registered reading interface information of network big data information which is uploaded by the plurality of network video service terminals and is associated with target Internet of things services and registered reading interface information associated with the new registered reading interface information; the Internet of things access service of the newly registered read interface information and the registered read interface information is a first Internet of things access service;
performing sensitivity-related protection processing on the new registered read interface information according to the sensitivity-related scanning data of the registered read interface information to obtain protection security policy information of the new registered read interface information;
performing information analysis on the protection security policy information, and determining second interface protection verification information corresponding to the first interface protection verification information from an undetermined interface protection program obtained by the information analysis; the first interface protection verification information is interface protection verification information in the protection security policy information;
performing information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information;
outputting interface configuration information corresponding to the newly registered read interface information according to the target interface protection verification information, and performing anti-disclosure configuration on the newly registered read interface information according to the interface configuration information; the Internet of things access service of the interface configuration information is the first Internet of things access service and a second Internet of things access service logically associated with the first Internet of things access service;
the step of performing anti-disclosure configuration on the newly registered read interface information according to the interface configuration information includes:
based on a target machine learning network, carrying out index classification on each interface configuration item information in the interface configuration information to obtain an index classification target, wherein the target machine learning network is obtained by utilizing a reinforcement learning algorithm for training;
configuring each interface configuration item information in the interface configuration information to a corresponding index classification target of the anti-disclosure control corresponding to the newly registered read interface information;
the target machine learning network is obtained by:
randomly initializing a secret leakage prevention configuration classification sample sequence, wherein the secret leakage prevention configuration classification sample sequence comprises a plurality of secret leakage prevention configuration classification samples;
performing iterative training based on the randomly initialized divulgence-prevention configuration classification sample sequence until a first training termination condition is met to obtain a target machine learning network;
the step of performing iterative training on the random initialized divulgence-preventing configuration classification sample sequence until a first training termination condition is met to obtain a target machine learning network comprises the following steps of:
dividing the randomly initialized anti-disclosure configuration classification sample sequence into at least one target anti-disclosure configuration classification sample sequence;
for any one secret leakage prevention configuration classification sample in a target secret leakage prevention configuration classification sample sequence, acquiring a first classification feature vector of the secret leakage prevention configuration classification sample based on secret leakage prevention feature representation of each sample item in the secret leakage prevention configuration classification sample;
acquiring a second classification characteristic vector of any one divulgence prevention configuration classification sample based on a comparison result of each sample item in any one divulgence prevention configuration classification sample and an existing corpus database;
obtaining a sample data interval of any one divulgence prevention configuration classification sample based on each sample item in any divulgence prevention configuration classification sample, and obtaining a third classification feature vector of any divulgence prevention configuration classification sample based on the sample data interval of any divulgence prevention configuration classification sample;
obtaining a fourth classification feature vector of any one of the divulgence-prevention configuration classification samples based on the first classification feature vector, the second classification feature vector and the third classification feature vector;
acquiring a configuration classification attribute of any one divulgence prevention configuration classification sample, and acquiring a fifth classification feature vector of the any divulgence prevention configuration classification sample based on the divulgence prevention feature representation of the configuration classification attribute;
acquiring each anti-leakage loading item with the maximum confidence coefficient corresponding to each sample item in any anti-leakage configuration classification sample, and acquiring a sixth classification feature vector of any anti-leakage configuration classification sample based on the anti-leakage feature representation of each anti-leakage loading item with the maximum confidence coefficient;
obtaining the confidence coefficient of each anti-leakage loading item with the maximum confidence coefficient, and obtaining a seventh classification feature vector of any anti-leakage configuration classification sample based on the confidence coefficient of each anti-leakage loading item with the maximum confidence coefficient and the sample data interval of the configuration classification attribute;
acquiring an eighth classification feature vector of any one classified sample of the anti-divulgence configuration based on the fifth classification feature vector, the sixth classification feature vector and the seventh classification feature vector;
acquiring target features of any one of the anti-divulgence configuration classification samples based on the fourth classification feature vector and the eighth classification feature vector, wherein the target anti-divulgence configuration classification sample sequence is a first target anti-divulgence configuration classification sample sequence in the at least one target anti-divulgence configuration classification sample sequence;
inputting the target characteristics of each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence into a first data index classification model to obtain an index classification result of each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence;
for any one divulgence prevention configuration classification sample in the target divulgence prevention configuration classification sample sequence, when the index classification result of the any divulgence prevention configuration classification sample is a first result, taking a first weight value as the weight value of the any divulgence prevention configuration classification sample;
when the index classification result of any one divulgence prevention configuration classification sample is a second result, taking a second weight value as the weight value of any one divulgence prevention configuration classification sample;
generating candidate data corresponding to each anti-disclosure configuration classification sample in the target anti-disclosure configuration classification sample sequence based on the target feature, the index classification result, the weight value and the target feature of each anti-disclosure configuration classification sample in a second target anti-disclosure configuration classification sample sequence, wherein the second target anti-disclosure configuration classification sample sequence is a next target anti-disclosure configuration classification sample sequence of the target anti-disclosure configuration classification sample sequence in the at least one target anti-disclosure configuration classification sample sequence;
selecting candidate data of a target quantity, and updating the target grid unit corresponding to the first data index classification model based on the candidate data of the target quantity;
calculating a difference parameter corresponding to the first data index classification model according to the updated target grid unit;
updating parameters of the first data index classification model based on the difference parameters to obtain an updated first data index classification model;
performing iterative training based on the updated first data index classification model until a first training termination condition is met to obtain a second data index classification model;
and performing iterative training based on the second data index classification model until a second training termination condition is met to obtain a target machine learning network.
