CN113283486B - Device type determination method based on wifi, electronic device and storage medium - Google Patents

Device type determination method based on wifi, electronic device and storage medium Download PDF

Info

Publication number
CN113283486B
CN113283486B CN202110530021.4A CN202110530021A CN113283486B CN 113283486 B CN113283486 B CN 113283486B CN 202110530021 A CN202110530021 A CN 202110530021A CN 113283486 B CN113283486 B CN 113283486B
Authority
CN
China
Prior art keywords
wifi
equipment
time period
type
value
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Active
Application number
CN202110530021.4A
Other languages
Chinese (zh)
Other versions
CN113283486A (en
Inventor
吕繁荣
俞锋锋
方毅
曾昱深
孙勇韬
王晨沐
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Hangzhou Yunshen Technology Co ltd
Original Assignee
Hangzhou Yunshen Technology Co ltd
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Hangzhou Yunshen Technology Co ltd filed Critical Hangzhou Yunshen Technology Co ltd
Priority to CN202110530021.4A priority Critical patent/CN113283486B/en
Publication of CN113283486A publication Critical patent/CN113283486A/en
Application granted granted Critical
Publication of CN113283486B publication Critical patent/CN113283486B/en
Active legal-status Critical Current
Anticipated expiration legal-status Critical

Links

Images

Classifications

    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F18/00Pattern recognition
    • G06F18/20Analysing
    • G06F18/24Classification techniques
    • G06F18/241Classification techniques relating to the classification model, e.g. parametric or non-parametric approaches
    • G06F18/2415Classification techniques relating to the classification model, e.g. parametric or non-parametric approaches based on parametric or probabilistic models, e.g. based on likelihood ratio or false acceptance rate versus a false rejection rate

Landscapes

  • Engineering & Computer Science (AREA)
  • Physics & Mathematics (AREA)
  • Theoretical Computer Science (AREA)
  • Data Mining & Analysis (AREA)
  • Bioinformatics & Cheminformatics (AREA)
  • Artificial Intelligence (AREA)
  • Life Sciences & Earth Sciences (AREA)
  • Bioinformatics & Computational Biology (AREA)
  • Computer Vision & Pattern Recognition (AREA)
  • Evolutionary Biology (AREA)
  • Evolutionary Computation (AREA)
  • General Engineering & Computer Science (AREA)
  • General Physics & Mathematics (AREA)
  • Probability & Statistics with Applications (AREA)
  • Mobile Radio Communication Systems (AREA)

Abstract

The invention discloses a device type determination method based on wifi, an electronic device and a storage medium, wherein the method comprises the following steps: s201, obtaining a second wifi set F ═ (F1, F2, F3, … …, Fs), and S is the wifi number; s202, performing aggregation processing on Fy in the F, and determining that a third wifi set V is (V1, V2, V3 … …, Vt), and t is the number of wifi, wherein the Vg refers to a device list corresponding to the g wifi; s203, screening out second-class equipment according to the t equipment lists, and determining first-class equipment connected with a target wifi and the target wifi according to wifi corresponding to the second-class equipment; according to the method, the device can be screened by determining wifi, on one hand, the accuracy of determining the type and the characteristic of the user corresponding to the interference data is low, and on the other hand, the type and the characteristic of the same type of user can be determined.

