Learning Program Models from Generated Inputs

Mammadov, Tural
(2023) Learning Program Models from Generated Inputs.
In: Doctoral Symposium, 16 May 2023, Melbourne Convention and Exhibition Centre.
Conference: ICSE International Conference on Software Engineering

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Recent advances in Machine Learning (ML) show that Neural Machine Translation (NMT) models can mock the program behavior when trained on input-output pairs. Such models can mock the functionality of existing programs and serve as quick-to-deploy reverse engineering tools. Still, the problem of automatically learning such predictive and reversible models from programs needs to be solved. This work introduces a generic approach for automated and reversible program behavior modeling. It achieves 94% of overall accuracy in the conversion of Markdown-to-HTML and HTML-to-Markdown markups.


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