CN109151023A - Method for allocating tasks, device and storage medium - Google Patents

Method for allocating tasks, device and storage medium Download PDF

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CN109151023A
CN109151023A CN201810956288.8A CN201810956288A CN109151023A CN 109151023 A CN109151023 A CN 109151023A CN 201810956288 A CN201810956288 A CN 201810956288A CN 109151023 A CN109151023 A CN 109151023A
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task
user
scoring
label
target object
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孙瑞丽
王梓琦
赵莎莎
黄诗韵
邓秋野
吕军强
吴蕾
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Ping An Technology Shenzhen Co Ltd
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    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L67/00Network arrangements or protocols for supporting network services or applications
    • H04L67/01Protocols
    • H04L67/10Protocols in which an application is distributed across nodes in the network
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q10/00Administration; Management
    • G06Q10/06Resources, workflows, human or project management; Enterprise or organisation planning; Enterprise or organisation modelling
    • G06Q10/063Operations research, analysis or management
    • G06Q10/0631Resource planning, allocation, distributing or scheduling for enterprises or organisations
    • G06Q10/06311Scheduling, planning or task assignment for a person or group
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L67/00Network arrangements or protocols for supporting network services or applications
    • H04L67/50Network services
    • H04L67/52Network services specially adapted for the location of the user terminal
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04WWIRELESS COMMUNICATION NETWORKS
    • H04W4/00Services specially adapted for wireless communication networks; Facilities therefor
    • H04W4/02Services making use of location information
    • H04W4/021Services related to particular areas, e.g. point of interest [POI] services, venue services or geofences
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04WWIRELESS COMMUNICATION NETWORKS
    • H04W4/00Services specially adapted for wireless communication networks; Facilities therefor
    • H04W4/02Services making use of location information
    • H04W4/023Services making use of location information using mutual or relative location information between multiple location based services [LBS] targets or of distance thresholds

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Abstract

The present invention relates to big data processing, disclose a kind of method for allocating tasks, this method determines the type of task and the position of task first, and the specified object for processing the generic task is then filtered out from all specified objects as the subsequent scoring screening step of second user progress;Then the scoring for reflecting the level of skill of each second user is calculated, the highest second user of the scoring of preset quantity is selected;It is last preferentially to select to assign the task to the target object as target object with the nearest second user of task location.The present invention is also disclosed that a kind of electronic device and computer storage medium.Using the present invention, the accuracy of task distribution can be improved, improve task treatment effeciency.

Description

Method for allocating tasks, device and storage medium
Technical field
The present invention relates to technical field of data processing more particularly to a kind of method for allocating tasks, electronic device and computer Readable storage medium storing program for executing.
Background technique
With the development of company/enterprise, company/enterprise reports the classification of task, quantity also to will increase, for example, maintenance, The events such as system maintenance, network, mailbox.It is at present to be randomly assigned processing people to the processing mode of reported event, it is understood that there may be place Reason people's is good at the field problem not corresponding with reported event classification, because the field that processing people is good at largely determines The treatment effeciency of reported event, therefore, the mode for being randomly assigned processing people's processing reported event need to improve.
Summary of the invention
In view of the foregoing, the present invention provides a kind of method for allocating tasks, electronic device and computer readable storage medium, Main purpose is the accuracy rate distributed by raising task, improves task treatment effeciency.
To achieve the above object, the present invention provides a kind of method for allocating tasks, this method comprises:
S1, the receiving the first user submission of the task report request, report request to the task according to default classifying rules Corresponding task is classified, and marks the first label for the task;
S2, the IP address for obtaining first user, the position of the task is determined according to presupposition analysis rule;
S3, the second label for obtaining specified object, it is one corresponding to filter out the second label comprising first label Or multiple specified objects are as second user;
S4, when there are multiple second users, obtain the scoring reference index of the multiple second user, commented according to default Divider then calculates the scoring of the multiple second user, filters out the highest second user of scoring of preset quantity;And
S5, obtain the preset quantity second user location information, select location information and the task location Apart from the smallest second user as target object, the task is distributed into the target object.
In addition, the device includes: memory, processor the present invention also provides a kind of electronic device, deposited on the memory Containing the task distribution program that can be run on the processor can when the task distribution program is executed by the processor Realize the arbitrary steps in method for allocating tasks as described above.
In addition, to achieve the above object, it is described computer-readable the present invention also provides a kind of computer readable storage medium It include task distribution program in storage medium, it can be achieved that task as described above when the task distribution program is executed by processor Arbitrary steps in distribution method.
Method for allocating tasks, electronic device and computer readable storage medium proposed by the present invention, first by accurately It determines task type and task location, lays the foundation for subsequent allocations optimization process people;Then it filters out without generic task processing The specified object of experience, helps to improve task treatment effeciency;The scoring for reflecting the level of skill of each second user is finally calculated, Convenient for being managed to second user, the accuracy of task distribution is improved;The scoring highest second for filtering out preset quantity is used Family, and preferentially select and task location apart from nearest second user as target object, assign the task to the target object, Through the above steps, the accuracy of task distribution is improved, distributes high-quality processing people for task, helps to improve task processing effect Rate.
