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Published in: Pattern Recognition and Image Analysis 4/2020

01-10-2020 | APPLIED PROBLEMS

Time-Aware Social Hierarchical Poisson Factorization for Personalized Recommendation

Authors: Yongheng Chen, Chunyan Yin, Wanli Zuo

Published in: Pattern Recognition and Image Analysis | Issue 4/2020

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Abstract

Microblog is different from traditional social networks and e-commerce website for its low user activity, data sparsity and dynamic of users’ preference. So traditional recommendation algorithms effect certainly is not very aridly ideal for Microblog. In this paper, we develop a time-aware social hierarchical Poisson factorization (HPF_TS) model to make personalized micro-blog recommendation to each user. HPF_TS is a new Bayesian factorization model based hierarchical Poisson factorization that accounts for socialization information, the time characteristics of user preferences to recommend micro-blogs to users whom are interested in. The interpret ability of the recommendation is also attached more importance to latent topics by utilizing gamma-Poisson structure for modeling items’ content. We studied our models with four real-world data sets and the results show that the superior performance of the proposed model, compared with several alternative methods.

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Metadata
Title
Time-Aware Social Hierarchical Poisson Factorization for Personalized Recommendation
Authors
Yongheng Chen
Chunyan Yin
Wanli Zuo
Publication date
01-10-2020
Publisher
Pleiades Publishing
Published in
Pattern Recognition and Image Analysis / Issue 4/2020
Print ISSN: 1054-6618
Electronic ISSN: 1555-6212
DOI
https://doi.org/10.1134/S1054661820040070

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