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Structured RAG for Answering Aggregative Questions

11 November 2025
Omri Koshorek
Niv Granot
Aviv Alloni
Shahar Admati
Roee Hendel
Ido Weiss
Alan Arazi
Shay-Nitzan Cohen
Yonatan Belinkov
    RALM
ArXiv (abs)PDFHTML
Main:9 Pages
3 Figures
Bibliography:3 Pages
6 Tables
Appendix:4 Pages
Abstract

Retrieval-Augmented Generation (RAG) has become the dominant approach for answering questions over large corpora. However, current datasets and methods are highly focused on cases where only a small part of the corpus (usually a few paragraphs) is relevant per query, and fail to capture the rich world of aggregative queries. These require gathering information from a large set of documents and reasoning over them. To address this gap, we propose S-RAG, an approach specifically designed for such queries. At ingestion time, S-RAG constructs a structured representation of the corpus; at inference time, it translates natural-language queries into formal queries over said representation. To validate our approach and promote further research in this area, we introduce two new datasets of aggregative queries: HOTELS and WORLD CUP. Experiments with S-RAG on the newly introduced datasets, as well as on a public benchmark, demonstrate that it substantially outperforms both common RAG systems and long-context LLMs.

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