Abstract

Due to the number of users and items increasing sharply, data sparsity has become an extremely serious problem for recommendation systems. Social relations consist of complex and rich information, which have a good alleviation effect on sparsity problems. Heterogeneous Information Network (HIN) is excellent in modeling the complex and structural information. Hence, we integrate HIN into the social recommendation. In this paper, we propose a model named Heterogeneous Social Recommendation model with Network Embedding (HSR). The social relations are divided into direct social relations and indirect social relations. We design a novel social influence calculation method to evaluate the influence of direct social relations. Based on the heterogeneous information network embedding method, we represent indirect social relations as feature embeddings and transform the learned embeddings into user-item feature interaction matrix by outer product. The final item list for a user is generated by the method of the convolutional neural network combined with the list of items generated by direct social relations. Extensive experiments on three real-world datasets show significant improvements of our proposed method over state-of-the-art methods. Additionally, experiments show that using heterogeneous network embedding can obtain better recommendation performance.

Highlights

  • W ITH the rapid development of web technology, electronic commerce like JD.com, Tmall and Amazon are gradually integrated into our life

  • As a result of social relations is always sparse and weak for specific item, to better integrate social relations into the recommendation system, we propose a model named heterogeneous social recommendation model with network embedding

  • We analyze the indirect social relations based on the heterogeneous network embedding method, and we express it as the user-item feature interaction matrix to analyze the impact of indirect social relations on the ranking list; 2) We propose a heterogeneous social recommendation model with network embedding, which effectively analyze the social characteristics among users for recommendation and prove that the social influence we proposed has a certain effect on recommendation

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Summary

INTRODUCTION

W ITH the rapid development of web technology, electronic commerce like JD.com, Tmall and Amazon are gradually integrated into our life. Previous studies [27]–[31] analyzed the relations between users and items based on HIN and achieved good results, indicating the effectiveness of HIN in the recommended domain These methods rely on the richness of the explicit data and are lack of in-depth mining and analyzing the social relation of users via the HIN network embedding method. We analyze the indirect social relations based on the heterogeneous network embedding method, and we express it as the user-item feature interaction matrix to analyze the impact of indirect social relations on the ranking list; 2) We propose a heterogeneous social recommendation model with network embedding, which effectively analyze the social characteristics among users for recommendation and prove that the social influence we proposed has a certain effect on recommendation. We show the capability of the proposed model for the cold-start prediction problem, and reveal that the social influence from HINs can improve the recommendation performance

RELATED WORK
IMPLICIT DATA
PROPOSED MODEL
THE NETWORK EMBEDDING
SOCIAL ENHANCEMENT MECHANISM
EXPERIMENT
THE EFFECTIVENESS OF THE EXPERIMENTS
STUDY ON CLOD-START-PROBLEM
CONCLUSION
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