Affiliation:
1. School of Foreign Languages, Chaohu University, Hefei 238000, Anhui, China
Abstract
In order to improve the timeliness of English grammar error correction and the recall rate of English grammar error correction, this paper proposes an automatic error correction method for English composition grammar based on a multilayer perceptron. On the basis of preprocessing the English composition corpus data, this paper extracts the grammatical features in the English composition corpus and constructs a grammatical feature set. We take the feature set as the input information of the multilayer perceptron and realize feature classification through network learning and training. The grammatical error items in the English composition are detected according to the similarity, and the error correction is completed by setting the penalty parameter and reducing the deviation parameter. The experimental results show that the syntax error detection time of this method is less than 6 minutes, the recall rate is higher than 90%, and the detection error rate is lower than 6%. The method improves the timeliness of grammatical error correction and improves the efficiency of error correction.
Funder
Anhui Provincial Quality Engineering Project
Subject
General Engineering,General Mathematics
Reference15 articles.
1. Considering optimization of English grammar error correction based on neural network
2. Grammatical Error Correction (GEC): Research Approaches till now
3. Corpora Generation for Grammatical Error Correction
4. Action research of English composition error correction method based on network platform and mobile network platform;J. Li;Journal of Anhui Vocational College of Electrontcs and Information Technology,2018
5. Analysis of grammar error correction algorithm based on deep learning technology;Y. Jing;Information & Technology,2020
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