Expertini Research Research
Computer Science PDF Available DOI: 10.1145/3408877.3432358 Non-peer-reviewed Preprint

Automating Program Structure Classification

Will Crichton, Georgia Gabriela Sampaio, Pat Hanrahan  ·  Published 2021-01-15

Abstract

When students write programs, their program structure provides insight into their learning process. However, analyzing program structure by hand is time-consuming, and teachers need better tools for computer-assisted exploration of student solutions. As a first step towards an education-oriented program analysis toolkit, we show how supervised machine learning methods can automatically classify student programs into a predetermined set of high-level structures. We evaluate two models on classifying student solutions to the Rainfall problem: a nearest-neighbors classifier using syntax tree edit distance and a recurrent neural network. We demonstrate that these models can achieve 91% classification accuracy when trained on 108 programs. We further explore the generality, trade-offs, and failure cases of each model.
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