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Efficient Utilization of Adversarial Training towards Robust Machine Learners and its Analysis

机译:对健壮的机器学习者的对抗训练的有效利用及其分析

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Advancements in machine learning led to its adoption into numerous applications ranging from computer vision to security. Despite the achieved advancements in the machine learning, the vulnerabilities in those techniques are as well exploited. Adversarial samples are the samples generated by adding crafted perturbations to the normal input samples. An overview of different techniques to generate adversarial samples, defense to make classifiers robust is presented in this work. Furthermore, the adversarial learning and its effective utilization to enhance the robustness and the required constraints are experimentally provided, such as up to 97.65% accuracy even against CW attack. Though adversarial learning's effectiveness is enhanced, still it is shown in this work that it can be further exploited for vulnerabilities.
机译:机器学习的进步导致其被广泛应用于从计算机视觉到安全性的众多应用中。尽管机器学习取得了进步,但这些技术中的漏洞也得到了充分利用。对抗性样本是通过向正常输入样本中添加精心制作的扰动而生成的样本。在这项工作中概述了生成对抗性样本的不同技术,使分类器更强大的防御能力。此外,通过实验提供了对抗性学习及其有效利用,以增强鲁棒性和所需的约束,即使针对CW攻击,其准确性也高达97.65%。尽管对抗学习的有效性得到了增强,但这项工作仍然表明可以进一步利用它来防御漏洞。

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