Using Machine Learning to Predict Engineering Technology Students' Success with Computer Aided Design
Jasmine Singh, Viranga Perera, Alejandra J. Magana, Brittany Newell,, Jin Wei-Kocsis, Ying Ying Seah, Greg J. Strimel, Charles Xie

TL;DR
This study demonstrates how machine learning models can predict engineering students' success in CAD design tasks, enabling real-time assistance and improved learning outcomes.
Contribution
It introduces a novel approach using student interaction data and machine learning to predict CAD design success, facilitating automated real-time support.
Findings
Models using design action sequences are highly predictive.
Logistic regression achieved over 60% success prediction accuracy.
Early design data can effectively forecast student performance.
Abstract
Computer-aided design (CAD) programs are essential to engineering as they allow for better designs through low-cost iterations. While CAD programs are typically taught to undergraduate students as a job skill, such software can also help students learn engineering concepts. A current limitation of CAD programs (even those that are specifically designed for educational purposes) is that they are not capable of providing automated real-time help to students. To encourage CAD programs to build in assistance to students, we used data generated from students using a free, open source CAD software called Aladdin to demonstrate how student data combined with machine learning techniques can predict how well a particular student will perform in a design task. We challenged students to design a house that consumed zero net energy as part of an introductory engineering technology undergraduate…
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Taxonomy
TopicsDesign Education and Practice · BIM and Construction Integration · Manufacturing Process and Optimization
MethodsLogistic Regression