Description

Device type determination method based on wifi, electronic device and storage medium
Technical Field
The invention relates to the technical field of wifi, in particular to a device type determining method based on wifi, an electronic device and a readable storage medium.
Background
With the popularization of intelligent devices, users are required to have terminal devices, the terminal devices can reflect characteristics of some users, such as types and characteristics of the users, life styles corresponding to the users, and the like, the types of the users are determined based on device information, only the types and characteristics of a certain user can be reflected, and the types and characteristics of a class of users cannot be reflected.
At present, the type and the characteristics of the user are directly obtained through a database, and the data volume is large in the case, so that the accuracy of determining the type and the characteristics of the user is low due to the fact that the interference data are large, and the type and the characteristics of the same type of user are influenced.
Disclosure of Invention
In order to solve the problems in the prior art, a second wifi set F is obtained; performing aggregation processing on Fy in the F to determine a third wifi set V; s, screening out second-class equipment according to the t equipment lists, wherein on one hand, the accuracy of determining the type and the characteristic of the user is low due to too much interference data, and on the other hand, the type and the characteristic of the same-class user can be determined; the embodiment of the invention provides a device type determining method based on wifi, an electronic device and a readable storage medium. The technical scheme is as follows:
on one hand, the method for determining the type of the device based on the wifi comprises the following steps:
s201, obtaining a second wifi set F ═ (F1, F2, F3, … …, Fs), and S is the wifi number;
s202, performing aggregation processing on Fy in the F, and determining that a third wifi set V is (V1, V2, V3 … …, Vt), and t is the number of wifi, wherein the Vg refers to a device list corresponding to the g wifi;
s203, screening out second-class equipment according to the t equipment lists;
the step S203 further includes:
constructing a sample database according to the t equipment lists;
in the sample database, acquiring a specified device set B ═ (B1, B2, B3, … …, Bp), wherein p is the number of devices;
according to the B, a second equipment set is determined
Figure GDA0003686983410000021
And q is the number of the second type of equipment.
In another aspect, an electronic device includes a processor and a memory, where at least one instruction or at least one program is stored in the memory, and the at least one instruction or the at least one program is loaded and executed by the processor to implement the wifi-based device type determining method according to any one of the above.
In another aspect, a computer-readable storage medium stores at least one instruction or at least one program, and the at least one instruction or the at least one program is loaded and executed by a processor to implement the wifi-based device type determining method as any one of the above.
The WiFi-based equipment type determining method, the electronic equipment and the readable storage medium have the following technical effects that:
the method includes the steps that a device list of target wifi is obtained; performing feature processing on the Ai to obtain a first feature vector; obtaining a first probability value according to the first feature vector and a first target weight vector corresponding to the first feature vector; comparing the first probability value with a preset first probability threshold; when the first probability value is not less than the first probability threshold, determining that the target device is a first type of device; when the target probability value is smaller than the probability threshold value, acquiring application information of the target equipment to re-determine the type of the target equipment, and screening the equipment through wifi, so that on one hand, the accuracy of determining the type and the feature of the user corresponding to the interference data is low, and on the other hand, the type and the feature of the same type of user can be determined; in addition, the method and the device determine the second type of equipment based on the determined wifi type, so that the target wifi is determined according to the second type of equipment, the type of the target equipment is further determined, and meanwhile, the accuracy can be improved.
Drawings
In order to more clearly illustrate the technical solutions in the embodiments of the present invention, the drawings needed to be used in the description of the embodiments will be briefly introduced below, and it is obvious that the drawings in the following description are only some embodiments of the present invention, and it is obvious for those skilled in the art to obtain other drawings based on these drawings without creative efforts.
Fig. 1 is a schematic flowchart of a wifi-based device type determination method according to an embodiment of the present invention;
fig. 2 is a schematic flowchart of determining wifi targets according to an embodiment of the present invention;
fig. 3 is a schematic flowchart of determining a second type of device according to an embodiment of the present invention.
Detailed Description
The technical solutions in the embodiments of the present invention will be clearly and completely described below with reference to the drawings in the embodiments of the present invention, and it is obvious that the described embodiments are only a part of the embodiments of the present invention, and not all of the embodiments. All other embodiments, which can be obtained by a person skilled in the art without any inventive step based on the embodiments of the present invention, are within the scope of the present invention.
