BLEURT具有通用翻译:基于最小风险训练的自动度量分析

Yiming Yan, Tao Wang, Chengqi Zhao, Shujian Huang, Jiajun Chen, Mingxuan Wang
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引用次数: 5

摘要

自动度量在机器翻译中起着至关重要的作用。尽管基于n-gram的度量标准被广泛使用,但最近在基于预训练模型的度量标准的开发方面出现了激增,这些度量标准的重点是测量句子语义。然而,这些神经指标虽然与人类评估具有更高的相关性,但通常被认为是带有难以检测的潜在偏差的黑箱。在本研究中,我们系统地分析和比较了各种主流和前沿的自动度量,从它们对训练机器翻译系统的指导角度出发。通过最小风险训练(MRT),我们发现某些指标表现出鲁棒性缺陷,例如BLEURT和BARTScore中普遍对抗性翻译的存在。深入分析表明,这些稳健性缺陷的两个主要原因:训练数据集的分布偏差,以及度量范式的趋势。通过结合标记级约束,我们增强了评估指标的鲁棒性,这反过来又导致了机器翻译系统性能的改进。代码可在https://github.com/powerpuffpomelo/fairseq_mrt上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BLEURT Has Universal Translations: An Analysis of Automatic Metrics by Minimum Risk Training
Automatic metrics play a crucial role in machine translation. Despite the widespread use of n-gram-based metrics, there has been a recent surge in the development of pre-trained model-based metrics that focus on measuring sentence semantics. However, these neural metrics, while achieving higher correlations with human evaluations, are often considered to be black boxes with potential biases that are difficult to detect. In this study, we systematically analyze and compare various mainstream and cutting-edge automatic metrics from the perspective of their guidance for training machine translation systems. Through Minimum Risk Training (MRT), we find that certain metrics exhibit robustness defects, such as the presence of universal adversarial translations in BLEURT and BARTScore. In-depth analysis suggests two main causes of these robustness deficits: distribution biases in the training datasets, and the tendency of the metric paradigm. By incorporating token-level constraints, we enhance the robustness of evaluation metrics, which in turn leads to an improvement in the performance of machine translation systems. Codes are available at https://github.com/powerpuffpomelo/fairseq_mrt.
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