Detailed description of the invention
Fig. 1 is the flow chart of method for allocating tasks preferred embodiment of the present invention;
Fig. 2 is the running environment schematic diagram of electronic device of the present invention;
Fig. 3 is the schematic diagram of electronic device preferred embodiment of the present invention;
Fig. 4 is the program module schematic diagram of task distribution program in Fig. 3.
The embodiments will be further described with reference to the accompanying drawings for the realization, the function and the advantages of the object of the present invention.
Specific embodiment
It should be appreciated that the specific embodiments described herein are merely illustrative of the present invention, it is not intended to limit the present invention.
The present invention provides a kind of method for allocating tasks.It is method for allocating tasks preferred embodiment of the present invention shown in referring to Fig.1 Flow chart.This method can be executed by a device, which can be by software and or hardware realization.
In the present embodiment, method for allocating tasks includes step S1-S5.
S1, the receiving the first user submission of the task report request, report request to the task according to default classifying rules Corresponding task is classified, and marks the first label for the task.
It is illustrated below using electronic device as executing subject.First user is that submission task reports reporting for request People, the first label are the class label for characterizing task type.There are when event to be reported, need to be that event to be reported is raw by first user At the description information of event to be reported, to the concrete condition, coverage, urgency level etc. for describing event to be reported, then Description information based on event to be reported generates task and reports request.
In order to report the corresponding task of request to distribute to optimization process people the task, when receiving the first user submission After task reports request, task description information need to be analyzed, and classification belonging to judgement task.
In the present embodiment, in step S1 it is described " according to default classifying rules to the task report request it is corresponding Task is classified, and marks the first label for the task " include:
Read the description information that the task reports carrying in request for task;
Using preparatory trained term vector model, target feature vector is extracted from the description information;
Based on preset distance algorithm, the target feature vector and multiple specified spies for carrying class label are calculated separately The distance between vector sample is levied, the smallest specific characteristic vector sample of distance of the first preset quantity is filtered out;And
Obtain the class label that the smallest specific characteristic vector sample of distance of first preset quantity carries, selection weight Again most class labels is counted, marks the first label as the task generic, and for the task.
Above-mentioned trained term vector model (word2vec model) in advance is based on default corpus and generates, for example, Chinese Wikipedia corpus.
The calculation method of above-mentioned distance has very much, for example, Euclidean distance algorithm, standardization Euclidean distance algorithm, Manhattan Distance algorithm etc..
By calculating the distance between target feature vector and specific characteristic vector sample, target signature feature vector is judged A possibility that with the similarity between specific characteristic vector sample, distance is bigger, and similarity is lower, belongs to same category is smaller; On the contrary, similarity is bigger apart from smaller, a possibility that belonging to same category, is bigger.
It should be noted that selecting each class label corresponding when existing simultaneously the highest class label of two frequencys Specific characteristic vector sample in target feature vector apart from the corresponding class label of reckling as target feature vector Class label.
The description information of task in request is reported using above-mentioned steps analysis task, and marks the first label for the task, By accurately analyzing the task category of the task, helps to handle people for the task optimal scheme, improve the treatment effeciency of task.
S2, the IP address for obtaining first user, the position of the task is determined according to presupposition analysis rule.
In the present embodiment, step S2 includes:
The IP address (Internet Protocol Address, Internet protocol address) for obtaining the first user, according to pre- If IP sections with the mapping relations of position, determine the position of the first user and the position of the task.
Above-mentioned default IP sections corresponding workplace information include: the information such as academic title's title, workplace position.By inquiring the first user IP address corresponding to IP sections, that is, can determine the corresponding workplace of the first user, and determine that task reports task in request Position.
When the IP address of the first user is not in default IP sections, according to the user information of the first user from personnel system Department's location message of the first user is obtained, and obtains the attendance location information on the same day from attendance checking system, when attendance positions When information is consistent with department's location message, the position of the task is determined according to department's location message;Believe when attendance positions When breath is inconsistent with department's location message, the routing of going on business of the first user within a preset time is obtained, is gone on business when described When location information of checking card comprising described in routing, the position of the task is determined according to location information of checking card;Otherwise, it generates Warning information can not distribute corresponding processing people for example, the position of the first user can not accurately be obtained.
S3, the second label for obtaining specified object, it is one corresponding to filter out the second label comprising first label Or multiple specified objects are as second user.
Above-mentioned specified object is processing people all in task reporting system, and the second label is that characterization second user is handled The task type of historic task, second user be it is processed reported with task request in the identical historic task of task category finger Determine object.
Wherein, each specified object may correspond to one or more second labels.For example, the second label may include: " to have Gauze network ", " wireless network ", " terminal security " etc..
The purpose of the step is, by from specified pair filtered out in the second label comprising the first label in specified object Specified pair of the identical historic task of task category in request is reported as second user, filtering out untreated with task As helping to improve the treatment effeciency of task.
S4, when there are multiple second users, obtain the scoring reference index of the multiple second user, commented according to default Divider then calculates the scoring of the multiple second user, filters out the highest second user of scoring of preset quantity.
In the present embodiment, task report further include in request task attribute information, step S4 includes:
The attribute information that the task reports task in request is obtained, the target of the task is determined according to the attribute information Timeliness;
The subscriber identity information for obtaining the multiple second user reads the multiple second according to the subscriber identity information User's scoring reference index corresponding with the target timeliness within a preset time, based on scoring reference index generation each the The sample data of two users;
The sample data of each second user is normalized, and to the sample data Jing Guo normalized into Row principal component analysis extracts principal component of the contribution rate of accumulative total more than the second preset quantity of preset threshold;And
It obtains the corresponding characteristic value of principal component of second preset quantity and is weighted, calculate separately each second and use The scoring at family.