It should be noted that the terms "first," "second," and the like in the description and claims of the present invention and in the drawings described above are used for distinguishing between similar elements and not necessarily for describing a particular sequential or chronological order. It is to be understood that the data so used is interchangeable under appropriate circumstances such that the embodiments of the invention described herein are capable of operation in sequences other than those illustrated or described herein. Furthermore, the terms "comprises," "comprising," and "having," and any variations thereof, are intended to cover a non-exclusive inclusion, such that a process, method, system, article, or server that comprises a list of steps or elements is not necessarily limited to those steps or elements expressly listed, but may include other steps or elements not expressly listed or inherent to such process, method, article, or apparatus.
Example one
With reference to fig. 1 and fig. 2, a first embodiment provides a wifi-based device type determining method, where the method includes the following steps:
s101, obtaining a first device set A corresponding to the target wifi, (A1, A2, A3, … … and Am), wherein m is the number of the target devices, and the step S101 further includes the following steps of determining the target wifi:
s1011, acquiring a designated device set B ═ (B1, B2, B3, … …, Bp), where p is the number of devices;
s1012, determining a second device set according to the B
Figure GDA0003686983410000041
q is the number of the second type of equipment;
s1013, according to the
Figure GDA0003686983410000042
Determining a target wifi;
s102, performing feature processing on any Ai in the a to obtain a first feature vector C ═ C1, C2, C3, … …, Cn, where n is the number of features in C;
s103, obtaining a first probability value K according to the C and a first target weight vector W corresponding to C (W1, W2, W3, … …, Wn);
s104, comparing the K with a preset first probability threshold;
s105, when the K is not smaller than the first probability threshold, determining that the target device is a first type of device;
s106, when the K is smaller than the first probability threshold, acquiring the application information of the target device to redetermine the type of the target device.
Specifically, the a refers to a set of all devices connected to the target wifi.
Specifically, B refers to a set of devices in the sample database.
Specifically, the
Figure GDA0003686983410000043
Refers to a collection of devices of the second type.
Specifically, the first class of devices refers to devices with low priority, and the second class of devices refers to devices with high priority, that is, the priority corresponding to the second class of devices is higher than the priority corresponding to the first class of devices.
Specifically, the step S1012 further includes:
acquiring any Bj according to the B;
performing feature processing on the Bj to obtain a second feature vector
Figure GDA0003686983410000044
Figure GDA0003686983410000045
r is as
Figure GDA0003686983410000046
The number of middle features;
according to the above
Figure GDA0003686983410000051
And said
Figure GDA0003686983410000052
Corresponding second target weight vector
Figure GDA0003686983410000053
Figure GDA0003686983410000054
Obtaining a second probability value
Figure GDA0003686983410000055
Will be described in
Figure GDA0003686983410000056
Comparing with a preset second probability threshold;
when said
Figure GDA0003686983410000057
If the second probability threshold is larger than the second probability threshold, determining the designated equipment as second equipment, and generating the equipment
Figure GDA0003686983410000058
Specifically, said W and said
Figure GDA0003686983410000059
The method comprises the steps of obtaining the weight data through a weight database, wherein the weight database is a preset database.
Further, the
Figure GDA00036869834100000510
Wherein the content of the first and second substances,
Figure GDA00036869834100000511
further, the second probability threshold is in the range of 0-0.5, and preferably, the second probability threshold is 0.5.
Further, Bj refers to attribute information corresponding to the j-th specified device, j is 1 … … p, and Bj includes: one or more combinations of APP installation quantity, equipment charging times and equipment intervals are specified.
Preferentially, the Bj comprises the appointed APP installation number, the equipment charging times and the equipment distance, and the characteristic processing of the Bj refers to the judgment of different characteristics in the Bj and conditions corresponding to the characteristics of the characteristics; for example, when the specified APP installation number is not greater than a preset APP number, the
Figure GDA00036869834100000512
Is marked as 1, otherwise is marked as 0; when the charging frequency of the equipment is less than the preset charging frequency, the equipment is charged by the equipment
Figure GDA00036869834100000513
Is marked as 1, otherwise is marked as 0; when the equipment distance meets a second preset spacing distance
Figure GDA00036869834100000514
Is marked as 1, otherwise is marked as 0.
Further, the designated APP is a life APP, wherein the number range of the preset APP is 1-3; preferably, the preset number of APPs is 2.
Further, the device charging number refers to an average charging number of devices in a first time period, wherein the preset charging number range is 250-350, and preferably, the preset charging number is 300.
Further, the first period of time ranges from 7 to 15 days, preferably, the first period of time is 7 days.
