4.7 Article

Cold-Start Next-Item Recommendation by User-Item Matching and Auto-Encoders

期刊

IEEE TRANSACTIONS ON SERVICES COMPUTING
卷 16, 期 4, 页码 2477-2489

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TSC.2023.3237638

关键词

Auto-encoder; cold-start; item recommendation; recommendation systems

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Recommendation systems personalize service for users by suggesting items they may prefer. This article focuses on next-item recommendation systems under the cold-start situation, where users have no interaction with new items. It proposes a novel model called User-Item Matching and Auto-encoders (UIMA) that learns latent embeddings for users and items through user preferences and item attributes, and explores the relationship between them using a matching network.
Recommendation systems provide personalized service to users and aim at suggesting to them items that they may prefer. There is an increasing requirement of next-item recommendation systems to infer a user's next favor item based on his/her historical selection of items. In this article, we study the next-item recommendation under the cold-start situation, where the users in the system share no interaction with the new items. Specifically, we seek to address the problem from the perspective of zero-shot learning (ZSL), which classifies samples whose classes are unseen during training. To this end, we crystallize the relationship and setting from ZSL to cold-start next-item recommendation, and further propose a novel model called User-Item Matching and Auto-encoders (UIMA) which learns the latent embeddings for both users and items by exploiting user historical preferences and item attributes. Concretely, UIMA consists of three components, i.e., two auto-encoders for learning user and item embeddings and a matching network to explore the relationship between the learned user and item embeddings. We perform experiments on several cold-start next-item recommendation datasets, including movies, music, and bookmarks. Promising results demonstrate the effectiveness of the proposed method for cold-start next-item recommendation.

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