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DC-MBR: Distributional Cooling for Minimum Bayesian Risk Decoding

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arxiv 2212.04205 v2 pith:KPQQM4UO submitted 2022-12-08 cs.CL

DC-MBR: Distributional Cooling for Minimum Bayesian Risk Decoding

classification cs.CL
keywords labelsmoothingcoolingdistributionaldecodingissuebayesiandc-mbr
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Minimum Bayesian Risk Decoding (MBR) emerges as a promising decoding algorithm in Neural Machine Translation. However, MBR performs poorly with label smoothing, which is surprising as label smoothing provides decent improvement with beam search and improves generality in various tasks. In this work, we show that the issue arises from the un-consistency of label smoothing on the token-level and sequence-level distributions. We demonstrate that even though label smoothing only causes a slight change in the token-level, the sequence-level distribution is highly skewed. We coin the issue \emph{autoregressive over-smoothness}. To address this issue, we propose a simple and effective method, Distributional Cooling MBR (DC-MBR), which manipulates the entropy of output distributions by tuning down the Softmax temperature. We theoretically prove the equivalence between pre-tuning label smoothing factor and distributional cooling. Extensive experiments on NMT benchmarks validate that distributional cooling improves MBR in various settings.

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