The Connotation of Objectives and Hierarchical Orientation of Teaching English and American Literature Based on the Era of Big Data

This paper combines the knowledge structure of English and American literature and learners’ personalized knowledge characteristics to design and propose personalized teaching based on a genetic algorithm. Genetic algorithms are used to extract learner characteristics, and content-based recommendati...

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Main Author: Zhu Xiaoguang
Format: Article
Language:English
Published: Sciendo 2024-01-01
Series:Applied Mathematics and Nonlinear Sciences
Subjects:
Online Access:https://doi.org/10.2478/amns.2023.2.01593
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author Zhu Xiaoguang
author_facet Zhu Xiaoguang
author_sort Zhu Xiaoguang
collection DOAJ
description This paper combines the knowledge structure of English and American literature and learners’ personalized knowledge characteristics to design and propose personalized teaching based on a genetic algorithm. Genetic algorithms are used to extract learner characteristics, and content-based recommendation algorithms are applied to match ability characteristics, goal characteristics and learning object characteristics to achieve personalized course teaching. The crossover probability, variation probability, selection operator and crossover operator of the genetic algorithm are determined, and simulation experiments are designed to analyze the optimization effect of its parameters. Setting three levels of colleges and universities, with the connotation of the objectives and level positioning of English and American literature teaching, i.e., reading experience, reading knowledge, reading method, and the cultivation of cultural connotation and humanistic sentiment as factors, a one-way ANOVA was carried out to examine whether the teaching objectives of different levels of colleges and universities differed significantly in personalized teaching. In terms of the highest level of the teaching objectives of English and American literature, i.e., the cultivation of humanistic sentiment, F=6.607, Sig=0.002, 985 colleges>211 colleges and universities, and general undergraduate schools>211 colleges and universities.
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spelling doaj.art-4090941cd0c241e2b58741a7854413e32024-01-29T08:52:44ZengSciendoApplied Mathematics and Nonlinear Sciences2444-86562024-01-019110.2478/amns.2023.2.01593The Connotation of Objectives and Hierarchical Orientation of Teaching English and American Literature Based on the Era of Big DataZhu Xiaoguang01Suqian University, Suqian, Jiangsu, 223800, China.This paper combines the knowledge structure of English and American literature and learners’ personalized knowledge characteristics to design and propose personalized teaching based on a genetic algorithm. Genetic algorithms are used to extract learner characteristics, and content-based recommendation algorithms are applied to match ability characteristics, goal characteristics and learning object characteristics to achieve personalized course teaching. The crossover probability, variation probability, selection operator and crossover operator of the genetic algorithm are determined, and simulation experiments are designed to analyze the optimization effect of its parameters. Setting three levels of colleges and universities, with the connotation of the objectives and level positioning of English and American literature teaching, i.e., reading experience, reading knowledge, reading method, and the cultivation of cultural connotation and humanistic sentiment as factors, a one-way ANOVA was carried out to examine whether the teaching objectives of different levels of colleges and universities differed significantly in personalized teaching. In terms of the highest level of the teaching objectives of English and American literature, i.e., the cultivation of humanistic sentiment, F=6.607, Sig=0.002, 985 colleges>211 colleges and universities, and general undergraduate schools>211 colleges and universities.https://doi.org/10.2478/amns.2023.2.01593genetic algorithmpersonalized recommendationone-way anovateaching english and american literature97c70
spellingShingle Zhu Xiaoguang
The Connotation of Objectives and Hierarchical Orientation of Teaching English and American Literature Based on the Era of Big Data
Applied Mathematics and Nonlinear Sciences
genetic algorithm
personalized recommendation
one-way anova
teaching english and american literature
97c70
title The Connotation of Objectives and Hierarchical Orientation of Teaching English and American Literature Based on the Era of Big Data
title_full The Connotation of Objectives and Hierarchical Orientation of Teaching English and American Literature Based on the Era of Big Data
title_fullStr The Connotation of Objectives and Hierarchical Orientation of Teaching English and American Literature Based on the Era of Big Data
title_full_unstemmed The Connotation of Objectives and Hierarchical Orientation of Teaching English and American Literature Based on the Era of Big Data
title_short The Connotation of Objectives and Hierarchical Orientation of Teaching English and American Literature Based on the Era of Big Data
title_sort connotation of objectives and hierarchical orientation of teaching english and american literature based on the era of big data
topic genetic algorithm
personalized recommendation
one-way anova
teaching english and american literature
97c70
url https://doi.org/10.2478/amns.2023.2.01593
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