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Implicit Session Contexts for Next-Item Recommendations

ISCON implicitly contextualizes user sessions to enhance next-item prediction accuracy by generating session embeddings and clustering.

Year
2022
Venue
arXiv 2022
Authors
6
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arxiv.org/abs/2208.09076ARXIV-DEFAULT
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Abstract

Session-based recommender systems capture the short-term interest of a user within a session. Session contexts (i.e., a user's high-level interests or intents within a session) are not explicitly given in most datasets, and implicitly inferring session context as an aggregation of item-level attributes is crude. In this paper, we propose ISCON, which implicitly contextualizes sessions. ISCON first generates implicit contexts for sessions by creating a session-item graph, learning graph embeddings, and clustering to assign sessions to contexts. ISCON then trains a session context predictor and uses the predicted contexts' embeddings to enhance the next-item prediction accuracy. Experiments on four datasets show that ISCON has superior next-item prediction accuracy than state-of-the-art models. A case study of ISCON on the Reddit dataset confirms that assigned session contexts are unique and meaningful.

Authors

6