Local Variational Feature-Based Similarity Models for Recommending Top- N New Items

Author:

Chen Yifan1,Wang Yang2ORCID,Zhao Xiang3,Yin Hongzhi4,Markov Ilya1,Rijke MAARTEN De1

Affiliation:

1. University of Amsterdam, Amsterdam, The Netherlands

2. Key Laboratory of Knowledge Engineering with Big Data, Ministry of Education, Hefei University of Technology, Hefei, China

3. National University of Defense Technology, Changsha, China

4. University of Queensland, Brisbane, Australia

Abstract

The top- N recommendation problem has been studied extensively. Item-based collaborative filtering recommendation algorithms show promising results for the problem. They predict a user’s preferences by estimating similarities between a target and user-rated items. Top- N recommendation remains a challenging task in scenarios where there is a lack of preference history for new items. Feature-based Similarity Models (FSMs) address this particular problem by extending item-based collaborative filtering by estimating similarity functions of item features. The quality of the estimated similarity function determines the accuracy of the recommendation. However, existing FSMs only estimate global similarity functions; i.e., they estimate using preference information across all users. Moreover, the estimated similarity functions are linear ; hence, they may fail to capture the complex structure underlying item features. In this article, we propose to improve FSMs by estimating local similarity functions, where each function is estimated for a subset of like-minded users. To capture global preference patterns, we extend the global similarity function from linear to nonlinear, based on the effectiveness of variational autoencoders. We propose a Bayesian generative model, called the Local Variational Feature-based Similarity Model, to encapsulate local and global similarity functions. We present a variational Expectation Minimization algorithm for efficient approximate inference. Extensive experiments on a large number of real-world datasets demonstrate the effectiveness of our proposed model.

Funder

Netherlands Institute for Sound and Vision

Netherlands Organisation for Scientific Research

China Scholarship Council

Ahold Delhaize

National Natural Science Foundation of China

Natural Science Foundation of Hunan

Association of Universities in the Netherlands

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,General Business, Management and Accounting,Information Systems

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2. SLED: Structure Learning based Denoising for Recommendation;ACM Transactions on Information Systems;2023-11-08

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