CLAug 14, 2025

SSRL: Self-Search Reinforcement Learning

Peking UTsinghua
arXiv:2508.10874v110 citationsh-index: 35
Originality Incremental advance
AI Analysis

This addresses the scalability and cost issues in RL training for AI researchers and practitioners, though it is incremental in leveraging existing LLM capabilities.

The paper tackles the problem of reducing dependence on costly external search engines in reinforcement learning by using large language models as efficient simulators for agentic search tasks, achieving high pass@k on benchmarks like BrowseComp and enabling cost-effective, stable training with robust sim-to-real transfer.

We investigate the potential of large language models (LLMs) to serve as efficient simulators for agentic search tasks in reinforcement learning (RL), thereby reducing dependence on costly interactions with external search engines. To this end, we first quantify the intrinsic search capability of LLMs via structured prompting and repeated sampling, which we term Self-Search. Our results reveal that LLMs exhibit strong scaling behavior with respect to the inference budget, achieving high pass@k on question-answering benchmarks, including the challenging BrowseComp task. Building on these observations, we introduce Self-Search RL (SSRL), which enhances LLMs' Self-Search capability through format-based and rule-based rewards. SSRL enables models to iteratively refine their knowledge utilization internally, without requiring access to external tools. Empirical evaluations demonstrate that SSRL-trained policy models provide a cost-effective and stable environment for search-driven RL training, reducing reliance on external search engines and facilitating robust sim-to-real transfer. We draw the following conclusions: 1) LLMs possess world knowledge that can be effectively elicited to achieve high performance; 2) SSRL demonstrates the potential of leveraging internal knowledge to reduce hallucination; 3) SSRL-trained models integrate seamlessly with external search engines without additional effort. Our findings highlight the potential of LLMs to support more scalable RL agent training.

Foundations

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