Quality-Aware Decoding for Neural Machine Translation

Patrick Fernandes, António Farinhas, Ricardo Rei, José G. C. de Souza, Perez Ogayo, Graham Neubig, André F. T. Martins
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引用次数: 39

Abstract

Despite the progress in machine translation quality estimation and evaluation in the last years, decoding in neural machine translation (NMT) is mostly oblivious to this and centers around finding the most probable translation according to the model (MAP decoding), approximated with beam search. In this paper, we bring together these two lines of research and propose quality-aware decoding for NMT, by leveraging recent breakthroughs in reference-free and reference-based MT evaluation through various inference methods like N-best reranking and minimum Bayes risk decoding. We perform an extensive comparison of various possible candidate generation and ranking methods across four datasets and two model classes and find that quality-aware decoding consistently outperforms MAP-based decoding according both to state-of-the-art automatic metrics (COMET and BLEURT) and to human assessments.
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神经机器翻译的质量感知解码
尽管过去几年在机器翻译质量估计和评估方面取得了进展,但神经机器翻译 (NMT) 中的解码大多对此视而不见,而是围绕根据模型找到最可能的翻译(MAP 解码),近似于波束搜索。在本文中,我们将这两个研究方向结合起来,通过各种推理方法(如 N-best reranking 和最小贝叶斯风险解码),利用最近在无参考和基于参考的 MT 评估方面取得的突破,为 NMT 提出了质量感知解码。我们在四个数据集和两个模型类别中对各种可能的候选生成和排序方法进行了广泛的比较,发现根据最先进的自动指标(COMET 和 BLEURT)和人工评估,质量感知解码始终优于基于 MAP 的解码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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