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The Implicit Length Bias of Label Smoothing on Beam Search Decoding

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arxiv 2205.00659 v1 pith:D43HBNH4 submitted 2022-05-02 cs.CL

The Implicit Length Bias of Label Smoothing on Beam Search Decoding

classification cs.CL
keywords labelsmoothingbeamlengthmodelbiasbleudecoding
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Label smoothing is ubiquitously applied in Neural Machine Translation (NMT) training. While label smoothing offers a desired regularization effect during model training, in this paper we demonstrate that it nevertheless introduces length biases in the beam search decoding procedure. Our analysis shows that label smoothing implicitly applies a length penalty term to output sequence, causing a bias towards shorter translations. We also show that for a model fully optimized with label smoothing, translation length is implicitly upper bounded by a fixed constant independent of input. We verify our theory by applying a simple rectification function at inference time to restore the unbiased distributions from the label-smoothed model predictions. This rectification method led to consistent quality improvements on WMT English-German, English-French, English-Czech and English-Chinese tasks, up to +0.3 BLEU at beam size 4 and +2.8 BLEU at beam size 200.

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