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CheckRLM: Effective Knowledge-Thought Coherence Checking in Retrieval-Augmented Reasoning
A framework for improving the reliability of reasoning language models through error checking and correction.
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CheckRLM: Effective Knowledge-Thought Coherence Checking in Retrieval-Augmented Reasoning
By Dingling Xu, Ruobing Wang, Qingfei Zhao, Yukun Yan, Zhichun Wang, Daren Zha, Shi Yu, Zhenghao LiuarXiv
Read original article →CheckRLM proposes a framework to improve the reliability of reasoning language models by timely checking and correcting factual errors. It extracts claims from the reasoning chain, identifies inconsistencies, and performs minimal-cost corrections using external knowledge.
The framework demonstrates strong capability in mitigating error accumulation in long-horizon reasoning with lower costs.
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