Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Approaching Neural Grammatical Error Correction as a Low-Resource Machine Translation Task

About

Previously, neural methods in grammatical error correction (GEC) did not reach state-of-the-art results compared to phrase-based statistical machine translation (SMT) baselines. We demonstrate parallels between neural GEC and low-resource neural MT and successfully adapt several methods from low-resource MT to neural GEC. We further establish guidelines for trustable results in neural GEC and propose a set of model-independent methods for neural GEC that can be easily applied in most GEC settings. Proposed methods include adding source-side noise, domain-adaptation techniques, a GEC-specific training-objective, transfer learning with monolingual data, and ensembling of independently trained GEC models and language models. The combined effects of these methods result in better than state-of-the-art neural GEC models that outperform previously best neural GEC systems by more than 10% M$^2$ on the CoNLL-2014 benchmark and 5.9% on the JFLEG test set. Non-neural state-of-the-art systems are outperformed by more than 2% on the CoNLL-2014 benchmark and by 4% on JFLEG.

Marcin Junczys-Dowmunt, Roman Grundkiewicz, Shubha Guha, Kenneth Heafield• 2018

Related benchmarks

TaskDatasetResultRank
Grammatical Error CorrectionCoNLL 2014 (test)
F0.5 Score56.25
207
Grammatical Error CorrectionJFLEG
GLEU59.9
47
Grammatical Error CorrectionJFLEG (test)
GLEU59.9
45
Grammatical Error CorrectionCoNLL 2014
F0.555.8
39
Showing 4 of 4 rows

Other info

Code

Follow for update