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Virtual presentation / poster accept

Pseudo-label Training and Model Inertia in Neural Machine Translation

Benjamin Hsu · Anna Currey · Xing Niu · Maria Nadejde · georgiana dinu

Keywords: [ Generative models ] [ semi-supervised learning ] [ machine translation ] [ knowledge distillation ] [ forward translation ] [ stability ] [ self-training ] [ robustness ]


Abstract:

Like many other machine learning applications, neural machine translation (NMT) benefits from over-parameterized deep neural models. However, these models have been observed to be brittle: NMT model predictions are sensitive to small input changes and can show significant variation across re-training or incremental model updates. This work studies a frequently used method in NMT, pseudo-label training (PLT), which is common to the related techniques of forward-translation (or self-training) and sequence-level knowledge distillation. While the effect of PLT on quality is well-documented, we highlight a lesser-known effect: PLT can enhance a model's stability to model updates and input perturbations, a set of properties we call \textit{model inertia}. We study inertia effects under different training settings and we identify distribution simplification as a mechanism behind the observed results.

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