IRAILGJun 5, 2023

Learning Similarity among Users for Personalized Session-Based Recommendation from hierarchical structure of User-Session-Item

arXiv:2306.03040v1h-index: 21
Originality Incremental advance
AI Analysis

This work addresses the need for more personalized recommendations in session-based systems by leveraging user similarity, offering an incremental improvement over existing models.

The paper tackles the problem of limited personalization in session-based recommendation by incorporating user similarity and historical sessions, proposing USP-SBR with a UserGraph and contrastive loss, which outperforms state-of-the-art methods on two real-world datasets.

The task of the session-based recommendation is to predict the next interaction of the user based on the anonymized user's behavior pattern. And personalized version of this system is a promising research field due to its availability to deal with user information. However, there's a problem that the user's preferences and historical sessions were not considered in the typical session-based recommendation since it concentrates only on user-item interaction. In addition, the existing personalized session-based recommendation model has a limited capability in that it only considers the preference of the current user without considering those of similar users. It means there can be the loss of information included within the hierarchical data structure of the user-session-item. To tackle with this problem, we propose USP-SBR(abbr. of User Similarity Powered - Session Based Recommender). To model global historical sessions of users, we propose UserGraph that has two types of nodes - ItemNode and UserNode. We then connect the nodes with three types of edges. The first type of edges connects ItemNode as chronological order, and the second connects ItemNode to UserNode, and the last connects UserNode to ItemNode. With these user embeddings, we propose additional contrastive loss, that makes users with similar intention be close to each other in the vector space. we apply graph neural network on these UserGraph and update nodes. Experimental results on two real-world datasets demonstrate that our method outperforms some state-of-the-art approaches.

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