Peng Cheng


2020

pdf bib
Chinese Grammatical Error Correction Based on Hybrid Models with Data Augmentation
Yi Wang | Ruibin Yuan | Yan‘gen Luo | Yufang Qin | NianYong Zhu | Peng Cheng | Lihuan Wang
Proceedings of the 6th Workshop on Natural Language Processing Techniques for Educational Applications

A better Chinese Grammatical Error Diagnosis (CGED) system for automatic Grammatical Error Correction (GEC) can benefit foreign Chinese learners and lower Chinese learning barriers. In this paper, we introduce our solution to the CGED2020 Shared Task Grammatical Error Correction in detail. The task aims to detect and correct grammatical errors that occur in essays written by foreign Chinese learners. Our solution combined data augmentation methods, spelling check methods, and generative grammatical correction methods, and achieved the best recall score in the Top 1 Correction track. Our final result ranked fourth among the participants.

2016

pdf bib
Deceptive Review Spam Detection via Exploiting Task Relatedness and Unlabeled Data
Zhen Hai | Peilin Zhao | Peng Cheng | Peng Yang | Xiao-Li Li | Guangxia Li
Proceedings of the 2016 Conference on Empirical Methods in Natural Language Processing