Further, the device distance refers to a separation distance between a current position of the device and a set fixed position, for example, the fixed position may be a residential address or the like; wherein the second preset separation distance range is 150-250m, and preferably, the second preset separation distance is 200 m.
In a specific embodiment, when the number of designated APPs installed in the Bj is 1, the number of times of charging the device is 280, the device interval is 500m, the preset number of APPs is 2, the preset number of times of charging is 300, and the second preset interval distance is 200m, performing feature processing on the Bj to obtain the result
Figure GDA0003686983410000061
According to the above
Figure GDA0003686983410000062
The corresponding ones
Figure GDA0003686983410000063
Figure GDA0003686983410000064
Obtaining a second probability value
Figure GDA0003686983410000065
When said
Figure GDA0003686983410000066
Greater than the second probability threshold, determining that
Figure GDA0003686983410000067
Corresponding devices are of the second kindAnd (4) preparing.
Specifically, the step S1013 further includes:
according to the above
Figure GDA0003686983410000068
Generating a first wifi set, D ═ (D1, D2, D3, … …, Dp), p refers to the number of wifi lists of the first type, wherein the Dp refers to the p wifi list of the first type;
acquiring the frequency of any first type of wifi in the D;
comparing the frequency of the first type of wifi with a preset frequency threshold;
when the frequency of the first type of wifi is not smaller than a preset frequency threshold value, determining the first type of wifi as a target wifi;
and in the same way, traversing all the first wifi in the D.
Specifically, the first type of wifi means
Figure GDA0003686983410000069
Wifi to which it can connect.
Further, the first wifi list is a list composed of first wifi;
further, the D refers to a set formed by wifi lists of the first type.
Specifically, the preset number threshold ranges from 3 to 5, and preferably, the preset number threshold is 3.
Specifically, the frequency of the first type of wifi is the frequency of the first type of wifi when the first type of wifi has the same frequency in different first type of wifi lists.
In a particular embodiment, in said
Figure GDA00036869834100000610
The generated D is equal to (D1, D2, D3, D4), D1 is equal to (alpha-wifi, beta-wifi, gamma-wifi, delta-wifi), D2 is equal to (alpha-wifi, epsilon-wifi, lambda-wifi), D3 is equal to (alpha-wifi, theta-wifi, delta-wifi, mu-wifi), D4 is equal to (alpha-wifi, phi-wifi, theta-wifi, eta-wifi, psi)-wifi), it should be noted that α -wifi, β -wifi, γ -wifi, θ -wifi, δ -wifi, ε -wifi, λ -wifi, η -wif, μ -wifi and φ -wifi all represent a relatively independent wifi, wherein β 0-wifi is performed 4 times, β -wifi is performed 1 times, γ -wifi is performed 1 times, δ -wifi is performed 2 times, ε -wifi is performed 1 times, λ -wifi is performed 1 times, θ -wifi is performed 2 times, μ -wifi is performed 1 times, φ -wifi is performed 1 times, η -wifi is performed 1 times, and ψ -wifi is performed 1 times; and the frequency of the beta 1-wifi is greater than the preset frequency threshold value 3, and the alpha-wifi is determined to be the target wifi.
Specifically, K is C1 × W1+ C2 × W2+ C3 × W3+ … + Cn × Wn, where W1+ W2+ W3+ … + Wn is 1.
Specifically, the Ai refers to attribute information corresponding to the ith target device, where i is 1 … … m, and the Ai includes: appointing one or more combinations of APP installation quantity, equipment type, connection appointed wifi quantity and equipment interval.
Preferentially, the Ai comprises the steps of appointing APP installation quantity, equipment type, wifi connection quantity and equipment distance; the step of carrying out feature processing on the Ai refers to the step of judging different features in the Ai and conditions corresponding to the features of the Ai; for example, when the specified APP installation number is greater than the preset APP number, the C is marked as 1, otherwise, the C is marked as 0; when the number of the connected wifi is larger than the preset number of the wifi, marking the number of the C as 1, otherwise, marking the number of the C as 0; when the equipment type meets a preset equipment type, marking the C as 1, otherwise, marking the C as 0; and when the equipment distance meets a second preset spacing distance, marking the equipment distance as 1 in the C, otherwise, marking the equipment distance as 0.
Further, the specified APP installation number and the preset APP number are consistent with the specified APP installation number and the preset APP number corresponding to the Bj, and are not described herein again.
Further, the number of connected wifi means the number of connected wifi with high priority, wherein the preset wifi number range is 1-3, and preferentially, the preset wifi number is 2.
Further, the preset device type refers to a device type stored in a preset device sample database.
Further, the first preset spacing distance is greater than the second preset spacing distance, preferably, the range of the first preset spacing distance is 30-50km, and preferably, the first preset spacing distance is 50 km.
In a specific embodiment, when the number of APP installations specified in Ai is 3, the number of wifi connections is 3, the device type is a specified type, and the device distance is 53km, and the preset number of APP is 2, the preset number of wifi connections is 2, and the first preset separation distance is 50km, performing feature processing by using Aj to obtain (1, 0, 1, 1); and obtaining a first probability value K of 0.6 according to the C-value (1, 1, 1, 1) and the corresponding W-value (0.4, 0.1, 0.1), and determining that the device corresponding to the K is the first type device when the K is greater than the first probability threshold.