In the present embodiment, the step of described " the target timeliness of the task is determined according to the attribute information " includes:
Read the influence degree and coverage in the attribute information;And
According to the mapping relations of the combination of influence degree and coverage and timeliness, the influence in the attribute information is determined The corresponding target timeliness of the combination of degree and coverage.
Specifically, above-mentioned target timeliness reports the attribute of task in request by task for characterizing task urgency level Information determines.
In the attribute information of the task, include: task coverage and task influence degree.Wherein, coverage (influence number) includes: " small (1 people) ", " in (2 to 5 people) ", " (6 to 15 people) bigger than normal " and " big (more than 15 people) ";Influence journey Degree includes: " regular event ", " having substantially no effect on office ", " influencing office to a certain extent " and " can not handle official business ".
Before receiving the task that the first user submits and reporting request, Different Effects degree and coverage are predefined Combine corresponding timeliness comprising: response timeliness and solution timeliness, and the timeliness list of elements is generated, for example, when in the timeliness list of elements Effect includes: P1, P2, P3, P4, respectively indicates different urgency levels.
It determines that above-mentioned task reports in request after the corresponding target timeliness of task using the above-mentioned timeliness list of elements, utilizes second The identity information of user obtains the history of second user within a preset time from default channel (for example, task reporting system) and appoints Business data, and data extraction is carried out to above-mentioned historic task data, determine scoring reference index corresponding with the target timeliness.
Specifically, scoring reference index includes: that second user is related to the first label in preset time (for example, half a year) Average daily task amount, average daily production capacity, week task amount, week production capacity, monthly task amount, monthly production capacity, response in overall timeliness Fix-rate in rate, overall timeliness, response rate, target solve fix-rate and user's satisfaction rate etc. in timeliness and refer in target response timeliness Mark.Using above-mentioned scoring reference index, r dimension the sample data D, D=[x of each second user are generated1, x2..., xi..., xr], Wherein, xiFor i-th of finger target value in scoring reference index, that is, i-th dimension data.
In the present embodiment, the step of described " sample data of each second user is normalized " includes: 0 mean value standardization is carried out to every one-dimensional data in the sample data, 0 mean value is carried out to every one-dimensional data in sample data Standardized calculation formula can illustrate are as follows:
fi=(xi-mean(xi))/o(xi)
Wherein, xiFor the i-th dimension data in sample data, fiFor i-th dimension data normalization treated value, mean (xi) For the mean value of i-th dimension data in the sample data of multiple second users, σ (xi) it is i-th in the sample data of multiple second users The standard deviation of dimension data.
In the present embodiment, described " principal component analysis to be carried out to the sample data Jing Guo normalized, is extracted accumulative Contribution rate be more than preset threshold the second preset quantity principal component " the step of include:
The sample data after normalized is obtained, the covariance of the sample data after normalized is calculated Matrix;Eigenvalues Decomposition is carried out to the covariance matrix, obtains multiple characteristic values and corresponding feature vector;And according to institute The size for stating multiple characteristic values carries out descending sort, select the forward corresponding feature of characteristic value of sequence of the second preset quantity to Amount is used as principal component.
It should be noted that the sequence of the second preset quantity (for example, k, wherein k is positive integer) of selection is forward Characteristic value need to meet preset condition, for example, contribution rate of accumulative total is more than or equal to preset threshold (for example, 85%).Wherein, k feature It is worth corresponding feature vector and is respectively as follows: ω12,…,ωk, then using the k corresponding feature vectors of characteristic value as master Ingredient, wherein each principal component can explain multiple scoring reference indexs.
K principal component ω is extracted using above-mentioned steps12,…,ωkAfterwards, it is named according to the physical meaning of each principal component For yield, proficiency, efficiency etc..
Assuming that the corresponding characteristic value of k principal component is respectively as follows: λ1, λ2…λk, which is weighted, is calculated To the scoring of each second user.It should be noted that the scoring that above-mentioned steps meter obtains is the scoring for the first label, it is used for Reflect level of skill and treatment effeciency of the second user in processing about the task of the first label.
In the present embodiment, score calculation formula are as follows:
Wherein, F (ω12,…,ωk) be each second user scoring, | ωi| it is the corresponding value of i-th of principal component, λi For the corresponding characteristic value of i-th of principal component.
The scoring that each second user is calculated using above-mentioned steps arranges each second user according to scoring sequence Sequence filters out the sequence of preset quantity (for example, 5) near preceding second user.
S5, obtain the preset quantity second user location information, select the position of location information and the task The smallest second user of distance as target object, the task is distributed into the target object.
After the location information of the highest second user of scoring for obtaining preset quantity, the position of each second user is successively calculated Confidence ceases at a distance from the position of task, selects to distribute task as target object apart from the corresponding second user of minimum value The target object is given, and allocation result is fed back into the first user and the target object.
It should be noted that when according to the second label filtration go out second user only one when, then after not needing progress Task directly using the second user as target object, and is reported the task in request to distribute to by continuous scoring screening step Target object, and the first user and target object are sent to based on allocation result is generated prompt information.
