An intelligent graph mining algorithm to analyze student performance in online learning

Data mining approaches have been widely used to estimate student performance in online education. Various Machine Learning (ML) based data mining techniques have been developed to evaluate student performance accurately. However, they face specific issues in implementation. Hence, a novel hybrid Elm...

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Veröffentlicht in:Education and information technologies 2023-06, Vol.28 (6), p.6667-6693
Hauptverfasser: Munshi, M., Shrimali, Tarun, Gaur, Sanjay
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Shrimali, Tarun
Gaur, Sanjay
description Data mining approaches have been widely used to estimate student performance in online education. Various Machine Learning (ML) based data mining techniques have been developed to evaluate student performance accurately. However, they face specific issues in implementation. Hence, a novel hybrid Elman Neural with Apriori Mining (ENAM) approach was presented in this article to predict student performance in online education. The designed model was validated with the student's performance dataset. Incorporating the Elman neural system eliminates the noise data present in the dataset. Moreover, meaningful features are extracted in feature analysis and trained in the system. Then, the student's performances are sorted based on their average score and classified as good, bad, or average. In addition, a case study was developed to describe the working of the designed model. The presented approach was executed in python software, and performance metrics were estimated. Moreover, a comparative analysis was performed to prove that the proposed system earned better outcomes than existing approaches.
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subjects Academic Achievement
Algorithms
Analysis
Artificial Intelligence
Comparative Analysis
Computer Appl. in Social and Behavioral Sciences
Computer Science
Computers and Education
Data
Data mining
Distance Education
Distance learning
Education
Educational Technology
Electronic Learning
Information Retrieval
Information Systems Applications (incl.Internet)
Machine learning
Neural networks
Online instruction
Technology Uses in Education
User Interfaces and Human Computer Interaction
title An intelligent graph mining algorithm to analyze student performance in online learning
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