Transformer-based Korean Pretrained Language Models: A Survey on Three Years of Progress

Created by MG96

External Public cs.CL

Statistics

Citations
0
References
0
Last updated
Loading...
Authors

Kichang Yang
Project Resources

Name Type Source Actions
ArXiv Paper Paper arXiv
GitHub Repository Code Repository GitHub
Abstract

With the advent of Transformer, which was used in translation models in 2017, attention-based architectures began to attract attention. Furthermore, after the emergence of BERT, which strengthened the NLU-specific encoder part, which is a part of the Transformer, and the GPT architecture, which strengthened the NLG-specific decoder part, various methodologies, data, and models for learning the Pretrained Language Model began to appear. Furthermore, in the past three years, various Pretrained Language Models specialized for Korean have appeared. In this paper, we intend to numerically and qualitatively compare and analyze various Korean PLMs released to the public.

Note:

No note available for this project.

No note available for this project.
Contact:

No contact available for this project.

No contact available for this project.