2. The internet-of-things-based network big data information anti-leakage method according to claim 1, wherein the step of performing sensitivity-related protection processing on the new registered read interface information according to the registered read interface information to obtain protection security policy information of the new registered read interface information includes:
performing at least one time of information analysis on the newly registered read interface information, extracting a first registration behavior characteristic in the interface registration information obtained by the information analysis through the sensitive-involved protection interface, and obtaining a security threat clue of at least one registration behavior unit according to the extracted first registration behavior characteristic;
performing at least one time of information analysis on the registered read interface information, extracting a second registration behavior characteristic in the interface registration information obtained by the information analysis through the sensitivity-related protection interface, and obtaining an associated security threat clue of at least one registration behavior unit according to the extracted second registration behavior characteristic;
acquiring source information of a target threat thread in the security threat threads of each registered behavior unit in the at least one registered behavior unit, and determining threat situation information of each threat thread source information in the associated security threat threads of the registered behavior unit and determining threat situation information of the source information of the target threat thread;
determining the Hamming distance between the threat situation information of each threat clue source information and the threat situation information of the target threat clue source information, sequencing the Hamming distances corresponding to each threat clue source information, and selecting similar threat clue source information from each threat clue source information according to the sequencing result;
transmitting and converging at least one piece of similar threat thread source information to obtain convolutional threat thread source information, transmitting and converging the security threat threads of the registration behavior unit and the associated security threat threads of the first registration behavior unit, and obtaining an influence factor bitmap according to a transmission and convergence processing result; the influence factor bitmap comprises influence factors corresponding to all line request nodes of the security threat clues;
determining influence factor threat clue source information corresponding to the clue node in the target threat clue source information from the influence factor bitmap, performing tracking code calculation on threat situation information corresponding to the convolution threat clue source information and influence factor feature vectors corresponding to the influence factor threat clue source information, and taking a result of the tracking code calculation as tracking clue features of the key clue node of the target threat clue source information;
obtaining protection security policy characteristics according to the tracking clue characteristics of the key clue nodes, and performing characteristic analysis on the protection security policy characteristics to obtain protection security policy distribution of the registration behavior unit;
and indexing the protection security policy information of the new registration read interface information from the protection security policy distribution according to the security threat cue and the associated security threat cue of the registration behavior unit.
3. The internet-of-things-based network big data information leakage prevention method according to claim 1, wherein the step of performing information analysis on the protection security policy information and determining second interface protection verification information corresponding to the first interface protection verification information from an undetermined interface protection program obtained through the information analysis comprises the steps of:
performing at least one time of information analysis on the protection security policy information to obtain at least one protection program of an interface to be determined;
and determining similar interface protection verification information of the first interface protection verification information from the global interface protection verification information of the at least one undetermined interface protection program to obtain second interface protection verification information.
