Is BERT a Cross-Disciplinary Knowledge Learner? A Surprising Finding of Pre-trained Models' Transferability
Journal
Findings of the Association for Computational Linguistics, Findings of ACL: EMNLP 2021
Pages
2195-2208
Date Issued
2021
Author(s)
Kao W.-T
Abstract
This paper investigates whether the power of the models pre-trained on text data, such as BERT, can be transferred to general token sequence classification applications. To verify pre-trained models' transferability, we test the pre-trained models on text classification tasks with meanings of tokens mismatches, and realworld non-text token sequence classification data, including amino acid, DNA, and music. We find that even on non-text data, the models pre-trained on text converge faster, perform better than the randomly initialized models, and only slightly worse than the models using task-specific knowledge. We also find that the representations of the text and non-text pretrained models share non-trivial similarities. © 2021 Association for Computational Linguistics.
Other Subjects
Classification (of information); Computational linguistics; Amino-acids; Cross-disciplinary; Model transferabilities; Non-trivial; Power; Real-world; Sequence classification; Specific knowledge; Text data; Token sequences; Text processing
Type
conference paper