ClueAnchor: Clue-Anchored Knowledge Reasoning Exploration and Optimization for Retrieval-Augmented Generation

arXiv — cs.CLFriday, October 31, 2025 at 4:00:00 AM
ClueAnchor is an innovative approach designed to enhance Retrieval-Augmented Generation (RAG) systems by improving how they utilize external knowledge. This is significant because it addresses the common issue of underutilization in existing systems, which often struggle to extract and integrate crucial information from retrieved documents. By focusing on better reasoning and interpretation, ClueAnchor aims to make AI-generated content more accurate and reliable, ultimately benefiting various applications that rely on factual information.
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