CLMLApr 10, 2019

Corpora Generation for Grammatical Error Correction

arXiv:1904.05780v11136 citations
Originality Incremental advance
AI Analysis

This addresses data scarcity in GEC, an incremental improvement for NLP applications like writing assistance.

The paper tackled the lack of parallel data for Grammatical Error Correction (GEC) by generating large corpora from Wikipedia, achieving state-of-the-art results on benchmarks like CoNLL-2014 and JFLEG through fine-tuning and ensembling.

Grammatical Error Correction (GEC) has been recently modeled using the sequence-to-sequence framework. However, unlike sequence transduction problems such as machine translation, GEC suffers from the lack of plentiful parallel data. We describe two approaches for generating large parallel datasets for GEC using publicly available Wikipedia data. The first method extracts source-target pairs from Wikipedia edit histories with minimal filtration heuristics, while the second method introduces noise into Wikipedia sentences via round-trip translation through bridge languages. Both strategies yield similar sized parallel corpora containing around 4B tokens. We employ an iterative decoding strategy that is tailored to the loosely supervised nature of our constructed corpora. We demonstrate that neural GEC models trained using either type of corpora give similar performance. Fine-tuning these models on the Lang-8 corpus and ensembling allows us to surpass the state of the art on both the CoNLL-2014 benchmark and the JFLEG task. We provide systematic analysis that compares the two approaches to data generation and highlights the effectiveness of ensembling.

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