When Factorization Meets Heterogeneous Latent Topics: An Interpretable Cross-Site Recommendation Framework

Xin Xin*, Chin Yew Lin, Xiao Chi Wei, He Yan Huang

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

6 Citations (Scopus)

Abstract

Data sparsity is a well-known challenge in recommender systems. Previous studies alleviate this problem by incorporating the information within the corresponding social media site. In this paper, we solve this challenge by exploring cross-site information. Specifically, we examine: 1) how to effectively and efficiently utilize cross-site ratings and content features to improve recommendation performance and 2) how to make the recommendation interpretable by utilizing content features. We propose a joint model of matrix factorization and latent topic analysis. Heterogeneous content features are modeled by multiple kinds of latent topics. In addition, the combination of matrix factorization and latent topics makes the recommendation result interpretable. Therefore, the above two issues are simultaneously solved. Through a real-world dataset, where user behaviors in three social media sites are collected, we demonstrate that the proposed model is effective in improving recommendation performance and interpreting the rationale of ratings.

Original languageEnglish
Pages (from-to)917-932
Number of pages16
JournalJournal of Computer Science and Technology
Volume30
Issue number4
DOIs
Publication statusPublished - 22 Jul 2015

Keywords

  • collaborative filtering
  • recommender system
  • topic analysis

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