Understanding the Energy vs. Adversarial Robustness Trade-Off in Deep Neural Networks

Kyungmi Lee, A. Chandrakasan
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Abstract

Adversarial examples, which are crafted by adding small inconspicuous perturbations to typical inputs in order to fool the prediction of a deep neural network (DNN), can pose a threat to security-critical applications, and robustness against adversarial examples is becoming an important factor for designing a DNN. In this work, we first examine the methodology for evaluating adversarial robustness that uses the first-order attack methods, and analyze three cases when this evaluation methodology overestimates robustness: 1) numerical saturation of cross-entropy loss, 2) non-differentiable functions in DNNs, and 3) ineffective initialization of the attack methods. For each case, we propose compensation methods that can be easily combined with the existing attack methods, thus provide a more precise evaluation methodology for robustness. Second, we benchmark the relationship between adversarial robustness and inference-time energy at an embedded hardware platform using our proposed evaluation methodology, and demonstrate that this relationship can be obscured by the three cases behind overestimation. Overall, our work shows that the robustness-energy trade-off has differences from the conventional accuracy-energy trade-off, and highlights importance of the precise evaluation methodology for robustness.
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理解深度神经网络中能量与对抗鲁棒性的权衡
为了欺骗深度神经网络(DNN)的预测,对抗性示例通过在典型输入中添加小的不明显扰动来制作,可能对安全关键应用构成威胁,并且对对抗性示例的鲁棒性正在成为设计DNN的重要因素。在这项工作中,我们首先研究了使用一阶攻击方法评估对抗鲁棒性的方法,并分析了这种评估方法高估鲁棒性的三种情况:1)交叉熵损失的数值饱和,2)dnn中的不可微函数,以及3)攻击方法的无效初始化。针对每种情况,我们提出了可以与现有攻击方法轻松结合的补偿方法,从而提供了更精确的鲁棒性评估方法。其次,我们使用我们提出的评估方法对嵌入式硬件平台上的对抗鲁棒性和推理时间能量之间的关系进行基准测试,并证明这种关系可能被高估背后的三种情况所掩盖。总的来说,我们的工作表明鲁棒性-能量权衡与传统的精度-能量权衡有区别,并强调了鲁棒性精确评估方法的重要性。
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