Specifically, in the step S106, the application information of the target device is obtained to redetermine the type of the target device, and a person skilled in the art can implement the method based on any well-known method, which is not described herein again.
As shown in fig. 3, the method further includes another method of determining a second type of device:
s201, obtaining a second wifi set F ═ (F1, F2, F3, … …, Fs), and S is the wifi number;
s202, performing aggregation processing on Fy in the F, and determining a third wifi set V (V1, V2, V3 … …, Vt), wherein t is the number of wifi, and Vj refers to a device list corresponding to the jth wifi;
s203, screening out second equipment according to the t equipment lists.
Specifically, the second wifi set refers to a set stored in a wifi sample database.
Specifically, the third wifi set is a set formed by wifi screened out after polymerization treatment, namely, V ∈ F.
Specifically, the step S202 may be implemented by any method known to those skilled in the art, and will not be described herein again.
Specifically, in the step S203, the sample database is configured according to the t device lists, and the second type of devices are screened out by referring to the steps S1011 to S1012, which is not described herein again.
Specifically, Fy refers to attribute information corresponding to the y wifi, where y is 1 … … s, and Fy includes: one or more of connected device information, connection mode information, device attribute information, and wifi location information.
Preferably, the Fy includes: connected device information, connection mode information, device attribute information, and wifi location information.
In a specific embodiment, the Fy comprises: connecting equipment information, connection mode information, equipment attribute information and wifi positional information, right connecting equipment information the connection mode information the equipment attribute information with wifi positional information carries out polymerization, polymerization can adopt arbitrary data polymerization processing method among the prior art to realize, obtains wifi aggregate value, according to wifi aggregate value compares with preset aggregate threshold value, if wifi aggregate value is greater than preset aggregate threshold value, then according to wifi that wifi aggregate value corresponds constructs V.
Specifically, the connection device information includes: the number of devices scanned by wifi in the second time period and the number of devices connected with wifi in the second time period, wherein the range in the second time period is 7-14 days, preferably, the second time period is 7 days.
Further, the connection device information further includes: according to the number of the devices scanned by the wifi in the second time period, the number of the devices scanned by the wifi in the second time period and a proportion value of the devices scanned by the wifi in the second time period are generated, the number of the devices scanned by the wifi in the working day and the proportion value of the devices scanned by the wifi in the non-working day, the number of the devices scanned by the wifi in the third time period and the proportion value of the devices scanned by the wifi in the third time period, the number of the devices scanned by the wifi in the fourth time period and the proportion value of the devices scanned by the wifi in the fifth time period, and the number of the devices scanned by the wifi in the fifth time period and the proportion value of the wifi in the non-working day.
Further, the connection device information further includes: according to the number of devices connected with wifi in the second time period, the number of devices connected with wifi in the second time period and the proportional value, the number of devices connected with wifi in a working day and the proportional value, the number of devices connected with wifi in a non-working day and the proportional value, the number of devices connected with wifi in the third time period and the proportional value, the number of devices connected with wifi in the fourth time period and the proportional value, and the number of devices connected with wifi in the fifth time period and the proportional value.
Further, the third time period is less than the fourth time period, which is less than the fifth time period, i.e., the third time period < the fourth time period < the fifth time period; wherein the third time period ranges from 2 to 3 days, the fourth time period ranges from 4 to 5 days, and the fifth time period ranges from 6 to 7 days.
Preferably, the third period of time is 3 days, the fourth period of time is 5 days and the fifth period of time is 7 days.
Further, the connection device information further includes first type information, second type information, and third type information; the first type of information refers to user basic information corresponding to the device, where the user basic information includes gender, age, family members, marital, residence address, etc., and a proportional value corresponding to the first type of information, for example, when the age in the basic information is 20-30 years old; the second type of information refers to user attention information corresponding to the device, and the user attention information includes: education, automobiles, reading, photography, games and the like, and the corresponding proportional value of the second type of information; the third type of information refers to device attribute information, and the device attribute information includes: the manufacturer of the device, the type of the device, etc., and a proportional value corresponding to the third type of information.
