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Multi-Class Grammatical Error Detection for Correction: A Tale of Two Systems

Zheng Yuan, Shiva Taslimipoor, Christopher Davis, Christopher Bryant

2021Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing28 citationsDOIOpen Access PDF

Abstract

In this paper, we show how a multi-class grammatical error detection (GED) system can be used to improve grammatical error correction (GEC) for English. Specifically, we first develop a new state-of-the-art binary detection system based on pre-trained ELECTRA, and then extend it to multi-class detection using different error type tagsets derived from the ERRANT framework. Output from this detection system is used as auxiliary input to finetune a novel encoder-decoder GEC model, and we subsequently re-rank the N -best GEC output to find the hypothesis that most agrees with the GED output. Results show that fine-tuning the GEC system using 4-class GED produces the best model, but re-ranking using 55-class GED leads to the best performance overall. This suggests that different multi-class GED systems benefit GEC in different ways. Ultimately, our system outperforms all other previous work that combines GED and GEC, and achieves a new single-model NMT-based state of the art on the BEA-test benchmark.

Topics & Concepts

Computer scienceBenchmark (surveying)Class (philosophy)EncoderBinary numberArtificial intelligenceRank (graph theory)Error detection and correctionState (computer science)Ranking (information retrieval)AlgorithmSpeech recognitionArithmeticMathematicsGeodesyOperating systemCombinatoricsGeographyNatural Language Processing TechniquesTopic ModelingText Readability and Simplification
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