4. The internet-of-things-based network big data information leakage prevention method according to claim 1, wherein the step of performing information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information comprises:
respectively determining activated interface protection verification information in the first interface protection verification information and the second interface protection verification information to obtain first target interface protection verification information and second target interface protection verification information;
transmitting and converging the first target interface protection verification information to obtain a first protection verification script instruction, performing information analysis on the first target interface protection verification information, transmitting and converging the interface protection verification information obtained by the information analysis to obtain a second protection verification script instruction, and combining the first protection verification script instruction and the second protection verification script instruction to obtain a first protection verification instruction set corresponding to the first target interface protection verification information;
transmitting and converging the second target interface protection verification information to obtain a third protection verification script instruction, performing information analysis on the second target interface protection verification information, transmitting and converging the interface protection verification information obtained by the information analysis to obtain a fourth protection verification script instruction, and combining the third protection verification script instruction and the fourth protection verification script instruction to obtain a second protection verification instruction set corresponding to the second target interface protection verification information;
and transmitting and converging the first protection verification instruction set and the second protection verification instruction set to obtain the target interface protection verification information.
5. The internet-of-things-based network big data information leakage prevention method according to claim 1, wherein the step of outputting interface configuration information corresponding to the newly registered read interface information according to the target interface protection verification information includes:
interface item classification is carried out on the target interface protection verification information to obtain a plurality of interface configuration items, and for any interface configuration item, virtual interface environment information corresponding to a first virtual interface boundary of the interface configuration item is fused with virtual interface environment information corresponding to a second virtual interface boundary of the interface configuration item to obtain first virtual interface environment information corresponding to the interface configuration item;
acquiring an interface configuration incidence relation among the plurality of interface configuration items, and determining an interface configuration incidence array according to the interface configuration incidence relation, wherein elements in the interface configuration incidence array are used for indicating whether the interface configuration incidence relation exists among the interface configuration items;
for any interface configuration incidence relation, acquiring a relation vector corresponding to the interface configuration incidence relation according to the type of the interface configuration incidence relation, and for any interface configuration item in the plurality of interface configuration items, acquiring first virtual interface environment information corresponding to at least one interface configuration item having the interface configuration incidence relation with the interface configuration item;
inputting the interface configuration association array, the plurality of relation vectors and first virtual interface environment information corresponding to the at least one interface configuration item into a virtual interface test program to obtain second virtual interface environment information corresponding to the interface configuration item;
processing first virtual interface environment information corresponding to the plurality of interface configuration items based on a first cloud computing security component to obtain third virtual interface environment information corresponding to the plurality of interface configuration items, wherein the third virtual interface environment information corresponds to the second virtual interface environment information one by one;
fusing corresponding second virtual interface environment information and third virtual interface environment information to obtain fourth virtual interface environment information corresponding to the plurality of interface configuration items, and determining interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items based on the fourth virtual interface environment information corresponding to the plurality of interface configuration items;
and obtaining interface configuration information corresponding to the newly registered read interface information according to the determined interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items.
6. The internet of things-based network big data information leakage prevention method according to claim 5, wherein the step of determining interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items based on fourth virtual interface environment information corresponding to the plurality of interface configuration items comprises:
performing threat perception description on fourth virtual interface environment information corresponding to the plurality of interface configuration items based on a second cloud computing security component to obtain first threat perception description components corresponding to the plurality of interface configuration items;
performing threat perception description on fourth virtual interface environment information corresponding to the plurality of interface configuration items based on a third cloud computing security component to obtain second threat perception description components corresponding to the plurality of interface configuration items;
fusing the first threat perception description component and the second threat perception description component to obtain a third threat perception description component, and obtaining threat perception simulation information obtained by the second cloud computing security component according to second virtual interface environment information corresponding to the plurality of interface configuration items, wherein the threat perception simulation information is used for simulating an interface configuration item belonging to a second target interface configuration item in the plurality of interface configuration items;
performing threat awareness description on the third threat awareness description component based on the third cloud computing security component and the threat awareness simulation information to obtain an updated second threat awareness description component, and performing threat awareness description on the third threat awareness description component based on the second cloud computing security component to obtain an updated first threat awareness description component, where the first threat awareness description component is used to indicate whether any interface configuration item in the plurality of interface configuration items is a first target interface configuration item, and the second threat awareness description component is used to indicate interface configuration information corresponding to each interface configuration item in the plurality of interface configuration items;
fusing the updated first threat perception description component and the updated second threat perception description component to obtain an updated third threat perception description component;
acquiring interface configuration path object information corresponding to the third threat perception description component, wherein the interface configuration path object information comprises at least one interface configuration path object;
extracting feature vectors of interface configuration path object information corresponding to the third threat perception description component, and determining an anti-disclosure channel segment corresponding to at least one first target interface configuration item in the plurality of interface configuration items;
determining a related anti-disclosure channel segment set according to the anti-disclosure channel segments, extracting a highest-level anti-disclosure channel segment of the anti-disclosure channel segments and a target anti-disclosure network segment of the related anti-disclosure channel segment set associated with the highest-level anti-disclosure channel segment by taking a set threshold value as a browsing vector segment interval, wherein the highest-level anti-disclosure channel segment is used for representing an anti-disclosure channel segment formed by the fact that the number of anti-disclosure configuration nodes in an anti-disclosure level space in the anti-disclosure channel segment is larger than a set number;
and according to at least two target anti-leakage configuration nodes related in the target anti-leakage network segment, generating a plurality of vector inclination units by the anti-leakage data segments corresponding to the target anti-leakage configuration nodes according to the grade direction, calculating the same data segments between all the anti-leakage data segments in the next target anti-leakage configuration node and all the anti-leakage data segments in the last target anti-leakage configuration node, and taking the index data configuration information corresponding to the same data segments as the interface configuration information corresponding to at least one first target interface configuration item in the plurality of interface configuration items.
