Simpler Certified Radius Maximization by Propagating Covariances.

Xingjian Zhen, Rudrasis Chakraborty, Vikas Singh
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Abstract

One strategy for adversarially training a robust model is to maximize its certified radius - the neighborhood around a given training sample for which the model's prediction remains unchanged. The scheme typically involves analyzing a "smoothed" classifier where one estimates the prediction corresponding to Gaussian samples in the neighborhood of each sample in the mini-batch, accomplished in practice by Monte Carlo sampling. In this paper, we investigate the hypothesis that this sampling bottleneck can potentially be mitigated by identifying ways to directly propagate the covariance matrix of the smoothed distribution through the network. To this end, we find that other than certain adjustments to the network, propagating the covariances must also be accompanied by additional accounting that keeps track of how the distributional moments transform and interact at each stage in the network. We show how satisfying these criteria yields an algorithm for maximizing the certified radius on datasets including Cifar-10, ImageNet, and Places365 while offering runtime savings on networks with moderate depth, with a small compromise in overall accuracy. We describe the details of the key modifications that enable practical use. Via various experiments, we evaluate when our simplifications are sensible, and what the key benefits and limitations are.

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通过传播协方差简化认证半径最大化。
对抗训练稳健模型的一种策略是最大化其认证半径--即模型预测保持不变的给定训练样本周围的邻域。该方案通常涉及分析一个 "平滑 "分类器,在该分类器中,我们要估计与迷你批次中每个样本邻域内高斯样本相对应的预测值,这在实践中是通过蒙特卡罗采样完成的。在本文中,我们研究了一种假设,即通过确定直接在网络中传播平滑分布协方差矩阵的方法,有可能缓解这种采样瓶颈。为此,我们发现,除了对网络进行某些调整外,传播协方差还必须伴有额外的核算,以跟踪分布矩如何在网络的每个阶段发生转换和相互作用。我们展示了如何通过满足这些标准,在包括 Cifar-10、ImageNet 和 Places365 在内的数据集上实现认证半径最大化,同时在中等深度的网络上节省运行时间,并在总体准确性上略有妥协。我们将详细介绍实现实际应用的关键修改。通过各种实验,我们评估了简化的合理性,以及关键的优势和局限性。
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