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Deep learning based analysis of student aptitude for programming at college freshman level

Author

Listed:
  • V. Lakshmi Narasimhan
  • G. Basupi

Abstract

Predicting Freshman student’s aptitude for computing is critical for researchers to understand the underlying aptitude for programming. Dataset out of a questionnaire taken from various Senior students in a high school in the city of Kanchipuram, Tamil Nadu, India was used, where the questions related to their social and cultural back- grounds and their experience with computers. Several hypotheses were also generated. The datasets were analyzed using three machine learning algorithms namely, Back- propagation Neural Network (BPN) and Recurrent Neural Network (RNN) (and its variant, Gated Recurrent Network (GNN)) with K-Nearest Neighbor (KNN) used as the classifier. Various models were obtained to validate the under- pinning set of hypotheses clusters. The results show that the BPN model achieved a high degree of accuracies on various metrics in predicting Freshman student’s aptitude for computer programming

Suggested Citation

Handle: RePEc:dbk:datame:v:2:y:2023:i::p:38:id:1056294dm202338
DOI: 10.56294/dm202338
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