2023
DOI: 10.1007/s44206-023-00039-1
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Ethics of Adversarial Machine Learning and Data Poisoning

Abstract: This paper investigates the ethical implications of using adversarial machine learning for the purpose of obfuscation. We suggest that adversarial attacks can be justified by privacy considerations but that they can also cause collateral damage. To clarify the matter, we employ two use cases-facial recognition and medical machine learningto evaluate the collateral damage counterarguments to privacy-induced adversarial attacks. We conclude that obfuscation by data poisoning can be justified in facial recognitio… Show more

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Cited by 4 publications
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