[2603.26667] M-RAG: Making RAG Faster, Stronger, and More Efficient
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[2603.26667] M-RAG: Making RAG Faster, Stronger, and More Efficient
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This page presents M-RAG, a novel chunk-free retrieval strategy for improving Retrieval-Augmented Generation systems. Traditional RAG systems suffer from information fragmentation and retrieval noise due to text chunking. M-RAG extracts structured k-v decomposition meta-markers with lightweight intent-aligned retrieval keys and context-rich information values. This approach enables efficient query-key similarity matching without sacrificing expressiveness. Experimental results on LongBench demonstrate that M-RAG outperforms chunk-based baselines across varying token budgets, especially in low-resource settings, while retrieving more answer-friendly evidence efficiently.
![[2603.26667] M-RAG: Making RAG Faster, Stronger, and More Efficient - Saved screenshot](https://pub-f6fa8ca7bebe4069bff3224f9a8f5334.r2.dev
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