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Main Authors: Li, Chaofan, Liu, Zheng, Chen, Jianlyv, Lian, Defu, Shao, Yingxia
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.11562
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author Li, Chaofan
Liu, Zheng
Chen, Jianlyv
Lian, Defu
Shao, Yingxia
author_facet Li, Chaofan
Liu, Zheng
Chen, Jianlyv
Lian, Defu
Shao, Yingxia
contents While retrieval techniques are widely used in practice, they still face significant challenges in cross-domain scenarios. Recently, generation-augmented methods have emerged as a promising solution to this problem. These methods enhance raw queries by incorporating additional information from an LLM-based generator, facilitating more direct retrieval of relevant documents. However, existing methods struggle with highly specialized situations that require extensive domain expertise. To address this problem, we present \textbf{Reinforced-IR}, a novel approach that jointly adapts a pre-trained retriever and generator for precise cross-domain retrieval. A key innovation of Reinforced-IR is its \textbf{Self-Boosting} framework, which enables retriever and generator to learn from each other's feedback. Specifically, the generator is reinforced to generate query augmentations that enhance the retriever's performance, while the retriever is trained to better discriminate the relevant documents identified by the generator. This iterative process allows the end-to-end retrieval performance to be progressively optimized using an unlabeled corpus from the target domain. In our experiment, Reinforced-IR outperforms existing domain adaptation methods by a large margin, leading to substantial improvements in retrieval quality across a wide range of application scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2502_11562
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reinforced Information Retrieval
Li, Chaofan
Liu, Zheng
Chen, Jianlyv
Lian, Defu
Shao, Yingxia
Computation and Language
While retrieval techniques are widely used in practice, they still face significant challenges in cross-domain scenarios. Recently, generation-augmented methods have emerged as a promising solution to this problem. These methods enhance raw queries by incorporating additional information from an LLM-based generator, facilitating more direct retrieval of relevant documents. However, existing methods struggle with highly specialized situations that require extensive domain expertise. To address this problem, we present \textbf{Reinforced-IR}, a novel approach that jointly adapts a pre-trained retriever and generator for precise cross-domain retrieval. A key innovation of Reinforced-IR is its \textbf{Self-Boosting} framework, which enables retriever and generator to learn from each other's feedback. Specifically, the generator is reinforced to generate query augmentations that enhance the retriever's performance, while the retriever is trained to better discriminate the relevant documents identified by the generator. This iterative process allows the end-to-end retrieval performance to be progressively optimized using an unlabeled corpus from the target domain. In our experiment, Reinforced-IR outperforms existing domain adaptation methods by a large margin, leading to substantial improvements in retrieval quality across a wide range of application scenarios.
title Reinforced Information Retrieval
topic Computation and Language
url https://arxiv.org/abs/2502.11562