Recommendation method based on graph twin network

A twin network and recommendation method technology, applied in the field of recommendation system, can solve the problems of model complexity and model training time that are difficult to be effectively controlled, and recommendation methods lack knowledge scalability, etc.

Pending Publication Date: 2020-11-03
BEIJING UNIV OF TECH
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AI Technical Summary

Problems solved by technology

However, most of the above methods model user item information into a graph, which makes it difficult to effectively control the complexity of the model and the model training time. Moreover, the recommendation method based on a single graph lacks knowledge scalability, and it is difficult to aggregate multi-platform U-I relationships. Other information sources such as user social relations

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  • Recommendation method based on graph twin network
  • Recommendation method based on graph twin network
  • Recommendation method based on graph twin network

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Embodiment Construction

[0023] The present invention proposes a personalized recommendation method based on graph twin network. The concrete realization steps of this invention are as follows:

[0024]Step 1: Select the public recommendation data set, number all users and items, and randomly select 90% of the items that each user has interacted with as the training set, and the remaining 10% of the items as the test set. Each of the training set and test set consists of three parts: user, item, and label. The label of the item data that interacts with the user is 1, otherwise the label is 0. The U-I interaction diagram is structured and expressed through all pieces of data labeled 1 in the training set, and the connection relationship between users and items with interactive behavior is established. Finally, according to the node connection relationship of the U-I interaction graph, using the item as the intermediate path, the number of second-order paths between two users is used as the edge infor...

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Abstract

A recommendation method based on the graph twin network is applied to the field of personalized recommendation. An existing method (1) lacks knowledge expansibility, for example, social relation information of users is difficult to fuse effectively; (2) under the propagation normal form of the multilayer feature information, the learned features have an over-smooth problem; therefore, the invention provides the recommendation method based on the graph twinning network, the user relationship graph and the article relationship graph are modeled through the interaction information of the user andthe article, and the user relationship information and the article relationship information are respectively mined in the form of two isomorphic directed graphs through the graph convolution layer designed by the invention. And finally, the user features and the article features of the two channels are aggregated through a graph interaction layer, and user preference information and article attribute information are fully extracted. According to the method, the UI feature characteristics are effectively maintained, the personalized recommendation accuracy is remarkably improved, and the method has good model expandability and wide application prospects.

Description

technical field [0001] The invention is applied to the field of recommendation system based on U-I relationship, and specifically relates to data mining and deep learning technologies such as graph convolutional neural network, attention mechanism, user preference information and item attribute information feature extraction, U-I interactive information modeling, etc. Background technique [0002] Personalized recommendation is a comprehensive analysis task, widely used in social network, music radio station, e-commerce, personalized advertisement, movie and video website, etc., so it has attracted much attention. In recent years, deep learning has achieved great success in many research fields such as computer vision and natural language processing, and has aroused great interest. Deep learning is widely used in recommendation systems, and its effectiveness has been proved in the fields of information retrieval and recommendation system research, and it is the development d...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F16/9535G06F16/9536G06N3/04G06N3/08G06Q50/00
CPCG06F16/9535G06F16/9536G06N3/08G06Q50/01G06N3/047G06N3/048G06N3/045
Inventor 简萌张宸林毋立芳胡文进邓斯诺卢哲张恒
Owner BEIJING UNIV OF TECH
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