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arxiv:2509.25961

Reliability Crisis of Reference-free Metrics for Grammatical Error Correction

Published on Sep 30
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Abstract

Adversarial attack strategies for reference-free GEC metrics demonstrate vulnerabilities in current evaluation methods, necessitating more robust approaches.

AI-generated summary

Reference-free evaluation metrics for grammatical error correction (GEC) have achieved high correlation with human judgments. However, these metrics are not designed to evaluate adversarial systems that aim to obtain unjustifiably high scores. The existence of such systems undermines the reliability of automatic evaluation, as it can mislead users in selecting appropriate GEC systems. In this study, we propose adversarial attack strategies for four reference-free metrics: SOME, Scribendi, IMPARA, and LLM-based metrics, and demonstrate that our adversarial systems outperform the current state-of-the-art. These findings highlight the need for more robust evaluation methods.

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