In other embodiments, the step further include:
When second user identical there are multiple location informations in the second user of preset quantity, judge respectively multiple The User Status of the identical second user of location information, comprising: online, stealthy, offline;And
It is online, stealthy, offline that User Status is successively selected from the identical second user of the multiple location information Second user is as target object.
The preset kind information for obtaining the identical second user of above-mentioned multiple location informations includes: the operation note of appointing system The information such as record, conference journey, attendance positioning, the User Status of second user is judged according to preset kind information.
In other embodiments, the step can also include: when the second user in the preset time (for example, 2h) When there is no operation note on appointing system (for example, task management system), judge the second user state be it is offline, otherwise sentence Whether the second user of breaking has conference journey in current time;When the second user is when current time has conference journey, Judge whether the User Status of the second user to be stealthy, otherwise, judges attendance location information of the second user on the day of It is not inconsistent with its preset attendance location information;And when attendance location information of the second user on the day of preset is examined with its When diligent location information is not inconsistent, judge the second user state be it is offline, otherwise, judge the User Status of the second user for Line.
After determining User Status, according to online, stealthy, offline sequence, selected from the identical second user of location information Select a second user reports the task in request to distribute to target object task as target object, and is based on to distribute As a result it generates prompt information and is sent to the first user and target object.
Further, this screening factor of the User Status also can be replaced waiting task amount:
When second user identical there are multiple location informations in the second user of preset quantity, obtain respectively multiple The waiting task amount of the identical second user of location information;And
Selected from the identical second user of the multiple User Status the smallest second user of waiting task amount as Target object.
When the User Status of the highest second user of scoring of preset quantity is identical, currently pending task amount is selected most Few second user helps to improve task treatment effeciency.
In other embodiments, this method can also include:
When target object does not respond assigned task in target response timeliness, alternatively, when target object is not in target When solving the task that ageing treatment is assigned, warning information is generated.
For example, it is P1 that the task, which reports the corresponding target timeliness of request, the task of preset P1 timeliness rank responds timeliness It is 15 minutes, if target object responded the task in 15 minutes, illustrates to be responded in timeliness.
Further, this method can also include:
The task processing result for receiving target object feedback, feeds back to the first user for the task processing result, and connect The service to target object for receiving the first user feedback is scored;
The second label of the first tag update target object of task in request is reported according to the task.
That is, target object is every when having handled one and reporting task, the first user evaluates target object, and Using the corresponding class label of task as corresponding second label of target, and its second tally set is updated.
Above-described embodiment propose method for allocating tasks be first by accurately determining task type and task location Subsequent allocations optimization process people lays the foundation;Then the specified object without the generic task process experience is filtered out, is helped to improve Task treatment effeciency;It finally calculates and reflects that the scoring of the level of skill of each second user mentions convenient for being managed to second user The accuracy of high task distribution;Filter out the highest second user of scoring of preset quantity, and preferentially selection and task location away from From nearest second user as target object, the target object is assigned the task to, through the above steps, improves task distribution Accuracy, distribute high-quality processing people for task, help to improve task treatment effeciency.
The present invention also provides a kind of electronic devices.
It is the running environment schematic diagram of the preferred embodiment of electronic device 1 of the present invention referring to shown in Fig. 2.
In the present embodiment, electronic device 1 can carry out data transmission with the first client 21 and the second client 22.First Client 21 is the terminal device that the first user uses, for submitting task to report request, receiving task allocation result and feedback Service scoring etc., is equipped with corresponding first client-side program of task distribution program 10 and (does not mark in figure in the first client 21 Note);Second client 22 is the terminal device that second user uses, for receiving task distribution and feedback task processing result Deng being equipped with corresponding second client-side program (being not marked in figure) of task distribution program 10 in the second client 22.
It is the schematic diagram of 1 preferred embodiment of electronic device of the present invention referring to shown in Fig. 3.
In the present embodiment, electronic device 1 can be server, smart phone, tablet computer, portable computer, on table The terminal device having data processing function such as type computer, the server can be rack-mount server, blade type service Device, tower server or Cabinet-type server.
The electronic device 1 includes memory 11, processor 12 and network interface 13.
Wherein, memory 11 include at least a type of readable storage medium storing program for executing, the readable storage medium storing program for executing include flash memory, Hard disk, multimedia card, card-type memory (for example, SD or DX memory etc.), magnetic storage, disk, CD etc..Memory 11 It can be the internal storage unit of the electronic device 1, such as the hard disk of the electronic device 1 in some embodiments.Memory 11 are also possible to be equipped on the External memory equipment of the electronic device 1, such as the electronic device 1 in further embodiments Plug-in type hard disk, intelligent memory card (Smart Media Card, SMC), secure digital (Secure Digital, SD) card dodge Deposit card (Flash Card) etc..Further, memory 11 can also both include the internal storage unit of the electronic device 1 or wrap Include External memory equipment.
Memory 11 can be not only used for the application software and Various types of data that storage is installed on the electronic device 1, such as appoint Distribution program 10 of being engaged in etc., can be also used for temporarily storing the data that has exported or will export.
Processor 12 can be in some embodiments a central processing unit (Central Processing Unit, CPU), controller, microcontroller, microprocessor or other data processing chips, the program for being stored in run memory 11 Code or processing data, such as task distribution program 10 etc..
