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Main Authors: Petcu, Roxana, Murray, Kenton, Khashabi, Daniel, Kanoulas, Evangelos, de Rijke, Maarten, Lawrie, Dawn, Duh, Kevin
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.18633
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author Petcu, Roxana
Murray, Kenton
Khashabi, Daniel
Kanoulas, Evangelos
de Rijke, Maarten
Lawrie, Dawn
Duh, Kevin
author_facet Petcu, Roxana
Murray, Kenton
Khashabi, Daniel
Kanoulas, Evangelos
de Rijke, Maarten
Lawrie, Dawn
Duh, Kevin
contents Retrieval-augmented generation (RAG) systems address complex user requests by decomposing them into subqueries, retrieving potentially relevant documents for each, and then aggregating them to generate an answer. Efficiently selecting informative documents requires balancing a key trade-off: (i) retrieving broadly enough to capture all the relevant material, and (ii) limiting retrieval to avoid excessive noise and computational cost. We formulate query decomposition and document retrieval in an exploitation-exploration setting, where retrieving one document at a time builds a belief about the utility of a given sub-query and informs the decision to continue exploiting or exploring an alternative. We experiment with a variety of bandit learning methods and demonstrate their effectiveness in dynamically selecting the most informative sub-queries. Our main finding is that estimating document relevance using rank information and human judgments yields a 35% gain in document-level precision, 15% increase in α-nDCG, and better performance on the downstream task of long-form generation.
format Preprint
id arxiv_https___arxiv_org_abs_2510_18633
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Query Decomposition for RAG: Balancing Exploration-Exploitation
Petcu, Roxana
Murray, Kenton
Khashabi, Daniel
Kanoulas, Evangelos
de Rijke, Maarten
Lawrie, Dawn
Duh, Kevin
Artificial Intelligence
Retrieval-augmented generation (RAG) systems address complex user requests by decomposing them into subqueries, retrieving potentially relevant documents for each, and then aggregating them to generate an answer. Efficiently selecting informative documents requires balancing a key trade-off: (i) retrieving broadly enough to capture all the relevant material, and (ii) limiting retrieval to avoid excessive noise and computational cost. We formulate query decomposition and document retrieval in an exploitation-exploration setting, where retrieving one document at a time builds a belief about the utility of a given sub-query and informs the decision to continue exploiting or exploring an alternative. We experiment with a variety of bandit learning methods and demonstrate their effectiveness in dynamically selecting the most informative sub-queries. Our main finding is that estimating document relevance using rank information and human judgments yields a 35% gain in document-level precision, 15% increase in α-nDCG, and better performance on the downstream task of long-form generation.
title Query Decomposition for RAG: Balancing Exploration-Exploitation
topic Artificial Intelligence
url https://arxiv.org/abs/2510.18633