LARES: Latent Reasoning for Sequential Recommendation
Enze Liu, Bowen Zheng, Xiaolei Wang, Wayne Xin Zhao, Jinpeng Wang, Sheng Chen, Ji-Rong Wen

TL;DR
LARES introduces a scalable latent reasoning framework for sequential recommendation that enhances model capacity through depth-recurrent reasoning, improving recommendation accuracy without increasing parameter complexity.
Contribution
The paper proposes a novel depth-recurrent latent reasoning architecture with a two-phase training strategy, advancing sequential recommendation methods beyond existing paradigms.
Findings
LARES outperforms existing models on real-world benchmarks.
The framework seamlessly enhances other advanced recommendation models.
Two-phase training effectively captures dynamic user interests.
Abstract
Sequential recommender systems have become increasingly important in real-world applications that model user behavior sequences to predict their preferences. However, existing sequential recommendation methods predominantly rely on non-reasoning paradigms, which may limit the model's computational capacity and result in suboptimal recommendation performance. To address these limitations, we present LARES, a novel and scalable LAtent REasoning framework for Sequential recommendation that enhances model's representation capabilities through increasing the computation density of parameters by depth-recurrent latent reasoning. Our proposed approach employs a recurrent architecture that allows flexible expansion of reasoning depth without increasing parameter complexity, thereby effectively capturing dynamic and intricate user interest patterns. A key difference of LARES lies in refining all…
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Taxonomy
TopicsRecommender Systems and Techniques · Explainable Artificial Intelligence (XAI) · Mobile Crowdsensing and Crowdsourcing
