Introductory Engineering Mathematics Students’ Weighted Score Predictions Utilising a Novel Multivariate Adaptive Regression Spline Model
A. A. Masrur Ahmed(NSW Department of Planning and Environment), Nathan Downs(University of Southern Queensland), Prabal Datta Barua(University of Southern Queensland), Aruna Devi(University of the Sunshine Coast), Sujan Ghimire(University of Southern Queensland), Ravinesh C. Deo(University of Southern Queensland)
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