The Effect of Label-Flipping attack on Different Mobile Machine Learning Classifiers
Author
Abstract

AI technology is widely used in different fields due to the effectiveness and accurate results that have been achieved. The diversity of usage attracts many attackers to attack AI systems to reach their goals. One of the most important and powerful attacks launched against AI models is the label-flipping attack. This attack allows the attacker to compromise the integrity of the dataset, where the attacker is capable of degrading the accuracy of ML models or generating specific output that is targeted by the attacker. Therefore, this paper studies the robustness of several Machine Learning models against targeted and non-targeted label-flipping attacks against the dataset during the training phase. Also, it checks the repeatability of the results obtained in the existing literature. The results are observed and explained in the domain of the cyber security paradigm.

Year of Publication
2023
Date Published
mar
URL
https://ieeexplore.ieee.org/document/10111479
DOI
10.1109/ICBATS57792.2023.10111479
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