Network interface 13 optionally may include standard wireline interface and wireless interface (such as WI-FI interface), be commonly used in Communication connection is established between the electronic device 1 and other electronic equipments, such as.First client (being not marked in figure), second Client (is not marked in figure).
Fig. 3 illustrates only the electronic device 1 with component 11-13, it will be appreciated by persons skilled in the art that Fig. 3 shows Structure out does not constitute the restriction to electronic device 1, may include than illustrating less perhaps more components or combining certain A little components or different component layouts.
Optionally, the electronic device 1 can also include user interface, user interface may include display (Display), Input unit such as keyboard (Keyboard), optional user interface can also include standard wireline interface and wireless interface.
Optionally, in some embodiments, display can be light-emitting diode display, liquid crystal display, touch control type LCD and show Device and Organic Light Emitting Diode (Organic Light-Emitting Diode, OLED) touch device etc..Wherein, display It is properly termed as display screen or display unit, for showing the information handled in the electronic apparatus 1 and for showing visually User interface.
In 1 embodiment of electronic device shown in Fig. 3, appoint as storage in a kind of memory 11 of computer storage medium The program code for distribution program 10 of being engaged in when processor 12 executes the program code of task distribution program 10, realizes step A1-A5.
A1, the receiving the first user submission of the task report request, report request to the task according to default classifying rules Corresponding task is classified, and marks the first label for the task.
It is illustrated below using electronic device 1 as executing subject.First user is that submission task reports reporting for request People, the first label are the class label for characterizing task type.There are when event to be reported, need to be that event to be reported is raw by first user At the description information of event to be reported, to the concrete condition, coverage, urgency level etc. for describing event to be reported, then Description information based on event to be reported generates task and reports request.
In order to report the corresponding task of request to distribute to optimization process people the task, when receiving the first user submission After task reports request, task description information need to be analyzed, and classification belonging to judgement task.
In the present embodiment, in step A1 it is described " according to default classifying rules to the task report request it is corresponding Task is classified, and marks the first label for the task " include:
Read the description information that the task reports carrying in request for task;
Word segmentation processing is carried out to the description information, obtains the lexical set of the description information;
According to preset analysis rule, the keyword of the description information is determined from the lexical set;And
According to the mapping relations of preset keyword and class label, the corresponding class label of the description information is determined, And the first label is marked for the task.
Before carrying out word segmentation processing to foregoing description information, label data (for example, picture, link), image mark are removed The extraneous datas such as note.Then, the text data of reservation is segmented by participle tool, is generated with the initial word of space-separated Collect conjunction.It carries out stop words to initial lexical set according to preset stop words vocabulary to handle, after stop words will be gone to handle Lexical set of the lexical set as the description information.
The determination method of above-mentioned keyword has very much, for example, utilizing term frequency-inverse document frequency index (TF-IDF) algorithm meter It counts stating the significance level of each vocabulary in lexical set in, then selects the higher vocabulary of significance level as keyword etc..
For example, preset keyword includes: that the keywords such as " wireless signal ", " AP " are corresponding with the mapping relations of class label Class label be " wireless network ";The corresponding class of keywords such as " attachment ", " outlook ", " calendar synchronization ", " pst file " Distinguishing label is " mailbox problem ";The corresponding class label of keywords such as " standardization ", " index ", " Huang screen ", " information security " is " PC standardization ".
The description information of task in request is reported using above-mentioned steps analysis task, and marks the first label for the task, By accurately analyzing the task category of the task, helps to handle people for the task optimal scheme, improve the treatment effeciency of task.
A2, the IP address for obtaining first user, the position of the task is determined according to presupposition analysis rule.
In the present embodiment, step A2 includes:
The IP address (Internet Protocol Address, Internet protocol address) for obtaining the first user, according to pre- If IP sections with the mapping relations of position, determine the position of the first user and the position of the task.
Above-mentioned default IP sections corresponding workplace information include: the information such as academic title's title, workplace position.By inquiring the first user IP address corresponding to IP sections, that is, can determine the corresponding workplace of the first user, and determine that task reports task in request Position.
When the IP address of the first user is not in default IP sections, according to the user information of the first user from personnel system Department's location message of the first user is obtained, and obtains the attendance location information on the same day from attendance checking system, when attendance positions When information is consistent with department's location message, the position of the task is determined according to department's location message;Believe when attendance positions When breath is inconsistent with department's location message, the routing of going on business of the first user within a preset time is obtained, is gone on business when described When location information of checking card comprising described in routing, the position of the task is determined according to location information of checking card;Otherwise, it generates Warning information can not distribute corresponding processing people for example, the position of the first user can not accurately be obtained.
A3, the second label for obtaining specified object, it is one corresponding to filter out the second label comprising first label Or multiple specified objects are as second user.
Above-mentioned specified object is processing people all in task reporting system, and the second label is that characterization second user is handled The task type of historic task, second user be it is processed reported with task request in the identical historic task of task category finger Determine object.
Wherein, each specified object may correspond to one or more second labels.For example, the second label may include: " to have Gauze network ", " wireless network ", " terminal security " etc..
The purpose of the step is, by from specified pair filtered out in the second label comprising the first label in specified object Specified pair of the identical historic task of task category in request is reported as second user, filtering out untreated with task As helping to improve the treatment effeciency of task.
