A Comprehensive Survey of Grammar Error Correction
Yu Wang, Yuelin Wang, Jie Liu, Zhuo Liu

TL;DR
This survey comprehensively reviews the progress, datasets, approaches, techniques, and future directions in grammar error correction, highlighting the evolution from statistical methods to neural models over the past decade.
Contribution
It provides the first extensive overview of GEC research, including datasets, approaches, performance techniques, and future prospects, filling a gap in the literature.
Findings
Neural machine translation approaches dominate GEC systems.
Performance boosting techniques significantly improve correction accuracy.
Future research directions include data augmentation and advanced modeling.
Abstract
Grammar error correction (GEC) is an important application aspect of natural language processing techniques. The past decade has witnessed significant progress achieved in GEC for the sake of increasing popularity of machine learning and deep learning, especially in late 2010s when near human-level GEC systems are available. However, there is no prior work focusing on the whole recapitulation of the progress. We present the first survey in GEC for a comprehensive retrospect of the literature in this area. We first give the introduction of five public datasets, data annotation schema, two important shared tasks and four standard evaluation metrics. More importantly, we discuss four kinds of basic approaches, including statistical machine translation based approach, neural machine translation based approach, classification based approach and language model based approach, six commonly…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling · Text Readability and Simplification
