English Grammar Discrimination Training Network Model and Search Filtering

The statistics-based method ignores the semantic constraints in the English grammar area branch training model and is unable to identify the orientation information effectively. This paper systematically discusses the close relationship between English grammar area branch training model filtering, E...

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Main Author: Juan Zhao
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/5528682
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author Juan Zhao
author_facet Juan Zhao
author_sort Juan Zhao
collection DOAJ
description The statistics-based method ignores the semantic constraints in the English grammar area branch training model and is unable to identify the orientation information effectively. This paper systematically discusses the close relationship between English grammar area branch training model filtering, English grammar area branch training model retrieval, and machine learning. By analyzing the role of the situation in the understanding of the English grammar area branch training model, the relationship between the English grammar area branch training model and situation model and the correlation between the features of the English grammar area branch training model and situation model are determined, and then, a set of filtering methods for the English grammar area branch training model are proposed. At present, there are few research studies on bias filtering, and the method of thematic filtering is generally used, which has poor effect. This paper makes full use of the domain knowledge and adopts the semantic pattern analysis technology to establish a wealth of semantic analysis resources, including various dictionaries, rules, and weight representation, so as to effectively filter the inclined English grammar area branch training model. The introduction of semantic data sources solves the problem of data sparsity and cold start in the traditional collaborative filtering system. In addition, in order to improve the scalability and real-time performance of the recommendation system, the data mining method is used to perform fuzzy clustering for users and projects in the offline data preprocessing stage. This paper proposes a search and filter scheme based on the orientation of the training model in English grammar area, elaborates on the details, constructs a whole set of function structure from representation to weight, and gives the experimental results, which prove that the system has a good filtering effect and is fast. Compared with the traditional statistical methods, the results are satisfactory.
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spelling doaj-art-1914c8ee861e4714b98357a6b1a2eb2b2025-02-03T06:43:46ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/55286825528682English Grammar Discrimination Training Network Model and Search FilteringJuan Zhao0School of Foreign Studies, North China University of Water Resources and Electric Power, Zhengzhou, Henan 450046, ChinaThe statistics-based method ignores the semantic constraints in the English grammar area branch training model and is unable to identify the orientation information effectively. This paper systematically discusses the close relationship between English grammar area branch training model filtering, English grammar area branch training model retrieval, and machine learning. By analyzing the role of the situation in the understanding of the English grammar area branch training model, the relationship between the English grammar area branch training model and situation model and the correlation between the features of the English grammar area branch training model and situation model are determined, and then, a set of filtering methods for the English grammar area branch training model are proposed. At present, there are few research studies on bias filtering, and the method of thematic filtering is generally used, which has poor effect. This paper makes full use of the domain knowledge and adopts the semantic pattern analysis technology to establish a wealth of semantic analysis resources, including various dictionaries, rules, and weight representation, so as to effectively filter the inclined English grammar area branch training model. The introduction of semantic data sources solves the problem of data sparsity and cold start in the traditional collaborative filtering system. In addition, in order to improve the scalability and real-time performance of the recommendation system, the data mining method is used to perform fuzzy clustering for users and projects in the offline data preprocessing stage. This paper proposes a search and filter scheme based on the orientation of the training model in English grammar area, elaborates on the details, constructs a whole set of function structure from representation to weight, and gives the experimental results, which prove that the system has a good filtering effect and is fast. Compared with the traditional statistical methods, the results are satisfactory.http://dx.doi.org/10.1155/2021/5528682
spellingShingle Juan Zhao
English Grammar Discrimination Training Network Model and Search Filtering
Complexity
title English Grammar Discrimination Training Network Model and Search Filtering
title_full English Grammar Discrimination Training Network Model and Search Filtering
title_fullStr English Grammar Discrimination Training Network Model and Search Filtering
title_full_unstemmed English Grammar Discrimination Training Network Model and Search Filtering
title_short English Grammar Discrimination Training Network Model and Search Filtering
title_sort english grammar discrimination training network model and search filtering
url http://dx.doi.org/10.1155/2021/5528682
work_keys_str_mv AT juanzhao englishgrammardiscriminationtrainingnetworkmodelandsearchfiltering