Specifically, the connection mode information includes: the APP activity in the sixth time period, the number of designated devices connected with wifi in the sixth time period and the number of non-designated devices connected with wifi in the sixth time period.
Further, the sixth time period ranges from 4 to 6 hours, preferably, the sixth time period is 4 hours, and 4 hours are from 0 to 4 points per day.
Preferably, the connection mode information further includes: and the variance value corresponding to the APP activity degree is generated through the APP activity degree in the sixth time period.
Further, the designated device refers to a virtual device used by no real user.
Further, the non-specific device refers to a virtual device used by a real user.
Specifically, the device attribute information includes: the number of devices connected with the wifi in different time periods and the corresponding proportional value thereof, the maximum difference value between the number of the devices connected with the wifi in different time periods and the number of the devices connected with the wifi in a preset time period; wherein, different time periods refer to different time areas divided in any day.
Further, the preset time period ranges from 3 hours to 5 hours, and preferably, the preset time period ranges from 3 hours.
Specifically, the wifi location information includes: the method comprises the steps of obtaining a geo-hash corresponding to wifi in a second time period, and generating the change times of the geo-hash, the type of the geo-hash and the number of devices logged into a blacklist in the geo-hash according to the geo-hash.
In the method provided by the embodiment, a device list of target wifi is obtained; performing feature processing on the Ai to obtain a first feature vector; obtaining a first probability value according to the first feature vector and a first target weight vector corresponding to the first feature vector; comparing the first probability value with a preset first probability threshold; when the first probability value is not less than the first probability threshold, determining that the target device is a first type of device; when the target probability value is smaller than the probability threshold, acquiring application information of the target equipment to re-determine the type of the target equipment, and screening the target equipment through wifi, wherein on one hand, the accuracy of determining the type and the feature of the user is low due to too much interfered data, and on the other hand, the type and the feature of the same type of user can be determined;
in addition, the embodiment also provides another method for determining the second type of device, which determines the second type of device based on the wifi type determination, so that the target wifi is determined according to the second type of device, the type of the target device is further determined, and meanwhile, the accuracy can be improved.
An embodiment of the present invention further provides an electronic device, which includes a processor and a memory, where the memory stores at least one instruction or at least one program, and the at least one instruction or the at least one program is loaded and executed by the processor to implement the wifi-based device type determining method as described above.
The computer device of embodiments of the present invention exists in a variety of forms, including but not limited to:
(1) a mobile communication device: such devices are characterized by mobile communications capabilities and are primarily targeted at providing voice, data communications. Such terminals include: smart phones (e.g., tpphone), multimedia phones, functional phones, and low-end phones, etc.
(2) Ultra mobile personal computer device: the equipment belongs to the category of personal computers, has calculation and processing functions and generally has the characteristic of mobile internet access. Such terminals include: PDA, MtD, and UMPC devices, etc., such as tPad.
(3) A portable entertainment device: such devices may display and play multimedia content. This type of device comprises: audio, video players (e.g., tPod), handheld game players, electronic books, and smart toys and portable car navigation devices.
(4) A server: the device for providing the computing service comprises a processor, a hard disk, a memory, a system bus and the like, and the server is similar to a general computer architecture, but has higher requirements on processing capacity, stability, reliability, safety, expandability, manageability and the like because of the need of providing high-reliability service.
(5) And other electronic devices with data interaction functions.
Embodiments of the present invention also provide a computer-readable storage medium, where the storage medium may be disposed in an electronic device to store at least one instruction or at least one program for implementing a wifi-based device type determining method in the method embodiments, and the at least one instruction or the at least one program is loaded and executed by the processor to implement the wifi-based device type determining method provided in the method embodiments.
Alternatively, in this embodiment, the storage medium may be located in at least one network server of a plurality of network servers of a computer network. Optionally, in this embodiment, the storage medium may include, but is not limited to: a U-disk, a Read-Only Memory (ROM), a Random Access Memory (RAM), a removable hard disk, a magnetic disk, or an optical disk, which can store program codes.
The above description is only for the purpose of illustrating the preferred embodiments of the present invention and is not to be construed as limiting the invention, and any modifications, equivalents, improvements and the like that fall within the spirit and principle of the present invention are intended to be included therein.

