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Grammatical Error Detection

Grammatical Error Detection (GED) is the task of detecting different kinds of errors in text such as spelling, punctuation, grammatical, and word choice errors. Grammatical error detection (GED) is one of the key component in grammatical error correction (GEC) community.

Papers

Showing 2650 of 100 papers

TitleStatusHype
Assessing Grammatical Correctness in Language Learning0
Chinese Grammatical Errors Diagnosis System Based on BERT at NLPTEA-2020 CGED Shared Task0
Chinese Grammatical Error Detection Based on BERT Model0
Grammatical error detection in transcriptions of spoken English0
LinggleWrite: a Coaching System for Essay Writing0
Automated Writing Support Using Deep Linguistic Parsers0
Neural Models for Predicting Celtic Mutations0
Grammatical-Error-Aware Incorrect Example Retrieval System for Learners of Japanese as a Second Language0
The AIP-Tohoku System at the BEA-2019 Shared Task0
Context is Key: Grammatical Error Detection with Contextual Word RepresentationsCode1
Detecting Local Insights from Global Labels: Supervised & Zero-Shot Sequence Labeling via a Convolutional DecompositionCode0
Multi-Head Multi-Layer Attention to Deep Language Representations for Grammatical Error Detection0
Jointly Learning to Label Sentences and TokensCode1
Sequence Classification with Human AttentionCode0
Wronging a Right: Generating Better Errors to Improve Grammatical Error DetectionCode0
A Hybrid Approach Combining Statistical Knowledge with Conditional Random Fields for Chinese Grammatical Error Detection0
Neural sequence modelling for learner error prediction0
Building a TOCFL Learner Corpus for Chinese Grammatical Error Diagnosis0
Generation of a Spanish Artificial Collocation Error Corpus0
Neural Multi-task Learning in Automated Assessment0
Grammatical Error Detection Using Error- and Grammaticality-Specific Word EmbeddingsCode0
Collecting fluency corrections for spoken learner English0
Auxiliary Objectives for Neural Error Detection Models0
Artificial Error Generation with Machine Translation and Syntactic Patterns0
Detection of Chinese Word Usage Errors for Non-Native Chinese Learners with Bidirectional LSTM0
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