CLAISep 30, 2025

TASER: Translation Assessment via Systematic Evaluation and Reasoning

arXiv:2510.00255v12 citationsh-index: 2Proceedings of the Tenth Conference on Machine Translation
Originality Incremental advance
AI Analysis

This addresses the problem of improving accuracy and interpretability in translation assessment for NLP researchers and practitioners, though it is incremental as it builds on existing LRM capabilities.

The paper tackles automated translation quality assessment by introducing TASER, a metric using Large Reasoning Models (LRMs) for systematic evaluation, achieving state-of-the-art performance with the highest soft pairwise accuracy in system-level evaluation on the WMT24 Metrics Shared Task.

We introduce TASER (Translation Assessment via Systematic Evaluation and Reasoning), a metric that uses Large Reasoning Models (LRMs) for automated translation quality assessment. TASER harnesses the explicit reasoning capabilities of LRMs to conduct systematic, step-by-step evaluation of translation quality. We evaluate TASER on the WMT24 Metrics Shared Task across both reference-based and reference-free scenarios, demonstrating state-of-the-art performance. In system-level evaluation, TASER achieves the highest soft pairwise accuracy in both reference-based and reference-free settings, outperforming all existing metrics. At the segment level, TASER maintains competitive performance with our reference-free variant ranking as the top-performing metric among all reference-free approaches. Our experiments reveal that structured prompting templates yield superior results with LRMs compared to the open-ended approaches that proved optimal for traditional LLMs. We evaluate o3, a large reasoning model from OpenAI, with varying reasoning efforts, providing insights into the relationship between reasoning depth and evaluation quality. The explicit reasoning process in LRMs offers interpretability and visibility, addressing a key limitation of existing automated metrics. Our results demonstrate that Large Reasoning Models show a measurable advancement in translation quality assessment, combining improved accuracy with transparent evaluation across diverse language pairs.

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