Vulnerability of classifiers to evolutionary generated adversarial examples
Language English Country United States Media print-electronic
Document type Journal Article
PubMed
32361547
DOI
10.1016/j.neunet.2020.04.015
PII: S0893-6080(20)30135-0
Knihovny.cz E-resources
- Keywords
- Adversarial examples, Genetic algorithms, Kernel methods, Neural networks, Supervised learning,
- MeSH
- Algorithms MeSH
- Humans MeSH
- Neural Networks, Computer * MeSH
- Supervised Machine Learning * trends MeSH
- Pattern Recognition, Automated methods trends MeSH
- Machine Learning trends MeSH
- Check Tag
- Humans MeSH
- Publication type
- Journal Article MeSH
This paper deals with the vulnerability of machine learning models to adversarial examples and its implication for robustness and generalization properties. We propose an evolutionary algorithm that can generate adversarial examples for any machine learning model in the black-box attack scenario. This way, we can find adversarial examples without access to model's parameters, only by querying the model at hand. We have tested a range of machine learning models including deep and shallow neural networks. Our experiments have shown that the vulnerability to adversarial examples is not only the problem of deep networks, but it spreads through various machine learning architectures. Rather, it depends on the type of computational units. Local units, such as Gaussian kernels, are less vulnerable to adversarial examples.
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