Formulating Module Assessment for Improved Academic Performance Predictability in Higher Education

The choice of an effective student assessment method is an issue of interest in Higher Education. Various studies [1] have shown that students tend to get higher marks when assessed through coursework-based assessment methods which include either modules that are fully assessed through coursework or...

Full description

Bibliographic Details
Main Authors: M. Alsuwaiket, A. H. Blasi, R. A. Al-Msie'deen
Format: Article
Language:English
Published: D. G. Pylarinos 2019-06-01
Series:Engineering, Technology & Applied Science Research
Subjects:
EDM
Online Access:https://etasr.com/index.php/ETASR/article/view/2794
id doaj-2ed97e7e2e36432099c4bbde3a28b316
record_format Article
spelling doaj-2ed97e7e2e36432099c4bbde3a28b3162020-12-02T14:20:24ZengD. G. PylarinosEngineering, Technology & Applied Science Research2241-44871792-80362019-06-0193790Formulating Module Assessment for Improved Academic Performance Predictability in Higher EducationM. Alsuwaiket0A. H. Blasi1R. A. Al-Msie'deen2Department of Computer Science, Loughborough University, UKDepartment of Computer Information Systems, Mutah University, JordanDepartment of Computer Information Systems, Mutah University, JordanThe choice of an effective student assessment method is an issue of interest in Higher Education. Various studies [1] have shown that students tend to get higher marks when assessed through coursework-based assessment methods which include either modules that are fully assessed through coursework or a mixture of coursework and examinations than assessed by examination alone. There are a large number of educational data mining (EDM) studies that pre-process data through conventional data mining processes including data preparation process, but they are using transcript data as they stand without looking at examination and coursework results weighting which could affect prediction accuracy. This paper proposes a different data preparation process through investigating more than 230,000 student records in order to prepare students’ marks based on the assessment methods of enrolled modules. The data have been processed through different stages in order to extract a categorical factor through which students’ module marks are refined during the data preparation process. The results of this work show that students’ final marks should not be isolated from the nature of the enrolled module’s assessment methods. They must rather be investigated thoroughly and considered during EDM’s data pre-processing phases. More generally, it is concluded that educational data should not be prepared in the same way as other data types due to differences as data sources, applications, and types of errors in them. Therefore, an attribute, coursework assessment ratio (CAR), is proposed to be used in order to take the different modules’ assessment methods into account while preparing student transcript data. The effect of CAR on prediction process using the random forest classification technique has been investigated. It is shown that considering CAR as an attribute increases the accuracy of predicting students’ second-year averages based on their first-year results. https://etasr.com/index.php/ETASR/article/view/2794EDMdata mininghigher educationmachine learningmodule assessment
collection DOAJ
language English
format Article
sources DOAJ
author M. Alsuwaiket
A. H. Blasi
R. A. Al-Msie'deen
spellingShingle M. Alsuwaiket
A. H. Blasi
R. A. Al-Msie'deen
Formulating Module Assessment for Improved Academic Performance Predictability in Higher Education
Engineering, Technology & Applied Science Research
EDM
data mining
higher education
machine learning
module assessment
author_facet M. Alsuwaiket
A. H. Blasi
R. A. Al-Msie'deen
author_sort M. Alsuwaiket
title Formulating Module Assessment for Improved Academic Performance Predictability in Higher Education
title_short Formulating Module Assessment for Improved Academic Performance Predictability in Higher Education
title_full Formulating Module Assessment for Improved Academic Performance Predictability in Higher Education
title_fullStr Formulating Module Assessment for Improved Academic Performance Predictability in Higher Education
title_full_unstemmed Formulating Module Assessment for Improved Academic Performance Predictability in Higher Education
title_sort formulating module assessment for improved academic performance predictability in higher education
publisher D. G. Pylarinos
series Engineering, Technology & Applied Science Research
issn 2241-4487
1792-8036
publishDate 2019-06-01
description The choice of an effective student assessment method is an issue of interest in Higher Education. Various studies [1] have shown that students tend to get higher marks when assessed through coursework-based assessment methods which include either modules that are fully assessed through coursework or a mixture of coursework and examinations than assessed by examination alone. There are a large number of educational data mining (EDM) studies that pre-process data through conventional data mining processes including data preparation process, but they are using transcript data as they stand without looking at examination and coursework results weighting which could affect prediction accuracy. This paper proposes a different data preparation process through investigating more than 230,000 student records in order to prepare students’ marks based on the assessment methods of enrolled modules. The data have been processed through different stages in order to extract a categorical factor through which students’ module marks are refined during the data preparation process. The results of this work show that students’ final marks should not be isolated from the nature of the enrolled module’s assessment methods. They must rather be investigated thoroughly and considered during EDM’s data pre-processing phases. More generally, it is concluded that educational data should not be prepared in the same way as other data types due to differences as data sources, applications, and types of errors in them. Therefore, an attribute, coursework assessment ratio (CAR), is proposed to be used in order to take the different modules’ assessment methods into account while preparing student transcript data. The effect of CAR on prediction process using the random forest classification technique has been investigated. It is shown that considering CAR as an attribute increases the accuracy of predicting students’ second-year averages based on their first-year results.
topic EDM
data mining
higher education
machine learning
module assessment
url https://etasr.com/index.php/ETASR/article/view/2794
work_keys_str_mv AT malsuwaiket formulatingmoduleassessmentforimprovedacademicperformancepredictabilityinhighereducation
AT ahblasi formulatingmoduleassessmentforimprovedacademicperformancepredictabilityinhighereducation
AT raalmsiedeen formulatingmoduleassessmentforimprovedacademicperformancepredictabilityinhighereducation
_version_ 1724405846406856704