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Targeted Example Generation for Compilation Errors

2 September 2019
Umair Z. Ahmed
Renuka Sindhgatta
Nisheeth Srivastava
Amey Karkare
ArXiv (abs)PDFHTML
Abstract

We present TEGCER, an automated feedback tool for novice programmers. TEGCER uses supervised classification to match compilation errors in new code submissions with relevant pre-existing errors, submitted by other students before. The dense neural network used to perform this classification task is trained on 15000+ error-repair code examples. The proposed model yields a test set classification Pred@3 accuracy of 97.7% across 212 error category labels. Using this model as its base, TEGCER presents students with the closest relevant examples of solutions for their specific error on demand.

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