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Knowledge Distillation for Quality Estimation

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arxiv 2107.00411 v1 pith:CVJNKX6A submitted 2021-07-01 cs.CL

Knowledge Distillation for Quality Estimation

classification cs.CL
keywords modelspre-trainedqualityrepresentationsdistilledestimationknowledgelarge
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Quality Estimation (QE) is the task of automatically predicting Machine Translation quality in the absence of reference translations, making it applicable in real-time settings, such as translating online social media conversations. Recent success in QE stems from the use of multilingual pre-trained representations, where very large models lead to impressive results. However, the inference time, disk and memory requirements of such models do not allow for wide usage in the real world. Models trained on distilled pre-trained representations remain prohibitively large for many usage scenarios. We instead propose to directly transfer knowledge from a strong QE teacher model to a much smaller model with a different, shallower architecture. We show that this approach, in combination with data augmentation, leads to light-weight QE models that perform competitively with distilled pre-trained representations with 8x fewer parameters.

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