A4, when there are multiple second users, obtain the scoring reference index of the multiple second user, commented according to default Divider then calculates the scoring of the multiple second user, filters out the highest second user of scoring of preset quantity.
In the present embodiment, task report further include in request task attribute information, step A4 includes:
The attribute information that the task reports task in request is obtained, the target of the task is determined according to the attribute information Timeliness;
The subscriber identity information for obtaining the multiple second user reads the multiple second according to the subscriber identity information User's scoring reference index corresponding with the target timeliness within a preset time, based on scoring reference index generation each the The sample data of two users;
The sample data of each second user is normalized, and to the sample data Jing Guo normalized into Row principal component analysis extracts principal component of the contribution rate of accumulative total more than the second preset quantity of preset threshold;And
It obtains the corresponding characteristic value of principal component of second preset quantity and is weighted, calculate separately each second and use The scoring at family.
In the present embodiment, the step of described " the target timeliness of the task is determined according to the attribute information " includes:
Read the influence degree and coverage in the attribute information;And
According to the mapping relations of the combination of influence degree and coverage and timeliness, the influence in the attribute information is determined The corresponding target timeliness of the combination of degree and coverage.
Specifically, above-mentioned target timeliness reports the attribute of task in request by task for characterizing task urgency level Information determines.
In the attribute information of the task, include: task coverage and task influence degree.Wherein, coverage (influence number) includes: " small (1 people) ", " in (2 to 5 people) ", " (6 to 15 people) bigger than normal " and " big (more than 15 people) ";Influence journey Degree includes: " regular event ", " having substantially no effect on office ", " influencing office to a certain extent " and " can not handle official business ".
Before receiving the task that the first user submits and reporting request, Different Effects degree and coverage are predefined Combine corresponding timeliness comprising: response timeliness and solution timeliness, and the timeliness list of elements is generated, for example, when in the timeliness list of elements Effect includes: P1, P2, P3, P4, respectively indicates different urgency levels.
It determines that above-mentioned task reports in request after the corresponding target timeliness of task using the above-mentioned timeliness list of elements, utilizes second The identity information of user obtains the history of second user within a preset time from default channel (for example, task reporting system) and appoints Business data, and data extraction is carried out to above-mentioned historic task data, determine scoring reference index corresponding with the target timeliness.
Specifically, scoring reference index includes: that second user is related to the first label in preset time (for example, half a year) Average daily task amount, average daily production capacity, week task amount, week production capacity, monthly task amount, monthly production capacity, response in overall timeliness Fix-rate in rate, overall timeliness, response rate in target response timeliness, that target solves fix-rate and user's satisfaction rate etc. in timeliness is anti- Reflect index of the second user about the level of skill of the first label.Using above-mentioned scoring reference index, each second user is generated R tie up sample data D, D=[x1,x2,…,xi,…,xr], wherein xiFor i-th of finger target value in scoring reference index, that is, I-th dimension data.
In the present embodiment, the step of described " sample data of each second user is normalized " includes: 0 mean value standardization is carried out to every one-dimensional data in the sample data, 0 mean value is carried out to every one-dimensional data in sample data Standardized calculation formula can illustrate are as follows:
fi=(xi-mean(xi))/σ(xi)
Wherein, xiFor the i-th dimension data in sample data, fiFor i-th dimension data normalization treated value, mean (xi) For the mean value of i-th dimension data in the sample data of multiple second users, σ (xi) it is i-th in the sample data of multiple second users The standard deviation of dimension data.
In the present embodiment, described " principal component analysis to be carried out to the sample data Jing Guo normalized, is extracted accumulative Contribution rate be more than preset threshold the second preset quantity principal component " the step of include:
The sample data after normalized is obtained, the covariance of the sample data after normalized is calculated Matrix;Eigenvalues Decomposition is carried out to the covariance matrix, obtains multiple characteristic values and corresponding feature vector;And according to institute The size for stating multiple characteristic values carries out descending sort, select the forward corresponding feature of characteristic value of sequence of the second preset quantity to Amount is used as principal component.
It should be noted that the sequence of the second preset quantity (for example, k, wherein k is positive integer) of selection is forward Characteristic value need to meet preset condition, for example, contribution rate of accumulative total is more than or equal to preset threshold (for example, 85%).Wherein, k feature It is worth corresponding feature vector and is respectively as follows: ω12,…,ωk, then using the k corresponding feature vectors of characteristic value as master Ingredient, wherein each principal component can explain multiple scoring reference indexs.
K principal component ω is extracted using above-mentioned steps12,…,ωkAfterwards, it is named according to the physical meaning of each principal component For yield, proficiency, efficiency etc..
Assuming that the corresponding characteristic value of k principal component is respectively as follows: λ1, λ2…λk, which is weighted, is calculated To the scoring of each second user.It should be noted that the scoring that above-mentioned steps meter obtains is the scoring for the first label, it is used for Reflect level of skill and treatment effeciency of the second user in processing about the task of the first label.
In the present embodiment, score calculation formula are as follows:
Wherein, F (ω12,…,ωk) be each second user scoring, | ωi| it is the corresponding value of i-th of principal component, λi For the corresponding characteristic value of i-th of principal component.
