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Likelihood Landscapes: A Unifying Principle Behind Many Adversarial Defenses

机译:可能性景观:许多对抗性防御背后的统一原则

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Convolutional Neural Networks have been shown to be vulnerable to adversarial examples, which are known to locate in subspaces close to where normal data lies but are not naturally occurring and of low probability. In this work, we investigate the potential effect defense techniques have on the geometry of the likelihood landscape - likelihood of the input images under the trained model. We first propose a way to visualize the likelihood landscape leveraging an energy-based model interpretation of discriminative classifiers. Then we introduce a measure to quantify the flatness of the likelihood landscape. We observe that a subset of adversarial defense techniques results in a similar effect of flattening the likelihood landscape. We further explore directly regularizing towards a flat landscape for adversarial robustness.
机译:已经证明卷积神经网络容易受到对抗的例子,该示例是已知的,该示例被定位在靠近正常数据所在的子空间中但不是自然地发生并且概率低的子空间。 在这项工作中,我们调查了潜在的效果防御技术对可能性景观的几何形状 - 在训练模型下的输入图像的可能性。 我们首先提出一种可视化利用基于能量的模型解释的可能性景观的方法。 然后我们介绍一项措施来量化可能性景观的平整度。 我们观察到对抗性防御技术的一部分导致平坦化可能性景观的类似效果。 我们进一步探索直接规范,朝向对抗鲁棒性的平坦景观。

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