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Analyzing the Forgetting Problem in the Pretrain-Finetuning of Dialogue Response Models (1910.07117v5)

Published 16 Oct 2019 in cs.CL, cs.AI, and cs.LG

Abstract: In this work, we study how the finetuning stage in the pretrain-finetune framework changes the behavior of a pretrained neural language generator. We focus on the transformer encoder-decoder model for the open-domain dialogue response generation task. Our major finding is that after standard finetuning, the model forgets some of the important language generation skills acquired during large-scale pretraining. We demonstrate the forgetting phenomenon through a set of detailed behavior analysis from the perspectives of knowledge transfer, context sensitivity, and function space projection. As a preliminary attempt to alleviate the forgetting problem, we propose an intuitive finetuning strategy named "mix-review". We find that mix-review effectively regularizes the finetuning process, and the forgetting problem is alleviated to some extent. Finally, we discuss interesting behavior of the resulting dialogue model and its implications.

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Authors (7)
  1. Tianxing He (36 papers)
  2. Jun Liu (606 papers)
  3. Kyunghyun Cho (292 papers)
  4. Myle Ott (33 papers)
  5. Bing Liu (212 papers)
  6. James Glass (173 papers)
  7. Fuchun Peng (18 papers)
Citations (9)

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