The scoring that each second user is calculated using above-mentioned steps arranges each second user according to scoring sequence Sequence filters out the sequence of preset quantity (for example, 5) near preceding second user.
A5, obtain the preset quantity second user location information, select the position of location information and the task The smallest second user of distance as target object, the task is distributed into the target object.
After the location information of the highest second user of scoring for obtaining preset quantity, the position of each second user is successively calculated Confidence ceases at a distance from the position of task, selects to distribute task as target object apart from the corresponding second user of minimum value The target object is given, and allocation result is fed back into the first user and the target object.
It should be noted that when according to the second label filtration go out second user only one when, then after not needing progress Task directly using the second user as target object, and is reported the task in request to distribute to by continuous scoring screening step Target object, and the first user and target object are sent to based on allocation result is generated prompt information.
In other embodiments, when there are the identical second users of multiple location informations in the second user of preset quantity When, successively select state for online, stealthy, offline second user or the least second user of currently pending task amount As target object, task treatment effeciency is helped to improve.
In other embodiments, when the task distribution program is executed by the processor, following steps are also realized:
According to the mapping relations of scoring and grade, the corresponding grade of the scoring of each second user is determined.
According to specific data distribution, capacity sizing standard is formulated, for example, evaluation should when F value is between (a, b) The such technical ability of second user is steady;When F value is greater than b, evaluates the such technical ability of the second user and be proficient in;When F value is less than a, comment The such level of skill of the valence second user is general.
In addition, 6 months at quarterly intervals, the scoring of each processing all kinds of technical ability of people is calculated, dynamically updates each processing people's Technical ability classification and level of skill.COMPREHENSIVE CALCULATING processing people is good at skillset and generates technical ability radar map.For example, some second user Not only it had been good at A technical ability, but also has been good at B technical ability and C technical ability, the technical ability radar map of this second user can be generated, has intuitively shown its item Technical ability and relatively it is good at field.
Using above-mentioned steps, it can be achieved that all technical ability classification and the control of level of skill for handling people.
The electronic device 1 that above-described embodiment proposes is subsequent first by accurately determining task type and task location Distribution optimization process people lays the foundation;Then the specified object without the generic task process experience is filtered out, task is helped to improve Treatment effeciency;The scoring for reflecting the level of skill of each second user is finally calculated, convenient for being managed to second user, improves and appoints The accuracy of business distribution;The highest second user of scoring of preset quantity is filtered out, and is preferentially selected with task location distance most Close second user assigns the task to the target object as target object, through the above steps, improves the standard of task distribution True property distributes high-quality processing people for task, helps to improve task treatment effeciency.
Optionally, in other examples, task distribution program 10 can also be divided into one or more module, One or more module is stored in memory 11, and by one or more processors (the present embodiment is processor 12) institute It executes, to complete the present invention, the so-called module of the present invention is the series of computation machine program instruction for referring to complete specific function Section.It is the module diagram of task distribution program 10 in Fig. 3 for example, referring to shown in Fig. 4, in the embodiment, task distribution program 10 can be divided into receiving module 110, positioning screening module 120, screening module 130, grading module 140 and distribution module 150, the functions or operations step that the module 110-150 is realized is similar as above, and and will not be described here in detail, illustratively, Such as wherein:
Receiving module 110, the task for receiving the first user submission reports request, according to default classifying rules to described Task reports the corresponding task of request to classify, and marks the first label for the task;
Locating module 120 determines the task according to presupposition analysis rule for obtaining the IP address of first user Position;
Screening module 130 filters out the second mark comprising first label for obtaining the second label of specified object Corresponding one or more specified objects are signed as second user;
Grading module 140, the scoring reference for when there are multiple second users, obtaining the multiple second user refer to Mark, the scoring of the multiple second user is calculated according to default code of points, filters out the scoring highest second of preset quantity User;And
Distribution module 150, the location information of the second user for obtaining the preset quantity select location information and institute The smallest second user of distance of task location is stated as target object, the task is distributed into the target object.
In addition, the embodiment of the present invention also proposes a kind of computer readable storage medium, the computer readable storage medium In include task distribution program 10, following operation is realized when the task distribution program 10 is executed by processor:
A1, the receiving the first user submission of the task report request, report request to the task according to default classifying rules Corresponding task is classified, and marks the first label for the task;
A2, the IP address for obtaining first user, the position of the task is determined according to presupposition analysis rule;
A3, the second label for obtaining specified object, it is one corresponding to filter out the second label comprising first label Or multiple specified objects are as second user;
A4, when there are multiple second users, obtain the scoring reference index of the multiple second user, commented according to default Divider then calculates the scoring of the multiple second user, filters out the highest second user of scoring of preset quantity;And
A5, obtain the preset quantity second user location information, select location information and the task location Apart from the smallest second user as target object, the task is distributed into the target object.
The specific implementation of the specific embodiment of the computer readable storage medium of the present invention and above-mentioned method for allocating tasks Mode is roughly the same, and details are not described herein.
The serial number of the above embodiments of the invention is only for description, does not represent the advantages or disadvantages of the embodiments.
It should be noted that, in this document, the terms "include", "comprise" or its any other variant are intended to non-row His property includes, so that the process, device, article or the method that include a series of elements not only include those elements, and And further include other elements that are not explicitly listed, or further include for this process, device, article or method institute it is intrinsic Element.In the absence of more restrictions, the element limited by sentence "including a ...", it is not excluded that including being somebody's turn to do There is also other identical elements in the process, device of element, article or method.
