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Main Authors: Wu, Chenghao, Ren, Ruiyang, Zhang, Junjie, Wang, Ruirui, Ma, Zhongrui, Ye, Qi, Zhao, Wayne Xin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.18812
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author Wu, Chenghao
Ren, Ruiyang
Zhang, Junjie
Wang, Ruirui
Ma, Zhongrui
Ye, Qi
Zhao, Wayne Xin
author_facet Wu, Chenghao
Ren, Ruiyang
Zhang, Junjie
Wang, Ruirui
Ma, Zhongrui
Ye, Qi
Zhao, Wayne Xin
contents While modern recommender systems are instrumental in navigating information abundance, they remain fundamentally limited by static user modeling and reactive decision-making paradigms. Current large language model (LLM)-based agents inherit these shortcomings through their overreliance on heuristic pattern matching, yielding recommendations prone to shallow correlation bias, limited causal inference, and brittleness in sparse-data scenarios. We introduce STARec, a slow-thinking augmented agent framework that endows recommender systems with autonomous deliberative reasoning capabilities. Each user is modeled as an agent with parallel cognitions: fast response for immediate interactions and slow reasoning that performs chain-of-thought rationales. To cultivate intrinsic slow thinking, we develop anchored reinforcement training - a two-stage paradigm combining structured knowledge distillation from advanced reasoning models with preference-aligned reward shaping. This hybrid approach scaffolds agents in acquiring foundational capabilities (preference summarization, rationale generation) while enabling dynamic policy adaptation through simulated feedback loops. Experiments on MovieLens 1M and Amazon CDs benchmarks demonstrate that STARec achieves substantial performance gains compared with state-of-the-art baselines, despite using only 0.4% of the full training data.
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spellingShingle STARec: An Efficient Agent Framework for Recommender Systems via Autonomous Deliberate Reasoning
Wu, Chenghao
Ren, Ruiyang
Zhang, Junjie
Wang, Ruirui
Ma, Zhongrui
Ye, Qi
Zhao, Wayne Xin
Artificial Intelligence
While modern recommender systems are instrumental in navigating information abundance, they remain fundamentally limited by static user modeling and reactive decision-making paradigms. Current large language model (LLM)-based agents inherit these shortcomings through their overreliance on heuristic pattern matching, yielding recommendations prone to shallow correlation bias, limited causal inference, and brittleness in sparse-data scenarios. We introduce STARec, a slow-thinking augmented agent framework that endows recommender systems with autonomous deliberative reasoning capabilities. Each user is modeled as an agent with parallel cognitions: fast response for immediate interactions and slow reasoning that performs chain-of-thought rationales. To cultivate intrinsic slow thinking, we develop anchored reinforcement training - a two-stage paradigm combining structured knowledge distillation from advanced reasoning models with preference-aligned reward shaping. This hybrid approach scaffolds agents in acquiring foundational capabilities (preference summarization, rationale generation) while enabling dynamic policy adaptation through simulated feedback loops. Experiments on MovieLens 1M and Amazon CDs benchmarks demonstrate that STARec achieves substantial performance gains compared with state-of-the-art baselines, despite using only 0.4% of the full training data.
title STARec: An Efficient Agent Framework for Recommender Systems via Autonomous Deliberate Reasoning
topic Artificial Intelligence
url https://arxiv.org/abs/2508.18812