7. The internet-of-things-based network big data information leakage prevention method according to claim 1, wherein the step of generating candidate data corresponding to each leakage prevention configuration classification sample in the target leakage prevention configuration classification sample sequence based on the target feature, the index classification result, the weight value, and the target feature of each leakage prevention configuration classification sample in the second target leakage prevention configuration classification sample sequence comprises:
for any one divulgence prevention configuration classification sample in the target divulgence prevention configuration classification sample sequence, when an index classification result of the any divulgence prevention configuration classification sample is a first result, generating first candidate data corresponding to the any divulgence prevention configuration classification sample based on a target feature, a first result, a first weight value and a target feature of interface configuration item information corresponding to the any divulgence prevention configuration classification sample in the second target divulgence prevention configuration classification sample sequence;
and when the index classification result of any one divulgence prevention configuration classification sample is a second result, generating second candidate data corresponding to any divulgence prevention configuration classification sample based on the target feature, the second result, a second weight value and the target feature of the interface configuration item information corresponding to any divulgence prevention configuration classification sample in the second target divulgence prevention configuration classification sample sequence.
8. The Internet of things-based network big data information leakage prevention method according to claim 1, wherein the leakage prevention configuration classification sample comprises interface configuration item sample information and an index classification label of the interface configuration item sample information.
9. The network big data information anti-leakage system based on the Internet of things comprises a cloud communication server and a plurality of network video service terminals in communication connection with the cloud communication server;
the network big data information anti-leakage system based on the Internet of things is used for acquiring new registration reading interface information of network big data information which is uploaded by the plurality of network video service terminals and is associated with target Internet of things services and registered reading interface information associated with the new registration reading interface information; the Internet of things access service of the newly registered read interface information and the registered read interface information is a first Internet of things access service;
the network big data information anti-disclosure system based on the Internet of things is used for carrying out sensitivity-related protection processing on the newly registered read interface information according to sensitivity-related scanning data of the registered read interface information to obtain protection safety strategy information of the newly registered read interface information;
the network big data information anti-divulgence system based on the Internet of things is used for carrying out information analysis on the protection security policy information and determining second interface protection verification information corresponding to the first interface protection verification information from an undetermined interface protection program obtained by the information analysis; the first interface protection verification information is interface protection verification information in the protection security policy information;
the network big data information anti-disclosure system based on the Internet of things is used for carrying out information fusion on the first interface protection verification information and the second interface protection verification information to obtain target interface protection verification information;
the network big data information anti-leakage system based on the Internet of things is used for outputting interface configuration information corresponding to the newly registered read interface information according to the target interface protection verification information and carrying out anti-leakage configuration on the newly registered read interface information according to the interface configuration information; the Internet of things access service of the interface configuration information is the first Internet of things access service and a second Internet of things access service logically associated with the first Internet of things access service;
the method for performing anti-disclosure configuration on the newly registered read interface information according to the interface configuration information includes:
based on a target machine learning network, carrying out index classification on each interface configuration item information in the interface configuration information to obtain an index classification target, wherein the target machine learning network is obtained by utilizing a reinforcement learning algorithm for training;
configuring each interface configuration item information in the interface configuration information to a corresponding index classification target of the anti-disclosure control corresponding to the newly registered read interface information;
the target machine learning network is obtained by:
randomly initializing a secret leakage prevention configuration classification sample sequence, wherein the secret leakage prevention configuration classification sample sequence comprises a plurality of secret leakage prevention configuration classification samples;
performing iterative training based on the randomly initialized divulgence-prevention configuration classification sample sequence until a first training termination condition is met to obtain a target machine learning network;
the method for performing iterative training on the classified sample sequence of the anti-disclosure configuration based on the random initialization until a first training termination condition is met to obtain a target machine learning network comprises the following steps:
dividing the randomly initialized anti-disclosure configuration classification sample sequence into at least one target anti-disclosure configuration classification sample sequence;
