CLSDASMay 8, 2020

Distilling Knowledge from Pre-trained Language Models via Text Smoothing

arXiv:2005.03848v16 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for efficient model compression in NLP, benefiting practitioners needing smaller models.

The paper tackles compressing pre-trained language models like BERT via knowledge distillation by proposing TextSmoothing, which uses smoothed word ids from the teacher instead of labels, achieving competitive results on GLUE and SQuAD benchmarks.

This paper studies compressing pre-trained language models, like BERT (Devlin et al.,2019), via teacher-student knowledge distillation. Previous works usually force the student model to strictly mimic the smoothed labels predicted by the teacher BERT. As an alternative, we propose a new method for BERT distillation, i.e., asking the teacher to generate smoothed word ids, rather than labels, for teaching the student model in knowledge distillation. We call this kind of methodTextSmoothing. Practically, we use the softmax prediction of the Masked Language Model(MLM) in BERT to generate word distributions for given texts and smooth those input texts using that predicted soft word ids. We assume that both the smoothed labels and the smoothed texts can implicitly augment the input corpus, while text smoothing is intuitively more efficient since it can generate more instances in one neural network forward step.Experimental results on GLUE and SQuAD demonstrate that our solution can achieve competitive results compared with existing BERT distillation methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes