Ping-Chun Hsieh


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2025

pdf bib
Extending Automatic Machine Translation Evaluation to Book-Length Documents
Kuang-Da Wang | Shuoyang Ding | Chao-Han Huck Yang | Ping-Chun Hsieh | Wen-Chih Peng | Vitaly Lavrukhin | Boris Ginsburg
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing

Despite Large Language Models (LLMs) demonstrating superior translation performance and long-context capabilities, evaluation methodologies remain constrained to sentence-level assessment due to dataset limitations, token number restrictions in metrics, and rigid sentence boundary requirements. We introduce SEGALE, an evaluation scheme that extends existing automatic metrics to long-document translation by treating documents as continuous text and applying sentence segmentation and alignment methods. Our approach enables previously unattainable document-level evaluation, handling translations of arbitrary length generated with document-level prompts while accounting for under-/over-translations and varied sentence boundaries. Experiments show our scheme significantly outperforms existing long-form document evaluation schemes, while being comparable to evaluations performed with groundtruth sentence alignments. Additionally, we apply our scheme to book-length texts and newly demonstrate that many open-weight LLMs fail to effectively translate documents at their reported maximum context lengths.