Bid Farewell to Seesaw: Towards Accurate Long-tail Session-based Recommendation via Dual Constraints of Hybrid Intents
Xiao Wang, Ke Qin, Dongyang Zhang, Xiurui Xie, Shuang Liang

TL;DR
This paper introduces HID, a novel framework that improves long-tail session-based recommendation accuracy and diversity by using hybrid intent learning and dual constraints, overcoming the traditional accuracy-diversity trade-off.
Contribution
HID employs hybrid intent learning with spectral clustering and dual constraints to simultaneously enhance long-tail diversity and accuracy in session-based recommendation.
Findings
HID achieves state-of-the-art long-tail recommendation performance.
HID improves both diversity and accuracy across multiple datasets.
Extensive experiments validate the effectiveness of the proposed framework.
Abstract
Session-based recommendation (SBR) aims to predict anonymous users' next interaction based on their interaction sessions. In the practical recommendation scenario, low-exposure items constitute the majority of interactions, creating a long-tail distribution that severely compromises recommendation diversity. Existing approaches attempt to address this issue by promoting tail items but incur accuracy degradation, exhibiting a "see-saw" effect between long-tail and accuracy performance. We attribute such conflict to session-irrelevant noise within the tail items, which existing long-tail approaches fail to identify and constrain effectively. To resolve this fundamental conflict, we propose \textbf{HID} (\textbf{H}ybrid \textbf{I}ntent-based \textbf{D}ual Constraint Framework), a plug-and-play framework that transforms the conventional "see-saw" into "win-win" through introducing the…
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Taxonomy
TopicsRecommender Systems and Techniques · Mobile Crowdsensing and Crowdsourcing · Advanced Bandit Algorithms Research