Claims (7)

1. A wifi-based device type determination method is characterized by comprising the following steps:
s201, obtaining a second wifi set F ═ (F1, F2, F3, … …, Fs), S is wifi number, where Fy includes: one or more combinations of connected device information, connection mode information, device attribute information and wifi location information, wherein y is 1 … … s;
s202, performing aggregation processing on Fy in F, and determining that a third wifi set V is (V1, V2, V3 … …, Vt), and t is the number of wifi, where Vg is a device list corresponding to the g wifi, and g is 1 … … t, where the step S202 includes:
obtaining a wifi aggregation value according to the Fy;
comparing the wifi aggregation value with a preset aggregation threshold value;
if the wifi aggregation value is larger than the preset aggregation threshold value, constructing the V according to wifi corresponding to the wifi aggregation value;
s203, screening out second-class equipment according to the t equipment lists;
the step S203 further includes:
constructing a sample database according to the t equipment lists;
in the sample database, acquiring a specified device set B ═ (B1, B2, B3, … …, Bp), where p is the number of devices;
according to the B, a second equipment set is determined
Figure FDA0003707640250000011
q is the number of the second type of equipment, wherein the method further comprises the following step of determining the number
Figure FDA0003707640250000012
Acquiring any Bj according to the B;
performing feature processing on the Bj to obtain a second feature vector
Figure FDA0003707640250000013
Figure FDA0003707640250000014
r is as
Figure FDA0003707640250000015
The number of middle features;
according to the above
Figure FDA0003707640250000016
And said
Figure FDA0003707640250000017
Corresponding second target weight vector
Figure FDA0003707640250000018
Figure FDA0003707640250000019
Obtaining a second probability value
Figure FDA00037076402500000110
Will be described in
Figure FDA0003707640250000021
Comparing with a preset second probability threshold;
when said
Figure FDA0003707640250000022
If the second probability threshold is larger than the second probability threshold, determining the designated equipment as second equipment, and generating the equipment
Figure FDA0003707640250000023
2. The wifi-based device type determining method according to claim 1, wherein the connection device information at least includes: the number of devices scanned by wifi in the second time period and the number of devices connected with wifi in the second time period.
3. The wifi-based device type determining method of claim 1, wherein the connection mode information includes: the APP activity in the sixth time period, the number of designated devices connected with wifi in the sixth time period and the number of non-designated devices connected with wifi in the sixth time period.
4. The wifi-based device type determining method of claim 1, wherein the device attribute information includes: the device number of the wifi connection in different time periods and the corresponding proportional value thereof, the maximum difference value between the device numbers of the wifi connection in different time periods and the device number of the wifi connection in the preset time period.
5. The wifi-based device type determining method of claim 1, wherein the wifi location information includes: the method comprises the steps of obtaining a geo-hash corresponding to wifi in a second time period, and generating the change times of the geo-hash, the type of the geo-hash and the number of devices logged into a blacklist in the geo-hash according to the geo-hash.
6. An electronic device comprising a processor and a memory, wherein the memory stores at least one instruction or at least one program, and the at least one instruction or the at least one program is loaded and executed by the processor to implement the wifi-based device type determining method as claimed in any one of claims 1-5.
7. A computer readable storage medium having stored therein at least one instruction or at least one program, the at least one instruction or the at least one program being loaded and executed by a processor to implement the wifi-based device type determining method as claimed in any one of claims 1-5.
CN202110530021.4A 2021-05-14 2021-05-14 Device type determination method based on wifi, electronic device and storage medium Active CN113283486B (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CN202110530021.4A CN113283486B (en) 2021-05-14 2021-05-14 Device type determination method based on wifi, electronic device and storage medium