Through the above description of the embodiments, those skilled in the art can be understood that above-described embodiment side Method can be realized by means of software and necessary general hardware platform, naturally it is also possible to by hardware, but in many cases The former is more preferably embodiment.Based on this understanding, technical solution of the present invention substantially in other words does the prior art The part contributed out can be embodied in the form of software products, which is stored in one as described above In storage medium (such as ROM/RAM, magnetic disk, CD), including some instructions are used so that terminal device (it can be mobile phone, Computer, server or network equipment etc.) execute method described in each embodiment of the present invention.
The above is only a preferred embodiment of the present invention, is not intended to limit the scope of the invention, all to utilize this hair Equivalent structure or equivalent flow shift made by bright specification and accompanying drawing content is applied directly or indirectly in other relevant skills Art field, is included within the scope of the present invention.

Claims (10)

1. a kind of method for allocating tasks is applied to electronic device, which is characterized in that the described method includes:
S1, the receiving the first user submission of the task report request, report request to correspond to the task according to default classifying rules Task classify, and for the task mark the first label;
S2, the IP address for obtaining first user, the position of the task is determined according to presupposition analysis rule;
S3, the second label for obtaining specified object, it is one or more corresponding to filter out the second label comprising first label A specified object is as second user;
S4, when there are multiple second users, obtain the scoring reference index of the multiple second user, according to default scoring advise The scoring for then calculating the multiple second user filters out the highest second user of scoring of preset quantity;And
S5, obtain the preset quantity second user location information, select location information at a distance from the task location The smallest second user distributes to the target object as target object, by the task.
2. the method for allocating tasks according to claim, which is characterized in that the step S2 includes:
The IP address for obtaining the first user determines position and the institute of the first user according to default IP sections and the mapping relations of position State the position of task.
3. method for allocating tasks according to claim 2, which is characterized in that the step S3 includes:
The attribute information that the task reports task in request is obtained, when determining the target of the task according to the attribute information Effect;
The subscriber identity information for obtaining the multiple second user reads the multiple second user according to the subscriber identity information Scoring reference index corresponding with the target timeliness within a preset time generates each second based on the scoring reference index and uses The sample data at family;
The sample data of each second user is normalized, and the sample data Jing Guo normalized is led Constituent analysis extracts principal component of the contribution rate of accumulative total more than the second preset quantity of preset threshold;And
It obtains the corresponding characteristic value of principal component of second preset quantity and is weighted, calculate separately each second user Scoring.
4. method for allocating tasks according to claim 3, which is characterized in that described " to the sample Jing Guo normalized Data carry out principal component analysis, extract principal component of the contribution rate of accumulative total more than the second preset quantity of preset threshold " the step of Include:
The sample data after normalized is obtained, the covariance square of the sample data after normalized is calculated Battle array;
Eigenvalues Decomposition is carried out to the covariance matrix, obtains multiple characteristic values and corresponding feature vector;And
Descending sort is carried out according to the size of the multiple characteristic value, the characteristic value pair for selecting the sequence of the second preset quantity forward The feature vector answered is as principal component.
5. method for allocating tasks as claimed in any of claims 1 to 4, which is characterized in that step S5 further include:
When second user identical there are multiple location informations in the second user of preset quantity, multiple position is judged respectively The User Status of the identical second user of information, comprising: online, stealthy, offline;And
Successively select User Status for online, stealthy, offline second from the identical second user of the multiple location information User is as target object.
6. method for allocating tasks according to claim 5, which is characterized in that this method further include:
When target object does not respond assigned task in target response timeliness, alternatively, when target object is not solved in target When the task that ageing treatment is assigned, warning information is generated.
7. a kind of electronic device, which is characterized in that the device includes: memory, processor, and being stored on the memory can be The task distribution program run on the processor, it can be achieved that as follows when the task distribution program is executed by the processor Step:
S1, the receiving the first user submission of the task report request, report request to correspond to the task according to default classifying rules Task classify, and for the task mark the first label;
S2, the IP address for obtaining first user, the position of the task is determined according to presupposition analysis rule;
S3, the second label for obtaining specified object, it is one or more corresponding to filter out the second label comprising first label A specified object is as second user;
S4, when there are multiple second users, obtain the scoring reference index of the multiple second user, according to default scoring advise The scoring for then calculating the multiple second user filters out the highest second user of scoring of preset quantity;And
S5, obtain the preset quantity second user location information, select location information at a distance from the task location The smallest second user distributes to the target object as target object, by the task.
8. electronic device according to claim 7, which is characterized in that the step A2 includes:
The IP address for obtaining the first user determines position and the institute of the first user according to default IP sections and the mapping relations of position State the position of task.
9. electronic device according to claim 7 or 8, which is characterized in that the task distribution program is by the processor When execution, following steps are also realized:
When target object does not respond assigned task in target response timeliness, alternatively, when target object is not solved in target When the task that ageing treatment is assigned, warning information is generated.
10. a kind of computer readable storage medium, which is characterized in that include that task is distributed in the computer readable storage medium Program, it can be achieved that task as described in any one of claim 1 to 6 when the task distribution program is executed by processor The step of distribution method.
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