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A data open sharing-oriented software access behavior data feature representation method

A technology oriented to data and data characteristics, applied in the field of big data, can solve problems such as design dependencies and omissions

Active Publication Date: 2019-06-28
FUDAN UNIV
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  • Abstract
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  • Claims
  • Application Information

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Problems solved by technology

However, as today's software functions become more and more complex, there are lags and limitations in manually designed indicators: lag means that experts usually need to have a certain analysis and understanding of software functions and usage scenarios before they can design suitable indicators according to the business. indicator; limitations mean that the design of the indicator relies on the experience of experts, and there may be omissions

Method used

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  • A data open sharing-oriented software access behavior data feature representation method
  • A data open sharing-oriented software access behavior data feature representation method
  • A data open sharing-oriented software access behavior data feature representation method

Examples

Experimental program
Comparison scheme
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Embodiment Construction

[0047] The specific implementation of the method is shown below with example data (see Table 1) containing 5 access records of 1 user.

[0048] Training phase:

[0049] (1) Software access behavior data preprocessing: This group of software access behavior data includes 1 category attribute: port, and 2 numerical attributes: access duration and file size. According to the time information, the user's software access behavior sequence data s=1 ,e 2 ,e 3 >. Among them, e 1 ={(1,80,0.3,3.21),(2,80,0.5,0.15)} contains two events 1 and 2, e 2 Contains 3 and 4 two events, e 3 Contains the 5th event;

[0050] (2) Single-moment behavior data encoding: e 1 As an example, encode daily behavior data. First, perform feature representation on the first event (1,80,0.3,3.21): (a) map the accessed data ID through the embedding layer to obtain its embedding vector (0.1,-0.3); (b) classify Type attributes are mapped through the embedding layer one by one. In this example, there are on...

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Abstract

The invention belongs to the technical field of big data, and particularly relates to a data open sharing-oriented software access behavior data feature representation method. According to the method,a software access behavior data sequence of a user is directly received, and a feature representation vector of the behavior data sequence is output. According to the invention, a single-moment behavior data encoder is designed for summarizing multiple groups of behavior data in a single time point and extracting important behavior events by using a self-attention mechanism; And the summarized single-time-point data is input into the recurrent neural network to represent the behavior sequence, and finally the feature representation of the whole sequence is extracted from the behavior sequence. The parameters of the single-time-point encoder and the recurrent neural network are trained by using the prediction codes, and the generative adversarial network is added to improve the model effect, so that the user access behavior can be analyzed, the use requirement of the user can be known, the software access behavior can be supervised in time, and a safety guarantee can be provided for pushing data autonomous opening.

Description

technical field [0001] The invention belongs to the technical field of big data, and in particular relates to a feature learning method for software access behavior sequence data. Background technique [0002] With the gradual emergence of the strategic and commercial value of data resources, the open sharing of data resources has attracted more and more attention from researchers and industry professionals. During the promotion and implementation of the data self-government and open model with the data box as the basic unit of data openness and sharing, how to ensure that data users use the data in the data box in accordance with the regulations, supervise the behavior of data users in a timely manner, and prevent such as record tampering, second The loss of data value and privacy leakage caused by malicious operations such as sub-distribution is a difficult point that we need to solve at present. [0003] Usually, the analysis and monitoring of software access behavior ca...

Claims

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Application Information

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IPC IPC(8): G06K9/62G06K9/46H04L29/06
Inventor 熊贇张尧朱扬勇
Owner FUDAN UNIV
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