Saved in:
Bibliographic Details
Main Authors: Zhong, Yunfei, Yang, Jun, Fan, Yixing, Su, Lixin, de Rijke, Maarten, Zhang, Ruqing, Cheng, Xueqi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.06544
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912892611198976
author Zhong, Yunfei
Yang, Jun
Fan, Yixing
Su, Lixin
de Rijke, Maarten
Zhang, Ruqing
Cheng, Xueqi
author_facet Zhong, Yunfei
Yang, Jun
Fan, Yixing
Su, Lixin
de Rijke, Maarten
Zhang, Ruqing
Cheng, Xueqi
contents Query understanding (QU) aims to accurately infer user intent to improve document retrieval. It plays a vital role in modern search engines. While large language models (LLMs) have made notable progress in this area, their effectiveness has primarily been studied on short, keyword-based queries. With the rise of AI-driven search, long-form queries with complex intent become increasingly common, but they are underexplored in the context of LLM-based QU. To address this gap, we introduce ReDI, a reasoning-enhanced query understanding method through decomposition and interpretation. ReDI uses the reasoning and understanding capabilities of LLMs within a three-stage pipeline. (i) It decomposes a complex query into a set of targeted sub-queries to capture the user intent. (ii) It enriches each sub-query with detailed semantic interpretations to enhance the retrieval of intent-document matching. And (iii), after independently retrieving documents for each sub-query, ReDI uses a fusion strategy to aggregate the results and obtain the final ranking. We collect a large-scale dataset of real-world complex queries from a commercial search engine and distill the query understanding capabilities of DeepSeek-R1 into small models for practical application. Experiments on public benchmarks, including BRIGHT and BEIR, show that ReDI consistently outperforms strong baselines in both sparse and dense retrieval paradigms, demonstrating its effectiveness. We release our code, generated sub-queries, and interpretations at https://github.com/youngbeauty250/ReDI.
format Preprint
id arxiv_https___arxiv_org_abs_2509_06544
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reason to Retrieve: Enhancing Query Understanding through Decomposition and Interpretation
Zhong, Yunfei
Yang, Jun
Fan, Yixing
Su, Lixin
de Rijke, Maarten
Zhang, Ruqing
Cheng, Xueqi
Information Retrieval
Query understanding (QU) aims to accurately infer user intent to improve document retrieval. It plays a vital role in modern search engines. While large language models (LLMs) have made notable progress in this area, their effectiveness has primarily been studied on short, keyword-based queries. With the rise of AI-driven search, long-form queries with complex intent become increasingly common, but they are underexplored in the context of LLM-based QU. To address this gap, we introduce ReDI, a reasoning-enhanced query understanding method through decomposition and interpretation. ReDI uses the reasoning and understanding capabilities of LLMs within a three-stage pipeline. (i) It decomposes a complex query into a set of targeted sub-queries to capture the user intent. (ii) It enriches each sub-query with detailed semantic interpretations to enhance the retrieval of intent-document matching. And (iii), after independently retrieving documents for each sub-query, ReDI uses a fusion strategy to aggregate the results and obtain the final ranking. We collect a large-scale dataset of real-world complex queries from a commercial search engine and distill the query understanding capabilities of DeepSeek-R1 into small models for practical application. Experiments on public benchmarks, including BRIGHT and BEIR, show that ReDI consistently outperforms strong baselines in both sparse and dense retrieval paradigms, demonstrating its effectiveness. We release our code, generated sub-queries, and interpretations at https://github.com/youngbeauty250/ReDI.
title Reason to Retrieve: Enhancing Query Understanding through Decomposition and Interpretation
topic Information Retrieval
url https://arxiv.org/abs/2509.06544