title: GeAR Graphenhanced Agent for Retrievalaugmented Generation

publish date:

2024-12-24

authors:

Zhili Shen et.al.

paper id

2412.18431v1

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abstracts:

Retrieval-augmented generation systems rely on effective document retrieval capabilities. By design, conventional sparse or dense retrievers face challenges in multi-hop retrieval scenarios. In this paper, we present GeAR, which advances RAG performance through two key innovations: (i) graph expansion, which enhances any conventional base retriever, such as BM25, and (ii) an agent framework that incorporates graph expansion. Our evaluation demonstrates GeAR’s superior retrieval performance on three multi-hop question answering datasets. Additionally, our system achieves state-of-the-art results with improvements exceeding 10% on the challenging MuSiQue dataset, while requiring fewer tokens and iterations compared to other multi-step retrieval systems.

QA:

coming soon

编辑整理: wanghaisheng 更新日期:2024 年 12 月 30 日