Synthetic Network and Search Filter Algorithm in English Oral Duplicate Correction Map

Combining the communicative language competence model and the perspective of multimodal research, this research proposes a research framework for oral communicative competence under the multimodal perspective. This not only truly reflects the language communicative competence but also fully embodies...

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Main Author: Xiaojun Chen
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/9960101
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author Xiaojun Chen
author_facet Xiaojun Chen
author_sort Xiaojun Chen
collection DOAJ
description Combining the communicative language competence model and the perspective of multimodal research, this research proposes a research framework for oral communicative competence under the multimodal perspective. This not only truly reflects the language communicative competence but also fully embodies the various contents required for assessment in the basic attributes of spoken language. Aiming at the feature sparseness of the user evaluation matrix, this paper proposes a feature weight assignment algorithm based on the English spoken category keyword dictionary and user search records. The algorithm is mainly based on the self-built English oral category classification dictionary and converts the user’s query vector into a user-English-speaking type vector. Through the calculation rules proposed in this paper, the target user’s preference score for a specific type of spoken English is obtained, and this score is assigned to the unrated item of the original user’s feature matrix as the initial starting score. At the same time, in order to solve the problem of insufficient user similarity calculation accuracy, a user similarity calculation algorithm based on “Synonyms Cilin Extended Edition” and search records is proposed. The algorithm introduces “Synonyms Cilin” to calculate the correlation between the semantic items, vocabulary, and query vector in the user query record to obtain the similarity between users and finally gives a user similarity calculation that integrates user ratings and query vectors method. For the task of Chinese grammar error correction, this article uses two methods of predicting the relationship between words in the corpus, Word2Vec and GloVe, to train the word vectors of different dimensions and use the word vectors to represent the text features of the experimental samples, avoiding sentences brought by word segmentation. On the basis of word vectors, the advantages and disadvantages of CNN, LSTM, and SVM models in this shared task are analyzed through experimental data. The comparative experiment shows that the method in this paper has achieved relatively good results.
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spelling doaj-art-5e9e67b843f04b45b18815fac0c152052025-02-03T00:58:58ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/99601019960101Synthetic Network and Search Filter Algorithm in English Oral Duplicate Correction MapXiaojun Chen0Chinese-Russian Institute, Changchun University, Weixing Road 6543, Changchun, Jilin 130000, ChinaCombining the communicative language competence model and the perspective of multimodal research, this research proposes a research framework for oral communicative competence under the multimodal perspective. This not only truly reflects the language communicative competence but also fully embodies the various contents required for assessment in the basic attributes of spoken language. Aiming at the feature sparseness of the user evaluation matrix, this paper proposes a feature weight assignment algorithm based on the English spoken category keyword dictionary and user search records. The algorithm is mainly based on the self-built English oral category classification dictionary and converts the user’s query vector into a user-English-speaking type vector. Through the calculation rules proposed in this paper, the target user’s preference score for a specific type of spoken English is obtained, and this score is assigned to the unrated item of the original user’s feature matrix as the initial starting score. At the same time, in order to solve the problem of insufficient user similarity calculation accuracy, a user similarity calculation algorithm based on “Synonyms Cilin Extended Edition” and search records is proposed. The algorithm introduces “Synonyms Cilin” to calculate the correlation between the semantic items, vocabulary, and query vector in the user query record to obtain the similarity between users and finally gives a user similarity calculation that integrates user ratings and query vectors method. For the task of Chinese grammar error correction, this article uses two methods of predicting the relationship between words in the corpus, Word2Vec and GloVe, to train the word vectors of different dimensions and use the word vectors to represent the text features of the experimental samples, avoiding sentences brought by word segmentation. On the basis of word vectors, the advantages and disadvantages of CNN, LSTM, and SVM models in this shared task are analyzed through experimental data. The comparative experiment shows that the method in this paper has achieved relatively good results.http://dx.doi.org/10.1155/2021/9960101
spellingShingle Xiaojun Chen
Synthetic Network and Search Filter Algorithm in English Oral Duplicate Correction Map
Complexity
title Synthetic Network and Search Filter Algorithm in English Oral Duplicate Correction Map
title_full Synthetic Network and Search Filter Algorithm in English Oral Duplicate Correction Map
title_fullStr Synthetic Network and Search Filter Algorithm in English Oral Duplicate Correction Map
title_full_unstemmed Synthetic Network and Search Filter Algorithm in English Oral Duplicate Correction Map
title_short Synthetic Network and Search Filter Algorithm in English Oral Duplicate Correction Map
title_sort synthetic network and search filter algorithm in english oral duplicate correction map
url http://dx.doi.org/10.1155/2021/9960101
work_keys_str_mv AT xiaojunchen syntheticnetworkandsearchfilteralgorithminenglishoralduplicatecorrectionmap