Cross-social-network user identity recognition method based on neural tensor network

A user identification and social network technology, applied in the field of cross-social network user identification based on neural tensor network, can solve problems such as implicit relationship modeling, and achieve the effect of improving recall rate and comprehensive evaluation index.

Active Publication Date: 2020-12-04
PLA STRATEGIC SUPPORT FORCE INFORMATION ENG UNIV PLA SSF IEU
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  • Application Information

AI Technical Summary

Problems solved by technology

[0007] Aiming at the problem that existing user identification algorithms usually use linear models or standard neural network layers to measure the similarity between cross-social network users and can hardly model the implicit relationship between them, the present invention provides a method based on Cross-social network user identification method based on neural tensor network

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  • Cross-social-network user identity recognition method based on neural tensor network
  • Cross-social-network user identity recognition method based on neural tensor network
  • Cross-social-network user identity recognition method based on neural tensor network

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Embodiment 1

[0055] Such as figure 2 As shown, the embodiment of the present invention provides a kind of cross-social network user identification method based on neural tensor network, comprising the following steps:

[0056] S101, network representation learning based on Random Walks and Skip-gram models, the source network G s and the target network G t The network structure space of each is mapped to the vector space; the source network G s and the target network G t Belong to two different types of social networks;

[0057] S102, based on the vector space obtained in step S101, use the neural tensor network model to generate the source network G s and the target network G t Model the association relationship between user nodes in ;

[0058] S103. Input the correlation vector obtained by modeling in step S102 into the multi-layer perceptron model for binary classification, and judge the source network G according to the classification result s and the target network G t Whethe...

Embodiment 2

[0064] On the basis of the above-mentioned embodiments, the embodiment of the present invention provides another cross-social network user identification method based on neural tensor network, comprising the following steps:

[0065] S201, network representation learning based on Random Walks and Skip-gram model, the source network G s and the target network G t The network structure spaces of are each mapped to the vector space:

[0066] Specifically, this step includes two stages: network structure sampling and network representation. in:

[0067] Network structure sampling is specifically as follows: First, for the source network G s and the target network G t , all generate multiple sequences for each user node in the network through multiple rounds of random walks, which are used to indicate the social relationship between user nodes; these sequences can be called "corpus" and are used to learn user nodes The vector representation of .

[0068] For example, taking t...

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Abstract

The invention provides a cross-social-network user identity recognition method based on a neural tensor network. The method comprises the following steps: step 1, based on network representation learning of Random Walks and Skipgram models, mapping network structure spaces of a source network Gs and a target network Gt to vector spaces respectively; step 2, based on the vector space obtained in the step 1, modeling an association relationship between the user nodes in the source network Gs and the target network Gt by using a neural tensor network model; and 3, inputting the incidence relationvector obtained by modeling in the step 2 into a multi-layer perceptron model for dichotomy, and judging whether the user node pairs between the source network Gs and the target network Gt point to the same real user or not according to a classification result. According to the method, the neural tensor network model is adopted to replace a standard neural network model, the model has stronger capability of expressing the relationship among cross-network users, and two user vectors can be associated in multiple dimensions.

Description

technical field [0001] The invention relates to the technical field of identification, in particular to a neural tensor network-based cross-social network user identification method. Background technique [0002] With the rapid development of the Internet and the gradual popularization of mobile devices, online social networks have become more and more popular, which brings great convenience to the communication between people. Different social networks provide different types of services, and people usually join different social networks according to the needs of work and life. Each user usually has accounts in different social networks, but accounts belonging to the same person are often isolated from each other and have little connection with each other. A typical goal of the cross-social network user identification problem is to detect whether accounts from different social networks belong to the same natural person in the real world, also known as account association, ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/04G06Q50/00
CPCG06Q50/01G06N3/045G06F18/2415Y02D30/70
Inventor 郭晓宇刘琰杨春芳赵媛李永林
Owner PLA STRATEGIC SUPPORT FORCE INFORMATION ENG UNIV PLA SSF IEU
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