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Knowledge Inheritance for Pre-trained Language Models

Authors :
Qin, Yujia
Lin, Yankai
Yi, Jing
Zhang, Jiajie
Han, Xu
Zhang, Zhengyan
Su, Yusheng
Liu, Zhiyuan
Li, Peng
Sun, Maosong
Zhou, Jie
Publication Year :
2021

Abstract

Recent explorations of large-scale pre-trained language models (PLMs) have revealed the power of PLMs with huge amounts of parameters, setting off a wave of training ever-larger PLMs. However, it requires tremendous computational resources to train a large-scale PLM, which may be practically unaffordable. In addition, existing large-scale PLMs are mainly trained from scratch individually, ignoring that many well-trained PLMs are available. To this end, we explore the question how could existing PLMs benefit training large-scale PLMs in future. Specifically, we introduce a pre-training framework named "knowledge inheritance" (KI) and explore how could knowledge distillation serve as auxiliary supervision during pre-training to efficiently learn larger PLMs. Experimental results demonstrate the superiority of KI in training efficiency. We also conduct empirical analyses to explore the effects of teacher PLMs' pre-training settings, including model architecture, pre-training data, etc. Finally, we show that KI could be applied to domain adaptation and knowledge transfer.<br />Comment: NAACL 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2105.13880
Document Type :
Working Paper