We describe two entries from the Cambridge University Engineering Department to the BEA 2019 Shared Task on grammatical error correction. Our submission to the low-resource track is based on prior work on using finite state transducers together with strong neural language models. Our system for the restricted track is a purely neural system consisting of neural language models and neural machine translation models trained with back-translation and a combination of checkpoint averaging and fine-tuning -- without the help of any additional tools like spell checkers. The latter system has been used inside a separate system combination entry in cooperation with the Cambridge University Computer Lab.
@article{arxiv.1907.00168,
title = {The CUED's Grammatical Error Correction Systems for BEA-2019},
author = {Felix Stahlberg and Bill Byrne},
journal= {arXiv preprint arXiv:1907.00168},
year = {2019}
}
Comments
BEA-2019 (ACL2019 workshop) shared task system description