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arxiv 2306.09938 v1 pith:OTAXLWGE submitted 2023-06-16 cs.IR

GRM: Generative Relevance Modeling Using Relevance-Aware Sample Estimation for Document Retrieval

classification cs.IR
keywords relevancedocumentgenerativeeffectivenessestimationexpansiongeneratedllms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent studies show that Generative Relevance Feedback (GRF), using text generated by Large Language Models (LLMs), can enhance the effectiveness of query expansion. However, LLMs can generate irrelevant information that harms retrieval effectiveness. To address this, we propose Generative Relevance Modeling (GRM) that uses Relevance-Aware Sample Estimation (RASE) for more accurate weighting of expansion terms. Specifically, we identify similar real documents for each generated document and use a neural re-ranker to estimate their relevance. Experiments on three standard document ranking benchmarks show that GRM improves MAP by 6-9% and R@1k by 2-4%, surpassing previous methods.

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  1. When More Reformulations Hurt: Avoiding Drift using Ranker Feedback

    cs.IR 2026-05 unverdicted novelty 7.0

    ReformIR adaptively prioritizes reformulations and documents with a surrogate model guided by ranker feedback to boost recall while suppressing drift under fixed reranking budgets.