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Main Authors: Gienapp, Lukas, Potthast, Martin, Yates, Andrew, Scells, Harrisen, Yang, Eugene
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.04633
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author Gienapp, Lukas
Potthast, Martin
Yates, Andrew
Scells, Harrisen
Yang, Eugene
author_facet Gienapp, Lukas
Potthast, Martin
Yates, Andrew
Scells, Harrisen
Yang, Eugene
contents The unjudged document problem, where systems that did not contribute to the original judgement pool may retrieve documents without a relevance judgement, is a key obstacle to the reuseability of test collections in information retrieval. While the de facto standard to deal with the problem is to treat unjudged documents as non-relevant, many alternatives have been proposed, such as the use of large language models (LLMs) as a relevance judge (LLM-as-a-judge). However, this has been criticized, among other things, as circular, since the same LLM can be used as the ranker and the judge. We propose to train topic-specific relevance classifiers instead: By finetuning monoT5 with independent LoRA weight adaptation on the judgments of a single assessor for a single topic's pool, we align it to that assessor's notion of relevance for the topic. The system rankings obtained through our classifier's relevance judgments achieve a Spearmans' $ρ$ correlation of $>0.94$ with ground truth system rankings. As little as 128 initial human judgments per topic suffice to improve the comparability of models, compared to treating unjudged documents as non-relevant, while achieving more reliability than existing LLM-as-a-judge approaches. Topic-specific relevance classifiers are thus a lightweight and straightforward way to tackle the unjudged document problem, while maintaining human judgments as the gold standard for retrieval evaluation. Code, models, and data are made openly available.
format Preprint
id arxiv_https___arxiv_org_abs_2510_04633
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Topic-Specific Classifiers are Better Relevance Judges than Prompted LLMs
Gienapp, Lukas
Potthast, Martin
Yates, Andrew
Scells, Harrisen
Yang, Eugene
Information Retrieval
The unjudged document problem, where systems that did not contribute to the original judgement pool may retrieve documents without a relevance judgement, is a key obstacle to the reuseability of test collections in information retrieval. While the de facto standard to deal with the problem is to treat unjudged documents as non-relevant, many alternatives have been proposed, such as the use of large language models (LLMs) as a relevance judge (LLM-as-a-judge). However, this has been criticized, among other things, as circular, since the same LLM can be used as the ranker and the judge. We propose to train topic-specific relevance classifiers instead: By finetuning monoT5 with independent LoRA weight adaptation on the judgments of a single assessor for a single topic's pool, we align it to that assessor's notion of relevance for the topic. The system rankings obtained through our classifier's relevance judgments achieve a Spearmans' $ρ$ correlation of $>0.94$ with ground truth system rankings. As little as 128 initial human judgments per topic suffice to improve the comparability of models, compared to treating unjudged documents as non-relevant, while achieving more reliability than existing LLM-as-a-judge approaches. Topic-specific relevance classifiers are thus a lightweight and straightforward way to tackle the unjudged document problem, while maintaining human judgments as the gold standard for retrieval evaluation. Code, models, and data are made openly available.
title Topic-Specific Classifiers are Better Relevance Judges than Prompted LLMs
topic Information Retrieval
url https://arxiv.org/abs/2510.04633