Learning from Atypical Behavior: Temporary Interest Aware Recommendation Based on Reinforcement Learning
Ziwen Du, Ning Yang, Zhonghua Yu, Philip S. Yu

TL;DR
This paper introduces TIARec, a reinforcement learning-based recommendation model that identifies and leverages atypical user interactions to better capture temporary interests without supervision, improving personalization.
Contribution
The paper proposes a novel reinforcement learning framework with a recommender and auxiliary classifier to distinguish atypical interactions and incorporate temporary interests in recommendations.
Findings
TIARec outperforms baseline methods on real-world datasets.
The model effectively captures users' temporary interests.
Reinforcement learning enhances recommendation accuracy.
Abstract
Traditional robust recommendation methods view atypical user-item interactions as noise and aim to reduce their impact with some kind of noise filtering technique, which often suffers from two challenges. First, in real world, atypical interactions may signal users' temporary interest different from their general preference. Therefore, simply filtering out the atypical interactions as noise may be inappropriate and degrade the personalization of recommendations. Second, it is hard to acquire the temporary interest since there are no explicit supervision signals to indicate whether an interaction is atypical or not. To address this challenges, we propose a novel model called Temporary Interest Aware Recommendation (TIARec), which can distinguish atypical interactions from normal ones without supervision and capture the temporary interest as well as the general preference of users.…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research · Smart Grid Energy Management
MethodsAttentive Walk-Aggregating Graph Neural Network · Auxiliary Classifier
