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arxiv: 2406.07348 · v3 · pith:KV6MJEQU · submitted 2024-06-11 · cs.LG · cs.CL

DR-RAG: Applying Dynamic Document Relevance to Retrieval-Augmented Generation for Question-Answering

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classification cs.LG cs.CL
keywords documentsquerydr-ragaccuracygenerationllmsrelevanceretrieval-augmented
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Retrieval-Augmented Generation (RAG) has recently demonstrated the performance of Large Language Models (LLMs) in the knowledge-intensive tasks such as Question-Answering (QA). RAG expands the query context by incorporating external knowledge bases to enhance the response accuracy. However, it would be inefficient to access LLMs multiple times for each query and unreliable to retrieve all the relevant documents by a single query. We have found that even though there is low relevance between some critical documents and query, it is possible to retrieve the remaining documents by combining parts of the documents with the query. To mine the relevance, a two-stage retrieval framework called Dynamic-Relevant Retrieval-Augmented Generation (DR-RAG) is proposed to improve document retrieval recall and the accuracy of answers while maintaining efficiency. Additionally, a compact classifier is applied to two different selection strategies to determine the contribution of the retrieved documents to answering the query and retrieve the relatively relevant documents. Meanwhile, DR-RAG call the LLMs only once, which significantly improves the efficiency of the experiment. The experimental results on multi-hop QA datasets show that DR-RAG can significantly improve the accuracy of the answers and achieve new progress in QA systems.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. HaS: Accelerating RAG through Homology-Aware Speculative Retrieval

    cs.IR 2026-04 unverdicted novelty 7.0

    HaS accelerates RAG retrieval via homology-aware speculative retrieval and homologous query re-identification validation, cutting latency 24-37% with 1-2% accuracy drop on tested datasets.

  2. R3G: A Reasoning-Retrieval-Reranking Framework for Vision-Centric Answer Generation

    cs.CV 2026-01 unverdicted novelty 6.0

    R3G improves vision-centric visual question answering by generating reasoning plans to guide two-stage image retrieval and reranking, achieving state-of-the-art results on MRAG-Bench across six MLLM backbones.