作者
Poongodi Manoharan, Ranjan Walia, Celestine Iwendi, Tariq Ahamed Ahanger, ST Suganthi, MM Kamruzzaman, Sami Bourouis, Wajdi Alhakami, Mounir Hamdi
发表日期
2023/6
期刊
Expert Systems
卷号
40
期号
5
页码范围
e13072
简介
Machine learning are vulnerable to the threats. The Intruders can utilize the malicious nature of the nodes to attack the training dataset to worsen the process and manipulate the learning and make the over all system with less efficiency and performance. The optimized poison attack procedures are already introduced to estimate the overall bad scenario, design the intrusion as bi‐level optimization and it is considered computational complexity is high and demanding, in contrary the applicability is limited such models deep neural networks. In this research papers, we have proposed, novel proposed system, poisoning attacks against the Machine learning training dataset, including the genuine data points that reduce the accuracy of the classifier in the process of training. The proposed system have 3 components of Generative Adverserial networks (GAN) generator, discriminator, and the target classifier. The …
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