An Empirical Study on Application of Machine Learning and Neural Network in English Learning

With the continuous development of neural network theory itself and related theories and related technologies, neural network is one of the main branches of intelligent control technology. Artificial neural network is a nonlinear and adaptive information processing composed of a large number of proc...

Full description

Bibliographic Details
Main Authors: He Dong, Sang-Bing Tsai
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2021/8444858
id doaj-5d1e79bfe5ec446a825ef9032015237b
record_format Article
spelling doaj-5d1e79bfe5ec446a825ef9032015237b2021-08-02T00:01:06ZengHindawi LimitedMathematical Problems in Engineering1563-51472021-01-01202110.1155/2021/8444858An Empirical Study on Application of Machine Learning and Neural Network in English LearningHe Dong0Sang-Bing Tsai1School of International CooperationRegional Green Economy Development Research CenterWith the continuous development of neural network theory itself and related theories and related technologies, neural network is one of the main branches of intelligent control technology. Artificial neural network is a nonlinear and adaptive information processing composed of a large number of processing units. In this paper, an adaptive fuzzy neural network (FNN) is used to construct an intelligent system architecture for English learning, and activation function is used to apply the knowledge of computer science and linguistics to English learning. The network neural structure diagram is presented. English machine learning model framework is established based on recursive neural network. On this basis, feature vector extraction and normalization algorithm are used to meet the needs of neural network model. After acquiring the feature vectors of users’ learning styles, the clustering algorithm is used to effectively form a variety of learning styles. The validity of the English learning model was verified by designing the functional flow based on tests. Accurate mastery can activate the corresponding brain regions not only to improve the efficiency of learning, but also to better facilitate language learning.http://dx.doi.org/10.1155/2021/8444858
collection DOAJ
language English
format Article
sources DOAJ
author He Dong
Sang-Bing Tsai
spellingShingle He Dong
Sang-Bing Tsai
An Empirical Study on Application of Machine Learning and Neural Network in English Learning
Mathematical Problems in Engineering
author_facet He Dong
Sang-Bing Tsai
author_sort He Dong
title An Empirical Study on Application of Machine Learning and Neural Network in English Learning
title_short An Empirical Study on Application of Machine Learning and Neural Network in English Learning
title_full An Empirical Study on Application of Machine Learning and Neural Network in English Learning
title_fullStr An Empirical Study on Application of Machine Learning and Neural Network in English Learning
title_full_unstemmed An Empirical Study on Application of Machine Learning and Neural Network in English Learning
title_sort empirical study on application of machine learning and neural network in english learning
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2021-01-01
description With the continuous development of neural network theory itself and related theories and related technologies, neural network is one of the main branches of intelligent control technology. Artificial neural network is a nonlinear and adaptive information processing composed of a large number of processing units. In this paper, an adaptive fuzzy neural network (FNN) is used to construct an intelligent system architecture for English learning, and activation function is used to apply the knowledge of computer science and linguistics to English learning. The network neural structure diagram is presented. English machine learning model framework is established based on recursive neural network. On this basis, feature vector extraction and normalization algorithm are used to meet the needs of neural network model. After acquiring the feature vectors of users’ learning styles, the clustering algorithm is used to effectively form a variety of learning styles. The validity of the English learning model was verified by designing the functional flow based on tests. Accurate mastery can activate the corresponding brain regions not only to improve the efficiency of learning, but also to better facilitate language learning.
url http://dx.doi.org/10.1155/2021/8444858
work_keys_str_mv AT hedong anempiricalstudyonapplicationofmachinelearningandneuralnetworkinenglishlearning
AT sangbingtsai anempiricalstudyonapplicationofmachinelearningandneuralnetworkinenglishlearning
AT hedong empiricalstudyonapplicationofmachinelearningandneuralnetworkinenglishlearning
AT sangbingtsai empiricalstudyonapplicationofmachinelearningandneuralnetworkinenglishlearning
_version_ 1721245315265200128