Semi-supervised symbol network embedding method and system based on improved graph convolutional network

A technology of symbolic network and convolutional network, which is applied in the field of semi-supervised symbolic network embedding method and system, which can solve the problems of not being able to learn the negative relationship of symbolic network, unable to realize spectral domain convolution of directed symbolic network, etc.

Inactive Publication Date: 2020-07-10
SHANDONG NORMAL UNIV
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Problems solved by technology

[0004] However, according to the inventor's understanding, the current graph convolutional network only supports undirected unsigned networks, and cannot be directly applied to directed symbolic networks, that is, the original graph convolutional network uses the unsigned network Laplacian matrix to have The excellent properties of positive semi-definite, apply Fourier transform to realize the convolution operation of spectral domain graph
However, the directed symbolic network does not have this excellent property, and the original graph convolutional network cannot learn the negative relationship in the symbolic network, resulting in a serious imbalance in the final embedding results, which cannot effectively create potential value for related fields.
If you ignore the negative edges in the symbolic network and treat the symbolic network as an unsigned network, you will not be able to achieve satisfactory embedding results, and you will not be able to perform subsequent tasks: for example, you cannot effectively deal with the edges in the symbolic network. Direction and sign cannot solve the problem of symbol propagation in symbolic networks, and thus cannot realize the form of spectral domain convolution in directed symbolic networks
[0005] To sum up, there is still no effective solution to the series of problems existing in the application of popular graph convolutional network methods to symbolic networks.

Method used

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  • Semi-supervised symbol network embedding method and system based on improved graph convolutional network

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Embodiment 1

[0044] A semi-supervised symbolic network embedding method based on an improved graph convolutional network. Based on the graph convolutional algorithm, it is extended to be applied to various symbolic networks, and the deep learning method is used to obtain the embedding information of the symbolic network. Each node gets its unique feature vector.

[0045] The specific process is as Figure 4 shown, including the following steps:

[0046] 1. Import the interaction data between users in the review website to build a comment symbol network;

[0047]In review sites, each user's comments can be expressed by other users, that is, a user's reaction to another user's comments has the following two basic situations: trust the user's remarks and distrust the user's remarks, Based on this, the basic comment symbol network model can be constructed.

[0048] 2. Define the basic rules of symbol propagation. According to the symbol network task type, the symbol propagation rules in the...

Embodiment 2

[0103] A symbolic network application system based on an improved graph convolutional network (GCN), which applies the graph convolution method used in unsigned networks to symbolic networks, defines symbolic network symbol propagation rules, and is used to calculate the defined Propagate adjacency matrix and signed Laplacian matrix to activations.

[0104] Such as Figure 5 shown, including:

[0105] The symbol propagation module can define the symbol propagation rules in the symbol network according to the symbol network task type, and is applied to the semi-supervised symbol network embedding method.

[0106] The symbolic network processing module formats the input of the system and converts the input adjacency matrix into the form of the directed activation propagation adjacency matrix defined by the system.

[0107] The network feature extraction module obtains the output of the network processing module and converts it into a symbolic Laplacian matrix, paving the way f...

Embodiment 3

[0110] A computer-readable storage medium stores a plurality of instructions, and the instructions are suitable for being loaded by a processor of a terminal device and executing the semi-supervised symbolic network embedding method based on an improved graph convolutional network.

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Abstract

The invention provides a semi-supervised symbol network embedding method and system based on an improved graph convolutional network, and the method comprises the steps: importing relational network data, and forming a directed symbol network; calculating the adjacency matrix of the directed symbol network to obtain a propagation adjacency matrix, and activating the propagation adjacency matrix byusing a symbol function to obtain a directed activated propagation adjacency matrix; constructing a symbol Laplacian matrix, and applying the symbol Laplacian matrix by the graph convolution networkto realize improvement of the graph convolution network; using the improved graph convolution network to carry out convolution operation on an input adjacent matrix, and obtaining embedding results ofdifferent degrees are acquired, so that a prediction problem of network link information can be solved.

Description

technical field [0001] The disclosure belongs to the technical field of network data or information expression and display, and specifically relates to a semi-supervised symbolic network embedding method and system based on an improved graph convolutional network. Background technique [0002] The statements in this section merely provide background information related to the present disclosure and do not necessarily constitute prior art. [0003] With the rapid development of social media and the gradual maturity of deep learning technology, network representation learning has become the focus of industry and academia. Network representation requires keeping the original topology and semantic information of the network unchanged while learning the low-dimensional latent representation of nodes. For example, in the comment trust network, if each user can be represented by a multi-dimensional vector, the information expression of the user on the network can be quantified, so...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/04G06N3/08
CPCG06N3/082G06N3/08G06N3/045
Inventor 王红崔健聪庄慧吴祖涛相志杰李泽慧胡宝芳胡斌张伟闫晓燕
Owner SHANDONG NORMAL UNIV
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