Using Machine Learning to Predict Engineering Technology Students'
Success with Computer Aided Design
- URL: http://arxiv.org/abs/2108.05955v1
- Date: Thu, 12 Aug 2021 20:24:54 GMT
- Title: Using Machine Learning to Predict Engineering Technology Students'
Success with Computer Aided Design
- Authors: Jasmine Singh, Viranga Perera, Alejandra J. Magana, Brittany Newell,
Jin Wei-Kocsis, Ying Ying Seah, Greg J. Strimel, Charles Xie
- Abstract summary: We show how data combined with machine learning techniques can predict how well a particular student will perform in a design task.
We found that our models using early design sequence actions are particularly valuable for prediction.
Further improvements to these models could lead to earlier predictions and thus provide students feedback sooner to enhance their learning.
- Score: 50.591267188664666
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 course. Using data from
128 students, along with the scikit-learn Python machine learning library, we
tested our models using both total counts of design actions and sequences of
design actions as inputs. We found that our models using early design sequence
actions are particularly valuable for prediction. Our logistic regression model
achieved a >60% chance of predicting if a student would succeed in designing a
zero net energy house. Our results suggest that it would be feasible for
Aladdin to provide useful feedback to students when they are approximately
halfway through their design. Further improvements to these models could lead
to earlier predictions and thus provide students feedback sooner to enhance
their learning.
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