Abstract

English grammar error correction algorithm refers to the use of computer programming technology to automatically recognize and correct the grammar errors contained in English text written by nonnative language learners. Classification model is the core of machine learning and data mining, which can be applied to extracting information from English text data and constructing a reliable grammar correction method. On the basis of summarizing and analyzing previous research works, this paper expounded the research status and significance of English grammar error correction algorithm, elaborated the development background, current status, and future challenges of the classification model, introduced the methods and principles of feature extraction method and dynamic residual structure, constructed a basic model for English grammar error correction based on the classification model, analyzed the classification model and translation model of English grammar error correction, proposed the English grammar error correction algorithm based on the classification model, performed the analyses of the model architecture and model optimizer of the grammar error correction algorithm, and finally conducted a simulation experiment and its result analysis. The study results show that, with the continuous increase of training samples and the continuous progress of learning process, the proposed English grammar error correction algorithm based on the classification model will continue to increase its classification accuracy, further refine its recognition rules, and gradually improve correction efficiency, thereby reducing processing time, saving storage space, and streamlining processing flow. The study results of this paper provide a certain reference for the further research on English grammar error correction algorithm based on the classification model.

Highlights

  • English grammar error correction algorithm is an important task of natural language processing, which uses computer programming technology to automatically recognize and correct the grammar, spelling, word order, and punctuation errors contained in English text written by nonnative language learners [1]

  • Most classification models are based on the assumption that the distribution of classes in the data stream is roughly balanced and the designer usually assumes that the number of samples contained in the training data set is roughly the same [6]. is basic assumption is applied to many real data streams and it mainly uses the rules provided by the above modules to complete the automatic grammar inspection and correction function

  • Conclusions is paper constructed a basic model for English grammar error correction based on classification model, analyzed the classification model and translation model of English grammar error correction, proposed the English grammar error correction algorithm based on the classification mode, performed the analyses of the model architecture and model optimizer of the grammar error correction algorithm, and conducted a simulation experiment and its result analysis

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Summary

Introduction

English grammar error correction algorithm is an important task of natural language processing, which uses computer programming technology to automatically recognize and correct the grammar, spelling, word order, and punctuation errors contained in English text written by nonnative language learners [1]. For any automata constructed according to certain rules, the automata defines a language, which is composed of all the sentences that the automata can recognize and grammar and automata express language from the perspective of equivalent generation and recognition [7] With this classification algorithm and the continuous increase of training samples and the continuous progress of the learning process, the classification accuracy of the resulting classifier will continue to improve, thereby reducing time and saving storage space [8]. E detailed arrangement is arranged as follows: Section 2 introduces the methods and principles of feature extraction method and dynamic residual structure; Section 3 constructs a basic model for English grammar error correction based on classification model; Section 4 presents the English grammar error correction algorithm based on the classification mode; Section 5 conducts a simulation experiment and its result analysis; and Section 6 is conclusion On the basis of summarizing and analyzing previous research works, this paper expounded the research status and significance of English grammar error correction algorithm, elaborated the development background, current status, and future challenges of classification model, introduced the methods and principles of feature extraction method and dynamic residual structure, constructed a basic model for English grammar error correction based on classification model, analyzed the classification model and translation model of English grammar error correction, proposed the English grammar error correction algorithm based on the classification mode, performed the analyses of the model architecture and model optimizer of the grammar error correction algorithm, and conducted a simulation experiment and its result analysis. e study results of this paper provide a certain reference for the further researches on English grammar error correction algorithm based on classification model. e detailed arrangement is arranged as follows: Section 2 introduces the methods and principles of feature extraction method and dynamic residual structure; Section 3 constructs a basic model for English grammar error correction based on classification model; Section 4 presents the English grammar error correction algorithm based on the classification mode; Section 5 conducts a simulation experiment and its result analysis; and Section 6 is conclusion

Methods and Principles
English Grammar Error Correction Model Based on the Classification Model
English Grammar Error Correction Algorithm Based on the Classification Model
Simulation Experiment and Analysis
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