Litcius/Paper detail

Clustering Approach for Analyzing the Student’s Efficiency and Performance Based on Data

Tallal Omar, Abdullah Alzahrani, Mohamed Zohdy

2020Journal of Data Analysis and Information Processing23 citationsDOIOpen Access PDF

Abstract

The academic community is currently confronting some challenges in terms of analyzing and evaluating the progress of a student’s academic performance. In the real world, classifying the performance of the students is a scientifically challenging task. Recently, some studies apply cluster analysis for evaluating the students’ results and utilize statistical techniques to part their score in regard to student’s performance. This approach, however, is not efficient. In this study, we combine two techniques, namely, k-mean and elbow clustering algorithm to evaluate the student’s performance. Based on this combination, the results of performance will be more accurate in analyzing and evaluating the progress of the student’s performance. In this study, the methodology has been implemented to define the diverse fascinating model taking the student test scores.

Topics & Concepts

Cluster analysisComputer scienceTask (project management)Machine learningMathematics educationArtificial intelligenceTest (biology)Data miningData sciencePsychologyEngineeringPaleontologySystems engineeringBiologyOnline Learning and Analytics
Clustering Approach for Analyzing the Student’s Efficiency and Performance Based on Data | Litcius