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Main Authors: Wullach, Tomer, Shapira, Ori, Cohen, Amir DN
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.04395
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author Wullach, Tomer
Shapira, Ori
Cohen, Amir DN
author_facet Wullach, Tomer
Shapira, Ori
Cohen, Amir DN
contents Dense retrieval models are typically fine-tuned with contrastive learning objectives that require binary relevance judgments, even though relevance is inherently graded. We analyze how graded relevance scores and the threshold used to convert them into binary labels affect multilingual dense retrieval. Using a multilingual dataset with LLM-annotated relevance scores, we examine monolingual, multilingual mixture, and cross-lingual retrieval scenarios. Our findings show that the optimal threshold varies systematically across languages and tasks, often reflecting differences in resource level. A well-chosen threshold can improve effectiveness, reduce the amount of fine-tuning data required, and mitigate annotation noise, whereas a poorly chosen one can degrade performance. We argue that graded relevance is a valuable but underutilized signal for dense retrieval, and that threshold calibration should be treated as a principled component of the fine-tuning pipeline.
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id arxiv_https___arxiv_org_abs_2601_04395
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spellingShingle The Overlooked Role of Graded Relevance Thresholds in Multilingual Dense Retrieval
Wullach, Tomer
Shapira, Ori
Cohen, Amir DN
Information Retrieval
Dense retrieval models are typically fine-tuned with contrastive learning objectives that require binary relevance judgments, even though relevance is inherently graded. We analyze how graded relevance scores and the threshold used to convert them into binary labels affect multilingual dense retrieval. Using a multilingual dataset with LLM-annotated relevance scores, we examine monolingual, multilingual mixture, and cross-lingual retrieval scenarios. Our findings show that the optimal threshold varies systematically across languages and tasks, often reflecting differences in resource level. A well-chosen threshold can improve effectiveness, reduce the amount of fine-tuning data required, and mitigate annotation noise, whereas a poorly chosen one can degrade performance. We argue that graded relevance is a valuable but underutilized signal for dense retrieval, and that threshold calibration should be treated as a principled component of the fine-tuning pipeline.
title The Overlooked Role of Graded Relevance Thresholds in Multilingual Dense Retrieval
topic Information Retrieval
url https://arxiv.org/abs/2601.04395