Revisiting Meta-evaluation for Grammatical Error Correction

Author:

Kobayashi Masamune1,Mita Masato23,Komachi Mamoru4

Affiliation:

1. Tokyo Metropolitan University, Japan. kobayashi-masamune@ed.tmu.ac.jp

2. CyberAgent Inc., Japan

3. Tokyo Metropolitan University, Japan. mita_masato@cyberagent.co.jp

4. Hitotsubashi University, Japan. mamoru.komachi@r.hit-u.ac.jp

Abstract

Abstract Metrics are the foundation for automatic evaluation in grammatical error correction (GEC), with their evaluation of the metrics (meta-evaluation) relying on their correlation with human judgments. However, conventional meta-evaluations in English GEC encounter several challenges, including biases caused by inconsistencies in evaluation granularity and an outdated setup using classical systems. These problems can lead to misinterpretation of metrics and potentially hinder the applicability of GEC techniques. To address these issues, this paper proposes SEEDA, a new dataset for GEC meta-evaluation. SEEDA consists of corrections with human ratings along two different granularities: edit-based and sentence-based, covering 12 state-of-the-art systems including large language models, and two human corrections with different focuses. The results of improved correlations by aligning the granularity in the sentence-level meta-evaluation suggest that edit-based metrics may have been underestimated in existing studies. Furthermore, correlations of most metrics decrease when changing from classical to neural systems, indicating that traditional metrics are relatively poor at evaluating fluently corrected sentences with many edits.

Publisher

MIT Press

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4. The BEA-2019 shared task on grammatical error correction;Bryant,2019

5. Automatic annotation and evaluation of error types for grammatical error correction;Bryant,2017

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