Tree of Preferences for Diversified Recommendation
Hanyang Yuan, Ning Tang, Tongya Zheng, Jiarong Xu, Xintong Hu, Renhong Huang, Shunyu Liu, Jiacong Hu, Jiawei Chen, Mingli Song

TL;DR
This paper introduces a novel Tree of Preferences structure and leverages large language models to uncover underexplored user preferences, enhancing recommendation diversity and relevance by addressing data bias issues.
Contribution
It proposes a new Tree of Preferences model combined with LLMs to systematically reason over user preferences and improve diversified recommendation performance.
Findings
Outperforms existing diversification methods in most cases
Achieves near-optimal diversity and relevance trade-offs
Maintains reasonable inference latency
Abstract
Diversified recommendation has attracted increasing attention from both researchers and practitioners, which can effectively address the homogeneity of recommended items. Existing approaches predominantly aim to infer the diversity of user preferences from observed user feedback. Nonetheless, due to inherent data biases, the observed data may not fully reflect user interests, where underexplored preferences can be overwhelmed or remain unmanifested. Failing to capture these preferences can lead to suboptimal diversity in recommendations. To fill this gap, this work aims to study diversified recommendation from a data-bias perspective. Inspired by the outstanding performance of large language models (LLMs) in zero-shot inference leveraging world knowledge, we propose a novel approach that utilizes LLMs' expertise to uncover underexplored user preferences from observed behavior,…
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Taxonomy
TopicsRecommender Systems and Techniques · Mobile Crowdsensing and Crowdsourcing · Multimodal Machine Learning Applications
