Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data Mining

With the rapid development of information technology and data science, as well as the innovative concept of “Internet+” education, personalized e-learning has received widespread attention in school education and family education. The development of education informatization has led to a rapid incre...

Full description

Saved in:
Bibliographic Details
Main Authors: Chaohua Fang, Qiuyun Lu
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/9935973
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832547616214220800
author Chaohua Fang
Qiuyun Lu
author_facet Chaohua Fang
Qiuyun Lu
author_sort Chaohua Fang
collection DOAJ
description With the rapid development of information technology and data science, as well as the innovative concept of “Internet+” education, personalized e-learning has received widespread attention in school education and family education. The development of education informatization has led to a rapid increase in the number of online learning users and an explosion in the number of learning resources, which makes learners face the dilemma of “information overload” and “learning lost” in the learning process. In the personalized learning resource recommendation system, the most critical thing is the construction of the learner model. Currently, most learner models generally have a lack of scientific focus that they have a single method of obtaining dimensions, feature attributes, and low computational complexity. These problems may lead to disagreement between the learner’s learning ability and the difficulty of the recommended learning resources and may lead to the cognitive overload or disorientation of learners in the learning process. The purpose of this paper is to construct a learner model to support the above problems and to strongly support individual learning resources recommendation by learning the resource model which effectively reduces the problem of cold start and sparsity in the recommended process. In this paper, we analyze the behavioral data of learners in the learning process and extract three features of learner’s cognitive ability, knowledge level, and preference for learning of learner model analysis. Among them, the preference model of the learner is constructed using the ontology, and the semantic relation between the knowledge is better understood, and the interest of the student learning is discovered.
format Article
id doaj-art-0edadaac1d80485d91b366e9faa36f61
institution Kabale University
issn 1076-2787
1099-0526
language English
publishDate 2021-01-01
publisher Wiley
record_format Article
series Complexity
spelling doaj-art-0edadaac1d80485d91b366e9faa36f612025-02-03T06:43:56ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/99359739935973Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data MiningChaohua Fang0Qiuyun Lu1Department of Human Resources Office, Wuzhou University, Wuzhou 543002, ChinaDepartment of International Exchange Office, Wuzhou University, Wuzhou 543002, ChinaWith the rapid development of information technology and data science, as well as the innovative concept of “Internet+” education, personalized e-learning has received widespread attention in school education and family education. The development of education informatization has led to a rapid increase in the number of online learning users and an explosion in the number of learning resources, which makes learners face the dilemma of “information overload” and “learning lost” in the learning process. In the personalized learning resource recommendation system, the most critical thing is the construction of the learner model. Currently, most learner models generally have a lack of scientific focus that they have a single method of obtaining dimensions, feature attributes, and low computational complexity. These problems may lead to disagreement between the learner’s learning ability and the difficulty of the recommended learning resources and may lead to the cognitive overload or disorientation of learners in the learning process. The purpose of this paper is to construct a learner model to support the above problems and to strongly support individual learning resources recommendation by learning the resource model which effectively reduces the problem of cold start and sparsity in the recommended process. In this paper, we analyze the behavioral data of learners in the learning process and extract three features of learner’s cognitive ability, knowledge level, and preference for learning of learner model analysis. Among them, the preference model of the learner is constructed using the ontology, and the semantic relation between the knowledge is better understood, and the interest of the student learning is discovered.http://dx.doi.org/10.1155/2021/9935973
spellingShingle Chaohua Fang
Qiuyun Lu
Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data Mining
Complexity
title Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data Mining
title_full Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data Mining
title_fullStr Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data Mining
title_full_unstemmed Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data Mining
title_short Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data Mining
title_sort personalized recommendation model of high quality education resources for college students based on data mining
url http://dx.doi.org/10.1155/2021/9935973
work_keys_str_mv AT chaohuafang personalizedrecommendationmodelofhighqualityeducationresourcesforcollegestudentsbasedondatamining
AT qiuyunlu personalizedrecommendationmodelofhighqualityeducationresourcesforcollegestudentsbasedondatamining