AI RESEARCH
Distilling Reasoning Without Knowledge: A Framework for Reliable LLMs
arXiv CS.AI
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ArXi:2603.14458v1 Announce Type: cross Fact-seeking question answering with large language models (LLMs) remains unreliable when answers depend on up-to-date or conflicting information. Although retrieval-augmented and tool-using LLMs reduce hallucinations, they often rely on implicit planning, leading to inefficient tool usage. We propose a modular framework that explicitly separates planning from factual retrieval and answer synthesis.