High Quality Rather than High Model Probability: Minimum Bayes Risk Decoding with Neural Metrics

Author:

Freitag Markus1,Grangier David2,Tan Qijun3,Liang Bowen4

Affiliation:

1. Google Research, USA. ::freitag@google.com

2. Google Research, USA. grangier@google.com

3. Google Research, USA. qijuntan@google.com

4. Google Research, USA. bowenl@google.com

Abstract

AbstractIn Neural Machine Translation, it is typically assumed that the sentence with the highest estimated probability should also be the translation with the highest quality as measured by humans. In this work, we question this assumption and show that model estimates and translation quality only vaguely correlate. We apply Minimum Bayes Risk (MBR) decoding on unbiased samples to optimize diverse automated metrics of translation quality as an alternative inference strategy to beam search. Instead of targeting the hypotheses with the highest model probability, MBR decoding extracts the hypotheses with the highest estimated quality. Our experiments show that the combination of a neural translation model with a neural reference-based metric, Bleurt, results in significant improvement in human evaluations. This improvement is obtained with translations different from classical beam-search output: These translations have much lower model likelihood and are less favored by surface metrics like Bleu.

Publisher

MIT Press

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Human-Computer Interaction,Communication

Reference52 articles.

1. An actor-critic algorithm for sequence prediction;Bahdanau,2017

2. Neural machine translation by jointly learning to align and translate;Bahdanau,2015

3. METEOR: An automatic metric for MT evaluation with improved correlation with human judgments;Banerjee,2005

4. Findings of the 2019 conference on machine translation (WMT19);Barrault,2019

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