for any one secret leakage prevention configuration classification sample in a target secret leakage prevention configuration classification sample sequence, acquiring a first classification feature vector of the secret leakage prevention configuration classification sample based on secret leakage prevention feature representation of each sample item in the secret leakage prevention configuration classification sample;
acquiring a second classification characteristic vector of any one divulgence prevention configuration classification sample based on a comparison result of each sample item in any one divulgence prevention configuration classification sample and an existing corpus database;
obtaining a sample data interval of any one divulgence prevention configuration classification sample based on each sample item in any divulgence prevention configuration classification sample, and obtaining a third classification feature vector of any divulgence prevention configuration classification sample based on the sample data interval of any divulgence prevention configuration classification sample;
obtaining a fourth classification feature vector of any one of the divulgence-prevention configuration classification samples based on the first classification feature vector, the second classification feature vector and the third classification feature vector;
acquiring a configuration classification attribute of any one divulgence prevention configuration classification sample, and acquiring a fifth classification feature vector of the any divulgence prevention configuration classification sample based on the divulgence prevention feature representation of the configuration classification attribute;
acquiring each anti-leakage loading item with the maximum confidence coefficient corresponding to each sample item in any anti-leakage configuration classification sample, and acquiring a sixth classification feature vector of any anti-leakage configuration classification sample based on the anti-leakage feature representation of each anti-leakage loading item with the maximum confidence coefficient;
obtaining the confidence coefficient of each anti-leakage loading item with the maximum confidence coefficient, and obtaining a seventh classification feature vector of any anti-leakage configuration classification sample based on the confidence coefficient of each anti-leakage loading item with the maximum confidence coefficient and the sample data interval of the configuration classification attribute;
acquiring an eighth classification feature vector of any one classified sample of the anti-divulgence configuration based on the fifth classification feature vector, the sixth classification feature vector and the seventh classification feature vector;
acquiring target features of any one of the anti-divulgence configuration classification samples based on the fourth classification feature vector and the eighth classification feature vector, wherein the target anti-divulgence configuration classification sample sequence is a first target anti-divulgence configuration classification sample sequence in the at least one target anti-divulgence configuration classification sample sequence;
inputting the target characteristics of each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence into a first data index classification model to obtain an index classification result of each anti-leakage configuration classification sample in the target anti-leakage configuration classification sample sequence;
for any one divulgence prevention configuration classification sample in the target divulgence prevention configuration classification sample sequence, when the index classification result of the any divulgence prevention configuration classification sample is a first result, taking a first weight value as the weight value of the any divulgence prevention configuration classification sample;
when the index classification result of any one divulgence prevention configuration classification sample is a second result, taking a second weight value as the weight value of any one divulgence prevention configuration classification sample;
generating candidate data corresponding to each anti-disclosure configuration classification sample in the target anti-disclosure configuration classification sample sequence based on the target feature, the index classification result, the weight value and the target feature of each anti-disclosure configuration classification sample in a second target anti-disclosure configuration classification sample sequence, wherein the second target anti-disclosure configuration classification sample sequence is a next target anti-disclosure configuration classification sample sequence of the target anti-disclosure configuration classification sample sequence in the at least one target anti-disclosure configuration classification sample sequence;
selecting candidate data of a target quantity, and updating the target grid unit corresponding to the first data index classification model based on the candidate data of the target quantity;
calculating a difference parameter corresponding to the first data index classification model according to the updated target grid unit;
updating parameters of the first data index classification model based on the difference parameters to obtain an updated first data index classification model;
performing iterative training based on the updated first data index classification model until a first training termination condition is met to obtain a second data index classification model;
and performing iterative training based on the second data index classification model until a second training termination condition is met to obtain a target machine learning network.
10. A cloud communication server, characterized in that the cloud communication server comprises a processor, a machine-readable storage medium, and a network interface, the machine-readable storage medium, the network interface, and the processor are connected through a bus system, the network interface is used for being connected with at least one network video service terminal in a communication manner, the machine-readable storage medium is used for storing programs, instructions, or codes, and the processor is used for executing the programs, instructions, or codes in the machine-readable storage medium to execute the internet-of-things-based network big data information anti-leakage method according to any one of claims 1 to 8.
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