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
CN202110530021.4A CN113283486B (en) 2021-05-14 2021-05-14 Device type determination method based on wifi, electronic device and storage medium

Publications (2)

Publication Number Publication Date
CN113283486A CN113283486A (en) 2021-08-20
CN113283486B true CN113283486B (en) 2022-08-02

Family

ID=77279229

Family Applications (1)

Application Number Title Priority Date Filing Date
CN202110530021.4A Active CN113283486B (en) 2021-05-14 2021-05-14 Device type determination method based on wifi, electronic device and storage medium

Country Status (1)

Country Link
CN (1) CN113283486B (en)

Families Citing this family (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN114610581B (en) * 2022-03-17 2024-04-12 杭州云深科技有限公司 Data processing system for acquiring application software

Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN108092990A (en) * 2017-12-28 2018-05-29 广州华多网络科技有限公司 Mobile terminal data aggregation transfer equipment
CN108345661A (en) * 2018-01-31 2018-07-31 华南理工大学 A kind of Wi-Fi clustering methods and system based on extensive Embedding technologies
CN110335070A (en) * 2019-06-21 2019-10-15 北京淇瑀信息科技有限公司 A kind of method, apparatus and electronic equipment of the user group extension based on WIFI
CN110544109A (en) * 2019-07-25 2019-12-06 深圳壹账通智能科技有限公司 user portrait generation method and device, computer equipment and storage medium

Family Cites Families (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CA2873213A1 (en) * 2013-12-03 2015-06-03 Ophio Software, Inc. Methods for processing information associated with sales force management, customer relationship management and professional services systems

Patent Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN108092990A (en) * 2017-12-28 2018-05-29 广州华多网络科技有限公司 Mobile terminal data aggregation transfer equipment
CN108345661A (en) * 2018-01-31 2018-07-31 华南理工大学 A kind of Wi-Fi clustering methods and system based on extensive Embedding technologies
CN110335070A (en) * 2019-06-21 2019-10-15 北京淇瑀信息科技有限公司 A kind of method, apparatus and electronic equipment of the user group extension based on WIFI
CN110544109A (en) * 2019-07-25 2019-12-06 深圳壹账通智能科技有限公司 user portrait generation method and device, computer equipment and storage medium

Non-Patent Citations (2)

* Cited by examiner, † Cited by third party
Title
Towards Detecting WiFi Aggregated Interference for Wireless Sensors Based on Traffic Modelling;Indika S. A. Dhanapala.et.;《2016 International Conference on Distributed Computing in Sensor Systems (DCOSS)》;20160528;第108-109页 *
基于互联网家电的需求响应聚合系统信息接口研究与设计;祁兵等;《电网技术》;20161231;第40卷(第12期);第3918-3922页 *

Also Published As

Publication number Publication date
CN113283486A (en) 2021-08-20

Similar Documents

Publication Publication Date Title
CN109450771B (en) Method and device for adding friends, computer equipment and storage medium
CN107563836B (en) Billboard leasing method, server and storage medium
CN112365367B (en) Regional portrait method and device based on device electric quantity and storage medium
CN110490646A (en) The determination method and device of automobile brand target user
CN113283486B (en) Device type determination method based on wifi, electronic device and storage medium
CN105183295A (en) Classification method for application icons and terminal
CN104809627A (en) Information processing method and device
CN113412607A (en) Content pushing method and device, mobile terminal and storage medium
CN106453062A (en) Application notification management method and terminal
CN111026969A (en) Content recommendation method and device, storage medium and server
CN112418899A (en) Display control method and device for advertisement space
CN103634470A (en) Human-computer interaction prediction method based on terminal mobile data access network Qos
CN113283483B (en) Device type determining method based on wifi, electronic device and storage medium
CN108833467A (en) A kind of application method for pushing, equipment, storage medium and system
CN113205129A (en) Cheating group identification method and device, electronic equipment and storage medium
CN110175295B (en) Advertisement space recommendation method, electronic device and computer readable storage medium
CN111124209A (en) Interface display adjustment method and device
CN107291543B (en) Application processing method and device, storage medium and terminal
CN110619090A (en) Regional attraction assessment method and device
WO2023052677A1 (en) Arrangement and method for data management during charging event, and computer program product
CN115456691A (en) Recommendation method and device for offline advertisement space, electronic equipment and storage medium
CN107332903A (en) Information popularization method and device and electronic equipment
CN108563678A (en) APP promotion methods and device, electronic equipment and readable storage medium storing program for executing
CN115208831B (en) Request processing method, device, equipment and storage medium
CN111461118A (en) Interest feature determination method, device, equipment and storage medium

Legal Events

Date Code Title Description
PB01 Publication
PB01 Publication
SE01 Entry into force of request for substantive examination
SE01 Entry into force of request for substantive examination
GR01 Patent grant
GR01 Patent grant