TY - JOUR
T1 - Towards reliable prediction of academic performance of architecture students using data mining techniques
AU - Aluko, Ralph Olusola
AU - Daniel, Emmanuel Itodo
AU - Shamsideen Oshodi, Olalekan
AU - Aigbavboa, Clinton Ohis
AU - Abisuga, Abiodun Olatunji
N1 - Publisher Copyright:
© 2018, Emerald Publishing Limited.
PY - 2018/7/3
Y1 - 2018/7/3
N2 - Purpose: In recent years, there has been a tremendous increase in the number of applicants seeking placements in undergraduate architecture programs. It is important during the selection phase of admission at universities to identify new intakes who possess the capability to succeed. Admission variable (i.e. prior academic achievement) is one of the most important criteria considered during the selection process. This paper aims to investigates the efficacy of using data mining techniques to predict the academic performance of architecture students based on information contained in prior academic achievement. Design/methodology/approach: The input variables, i.e. prior academic achievement, were extracted from students’ academic records. Logistic regression and support vector machine (SVM) are the data mining techniques adopted in this study. The collected data were divided into two parts. The first part was used for training the model, while the other part was used to evaluate the predictive accuracy of the developed models. Findings: The results revealed that SVM model outperformed the logistic regression model in terms of accuracy. Taken together, it is evident that prior academic achievement is a good predictor of academic performance of architecture students. Research limitations/implications: Although the factors affecting academic performance of students are numerous, the present study focuses on the effect of prior academic achievement on academic performance of architecture students. Originality/value: The developed SVM model can be used as a decision-making tool for selecting new intakes into the architecture program at Nigerian universities.
AB - Purpose: In recent years, there has been a tremendous increase in the number of applicants seeking placements in undergraduate architecture programs. It is important during the selection phase of admission at universities to identify new intakes who possess the capability to succeed. Admission variable (i.e. prior academic achievement) is one of the most important criteria considered during the selection process. This paper aims to investigates the efficacy of using data mining techniques to predict the academic performance of architecture students based on information contained in prior academic achievement. Design/methodology/approach: The input variables, i.e. prior academic achievement, were extracted from students’ academic records. Logistic regression and support vector machine (SVM) are the data mining techniques adopted in this study. The collected data were divided into two parts. The first part was used for training the model, while the other part was used to evaluate the predictive accuracy of the developed models. Findings: The results revealed that SVM model outperformed the logistic regression model in terms of accuracy. Taken together, it is evident that prior academic achievement is a good predictor of academic performance of architecture students. Research limitations/implications: Although the factors affecting academic performance of students are numerous, the present study focuses on the effect of prior academic achievement on academic performance of architecture students. Originality/value: The developed SVM model can be used as a decision-making tool for selecting new intakes into the architecture program at Nigerian universities.
KW - Academic performance
KW - Artificial intelligence
KW - Decision-making
KW - Education
KW - Logistic regression
KW - Modelling
KW - Support vector machine
UR - http://www.scopus.com/inward/record.url?scp=85046041438&partnerID=8YFLogxK
U2 - 10.1108/JEDT-08-2017-0081
DO - 10.1108/JEDT-08-2017-0081
M3 - Article
AN - SCOPUS:85046041438
SN - 1726-0531
VL - 16
SP - 385
EP - 397
JO - Journal of Engineering, Design and Technology
JF - Journal of Engineering, Design and Technology
IS - 3
ER -