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Auteurs principaux: Zeng, Yuqi, Deng, Qixiang, Wan, Yulei, Jiang, Ruiquan, Zheng, Xiaoqing, Huang, Xuanjing
Format: Preprint
Publié: 2026
Sujets:
Accès en ligne:https://arxiv.org/abs/2605.27123
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author Zeng, Yuqi
Deng, Qixiang
Wan, Yulei
Jiang, Ruiquan
Zheng, Xiaoqing
Huang, Xuanjing
author_facet Zeng, Yuqi
Deng, Qixiang
Wan, Yulei
Jiang, Ruiquan
Zheng, Xiaoqing
Huang, Xuanjing
contents Recent advances in RAG have shifted toward an agentic paradigm, where LLMs interact with retrieval systems over multiple turns and iteratively refine queries based on intermediate results. At the same time, LLMs have demonstrated a strong ability to construct structured queries that precisely express their information needs. However, contemporary RAG systems remain heavily focused on engineering complex retrieval backends, including dense, hybrid, and graph-based retrieval architectures. In this study, we argue that agentic RAG should delegate greater control to the LLM to steer the retrieval process, while relying on a lightweight retrieval interface that provides fine-grained control and faithfully executes the LLM's structured intent. Guided by this principle, we propose an agentic RAG framework that enables LLMs to formulate retrieval intents using logical expressions while simplifying the retrieval backend to an inverted-index-based system. Extensive experiments show that our framework matches a strong agentic hybrid baseline, while substantially reducing construction and serving cost. Moreover, we show that anchoring the retrieval process in logical queries substantially reduces hallucinations in generated responses.
format Preprint
id arxiv_https___arxiv_org_abs_2605_27123
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Rethinking Agentic RAG: Toward LLM-Driven Logical Retrieval Beyond Embeddings
Zeng, Yuqi
Deng, Qixiang
Wan, Yulei
Jiang, Ruiquan
Zheng, Xiaoqing
Huang, Xuanjing
Information Retrieval
Recent advances in RAG have shifted toward an agentic paradigm, where LLMs interact with retrieval systems over multiple turns and iteratively refine queries based on intermediate results. At the same time, LLMs have demonstrated a strong ability to construct structured queries that precisely express their information needs. However, contemporary RAG systems remain heavily focused on engineering complex retrieval backends, including dense, hybrid, and graph-based retrieval architectures. In this study, we argue that agentic RAG should delegate greater control to the LLM to steer the retrieval process, while relying on a lightweight retrieval interface that provides fine-grained control and faithfully executes the LLM's structured intent. Guided by this principle, we propose an agentic RAG framework that enables LLMs to formulate retrieval intents using logical expressions while simplifying the retrieval backend to an inverted-index-based system. Extensive experiments show that our framework matches a strong agentic hybrid baseline, while substantially reducing construction and serving cost. Moreover, we show that anchoring the retrieval process in logical queries substantially reduces hallucinations in generated responses.
title Rethinking Agentic RAG: Toward LLM-Driven Logical Retrieval Beyond Embeddings
topic Information Retrieval
url https://arxiv.org/abs/2605.27123