Introductory Engineering Mathematics Students’ Weighted Score Predictions Utilising a Novel Multivariate Adaptive Regression Spline Model

Introductory Engineering Mathematics (a skill builder for engineers) involves developing problem-solving attributes throughout the teaching period. Therefore, the prediction of students’ final course grades with continuous assessment marks is a useful toolkit for degree program educators. Predictive...

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Veröffentlicht in:Sustainability 2022-09, Vol.14 (17), p.11070
Hauptverfasser: Ahmed, Abul Abrar Masrur, Deo, Ravinesh C, Ghimire, Sujan, Downs, Nathan J, Devi, Aruna, Barua, Prabal D, Yaseen, Zaher M
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container_end_page
container_issue 17
container_start_page 11070
container_title Sustainability
container_volume 14
creator Ahmed, Abul Abrar Masrur
Deo, Ravinesh C
Ghimire, Sujan
Downs, Nathan J
Devi, Aruna
Barua, Prabal D
Yaseen, Zaher M
description Introductory Engineering Mathematics (a skill builder for engineers) involves developing problem-solving attributes throughout the teaching period. Therefore, the prediction of students’ final course grades with continuous assessment marks is a useful toolkit for degree program educators. Predictive models are practical tools used to evaluate the effectiveness of teaching as well as assessing the students’ progression and implementing interventions for the best learning outcomes. This study develops a novel multivariate adaptive regression spline (MARS) model to predict the weighted score WS (i.e., the course grade). To construct the proposed MARS model, Introductory Engineering Mathematics performance data over five years from the University of Southern Queensland, Australia, were used to design predictive models using input predictors of online quizzes, written assignments, and examination scores. About 60% of randomised predictor grade data were applied to train the model (with 25% of the training set used for validation) and 40% to test the model. Based on the cross-correlation of inputs vs. the WS, 12 distinct combinations with single (i.e., M1–M5) and multiple (M6–M12) features were created to assess the influence of each on the WS with results bench-marked via a decision tree regression (DTR), kernel ridge regression (KRR), and a k-nearest neighbour (KNN) model. The influence of each predictor on WS clearly showed that online quizzes provide the least contribution. However, the MARS model improved dramatically by including written assignments and examination scores. The research demonstrates the merits of the proposed MARS model in uncovering relationships among continuous learning variables, which also provides a distinct advantage to educators in developing early intervention and moderating their teaching by predicting the performance of students ahead of final outcome for a course. The findings and future application have significant practical implications in teaching and learning interventions or planning aimed to improve graduate outcomes in undergraduate engineering program cohorts.
doi_str_mv 10.3390/su141711070
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source Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals; MDPI - Multidisciplinary Digital Publishing Institute
subjects Academic achievement
Classification
Cognitive style
Cross correlation
Datasets
Distance learning
Educational materials
Engineering
Engineering education
Engineering mathematics
Engineering research
Learning
Learning analytics
Machine learning
Mathematical models
Mathematics
Multivariate analysis
Neural networks
Online instruction
Personality traits
Prediction models
Problem solving
Self evaluation
Splines
Students
Sustainability
Teachers
Teaching
Variables
title Introductory Engineering Mathematics Students’ Weighted Score Predictions Utilising a Novel Multivariate Adaptive Regression Spline Model
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