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Autori principali: Casola, Silvia, Liu, Yang Janet, Peng, Siyao, Kraus, Oliver, Gatt, Albert, Plank, Barbara
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2506.14335
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author Casola, Silvia
Liu, Yang Janet
Peng, Siyao
Kraus, Oliver
Gatt, Albert
Plank, Barbara
author_facet Casola, Silvia
Liu, Yang Janet
Peng, Siyao
Kraus, Oliver
Gatt, Albert
Plank, Barbara
contents Human language production exhibits remarkable richness and variation, reflecting diverse communication styles and intents. However, this variation is often overlooked in summarization evaluation. While having multiple reference summaries is known to improve correlation with human judgments, the impact of the reference set on reference-based metrics has not been systematically investigated. This work examines the sensitivity of widely used reference-based metrics in relation to the choice of reference sets, analyzing three diverse multi-reference summarization datasets: SummEval, GUMSum, and DUC2004. We demonstrate that many popular metrics exhibit significant instability. This instability is particularly concerning for n-gram-based metrics like ROUGE, where model rankings vary depending on the reference sets, undermining the reliability of model comparisons. We also collect human judgments on LLM outputs for genre-diverse data and examine their correlation with metrics to supplement existing findings beyond newswire summaries, finding weak-to-no correlation. Taken together, we recommend incorporating reference set variation into summarization evaluation to enhance consistency alongside correlation with human judgments, especially when evaluating LLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2506_14335
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle References Matter: Investigating the Impact of Reference Set Variation on Summarization Evaluation
Casola, Silvia
Liu, Yang Janet
Peng, Siyao
Kraus, Oliver
Gatt, Albert
Plank, Barbara
Computation and Language
Human language production exhibits remarkable richness and variation, reflecting diverse communication styles and intents. However, this variation is often overlooked in summarization evaluation. While having multiple reference summaries is known to improve correlation with human judgments, the impact of the reference set on reference-based metrics has not been systematically investigated. This work examines the sensitivity of widely used reference-based metrics in relation to the choice of reference sets, analyzing three diverse multi-reference summarization datasets: SummEval, GUMSum, and DUC2004. We demonstrate that many popular metrics exhibit significant instability. This instability is particularly concerning for n-gram-based metrics like ROUGE, where model rankings vary depending on the reference sets, undermining the reliability of model comparisons. We also collect human judgments on LLM outputs for genre-diverse data and examine their correlation with metrics to supplement existing findings beyond newswire summaries, finding weak-to-no correlation. Taken together, we recommend incorporating reference set variation into summarization evaluation to enhance consistency alongside correlation with human judgments, especially when evaluating LLMs.
title References Matter: Investigating the Impact of Reference Set Variation on Summarization Evaluation
topic Computation and Language
url https://arxiv.org/abs/2506.14335