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A New Black Box Attack Generating Adversarial Examples Based on Reinforcement Learning

机译:基于加强学习的新的黑匣子攻击产生对抗的例子

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Machine learning can be misled by adversarial examples, which is formed by making small changes to the original data. Nowadays, there are kinds of methods to produce adversarial examples. However, they can not apply non-differentiable models, reduce the amount of calculations, and shorten the sample generation time at the same time. In this paper, we propose a new black box attack generating adversarial examples based on reinforcement learning. By using deep Q-learning network, we can train the substitute model and generate adversarial examples at the same time. Experimental results show that this method only needs 7.7ms to produce an adversarial example, which solves the problems of low efficiency, large amount of calculation and inapplicable to non-differentiable model.
机译:通过对原始数据进行小的更改来形成机器学习可以被对抗性示例误导。 如今,有一种产生对抗性示例的方法。 但是,它们不能涂抹非可分子型号,减少计算量,并同时缩短样品生成时间。 在本文中,我们提出了一种基于加强学习的新的黑匣子攻击产生的对抗示例。 通过使用Deep Q学习网络,我们可以同时培训替代模型并产生对抗性示例。 实验结果表明,该方法仅需要7.7毫秒来产生对抗的例子,其解决了低效率,大量计算和不可差异模型的问题。

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