Breaking the Clusters: Uniformity-Optimization for Text-Based Sequential Recommendation
Wuhan Chen, Zongwei Wang, Min Gao, Xin Xia, Feng Jiang, Junhao Wen

TL;DR
This paper introduces UniT, a novel framework that improves the uniformity of text-based item representations in sequential recommendation systems by employing strategic pairwise sampling, leading to better diversity and accuracy.
Contribution
The paper proposes UniT, a new method using three sampling strategies to enhance representation uniformity in text-based SR, addressing semantic clustering issues.
Findings
Outperforms state-of-the-art models on real-world datasets.
Improves representation uniformity and recommendation accuracy.
Effectively handles semantic similarity and popularity biases.
Abstract
Traditional sequential recommendation (SR) methods heavily rely on explicit item IDs to capture user preferences over time. This reliance introduces critical limitations in cold-start scenarios and domain transfer tasks, where unseen items and new contexts often lack established ID mappings. To overcome these limitations, recent studies have shifted towards leveraging text-only information for recommendation, thereby improving model generalization and adaptability across domains. Although promising, text-based SR faces unique difficulties: items' text descriptions often share semantic similarities that lead to clustered item representations, compromising their uniformity, a property essential for promoting diversity and enhancing generalization in recommendation systems. In this paper, we explore a novel framework to improve the uniformity of item representations in text-based SR. Our…
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Taxonomy
TopicsRecommender Systems and Techniques · Sentiment Analysis and Opinion Mining · Advanced Text Analysis Techniques
