scholarly journals A Neural Grammatical Error Correction System Built On Better Pre-training and Sequential Transfer Learning

Author(s):  
Yo Joong Choe ◽  
Jiyeon Ham ◽  
Kyubyong Park ◽  
Yeoil Yoon
Author(s):  
Ikumi Yamashita ◽  
Satoru Katsumata ◽  
Masahiro Kaneko ◽  
Aizhan Imankulova ◽  
Mamoru Komachi

2014 ◽  
Vol 2 ◽  
pp. 419-434 ◽  
Author(s):  
Alla Rozovskaya ◽  
Dan Roth

This paper identifies and examines the key principles underlying building a state-of-the-art grammatical error correction system. We do this by analyzing the Illinois system that placed first among seventeen teams in the recent CoNLL-2013 shared task on grammatical error correction. The system focuses on five different types of errors common among non-native English writers. We describe four design principles that are relevant for correcting all of these errors, analyze the system along these dimensions, and show how each of these dimensions contributes to the performance.


Author(s):  
Sourabh Vasant Gothe ◽  
Sushant Dogra ◽  
Mritunjai Chandra ◽  
Chandramouli Sanchi ◽  
Barath Raj Kandur Raja

2021 ◽  
Vol 12 (5) ◽  
pp. 1-51
Author(s):  
Yu Wang ◽  
Yuelin Wang ◽  
Kai Dang ◽  
Jie Liu ◽  
Zhuo Liu

Grammatical error correction (GEC) is an important application aspect of natural language processing techniques, and GEC system is a kind of very important intelligent system that has long been explored both in academic and industrial communities. The past decade has witnessed significant progress achieved in GEC for the sake of increasing popularity of machine learning and deep learning. However, there is not a survey that untangles the large amount of research works and progress in this field. We present the first survey in GEC for a comprehensive retrospective of the literature in this area. We first give the definition of GEC task and introduce the public datasets and data annotation schema. After that, we discuss six kinds of basic approaches, six commonly applied performance boosting techniques for GEC systems, and three data augmentation methods. Since GEC is typically viewed as a sister task of Machine Translation (MT), we put more emphasis on the statistical machine translation (SMT)-based approaches and neural machine translation (NMT)-based approaches for the sake of their importance. Similarly, some performance-boosting techniques are adapted from MT and are successfully combined with GEC systems for enhancement on the final performance. More importantly, after the introduction of the evaluation in GEC, we make an in-depth analysis based on empirical results in aspects of GEC approaches and GEC systems for a clearer pattern of progress in GEC, where error type analysis and system recapitulation are clearly presented. Finally, we discuss five prospective directions for future GEC researches.


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