Using Neural Architecture Search for Improving Software Flaw Detection in Multimodal Deep Learning Models

arxiv(2020)

Cited 0|Views25
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Abstract
Software flaw detection using multimodal deep learning models has been demonstrated as a very competitive approach on benchmark problems. In this work, we demonstrate that even better performance can be achieved using neural architecture search (NAS) combined with multimodal learning models. We adapt a NAS framework aimed at investigating image classification to the problem of software flaw detection and demonstrate improved results on the Juliet Test Suite, a popular benchmarking data set for measuring performance of machine learning models in this problem domain.
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software flaw detection
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