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Weakly Supervised Grammatical Error Correction using Iterative Decoding

Authors :
Lichtarge, Jared
Alberti, Christopher
Kumar, Shankar
Shazeer, Noam
Parmar, Niki
Publication Year :
2018

Abstract

We describe an approach to Grammatical Error Correction (GEC) that is effective at making use of models trained on large amounts of weakly supervised bitext. We train the Transformer sequence-to-sequence model on 4B tokens of Wikipedia revisions and employ an iterative decoding strategy that is tailored to the loosely-supervised nature of the Wikipedia training corpus. Finetuning on the Lang-8 corpus and ensembling yields an F0.5 of 58.3 on the CoNLL'14 benchmark and a GLEU of 62.4 on JFLEG. The combination of weakly supervised training and iterative decoding obtains an F0.5 of 48.2 on CoNLL'14 even without using any labeled GEC data.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1811.01710
Document Type :
Working Paper