2024
DOI: 10.1109/tse.2024.3350019
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Test Input Prioritization for Machine Learning Classifiers

Xueqi Dang,
Yinghua Li,
Mike Papadakis
et al.

Abstract: Machine learning has achieved remarkable success across diverse domains. Nevertheless, concerns about interpretability in black-box models, especially within Deep Neural Networks (DNNs), have become pronounced in safety-critical fields like healthcare and finance. Classical machine learning (ML) classifiers, known for their higher interpretability, are preferred in these domains. Similar to DNNs, classical ML classifiers can exhibit bugs that could lead to severe consequences in practice. Test input prioritiza… Show more

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Cited by 6 publications
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