Adversarial robustness is a critical property in a variety of modern machine learning applications. While it has been the subject of several recent theoretical studies, many important questions related to adversarial robustness are still open. In this work, we study a fundamental question regarding Bayes optimality for adversarial robustness. We provide general sufficient conditions under which the existence of a Bayes optimal classifier can be guaranteed for adversarial robustness. Our results can provide a useful tool for a subsequent study of surrogate losses in adversarial robustness and their consistency properties. This manuscript is the extended version of the paper "On the Existence of the Adversarial Bayes Classifier" published in NeurIPS. The results of the original paper did not apply to some non-strictly convex norms. Here we extend our results to all possible norms.
翻译:对抗性稳健性是现代机器各种学习应用中的一个关键属性。虽然这是最近若干理论研究的主题,但许多与对抗性稳健性有关的重要问题仍然有待解决。在这项工作中,我们研究了关于贝耶斯对对抗性稳健性最优性的基本问题。我们为巴耶斯最佳分类师的存在提供了可以保证对抗性稳健性的一般充分条件。我们的结果可以为随后研究对抗性稳健性及其一致性特性的代谢性损失提供有用的工具。这份手稿是NeurIPS出版的“关于对抗性海湾分类师的存在”的论文的扩展版。原始文件的结果不适用于某些非限制性的规范。我们在这里将我们的结果推广到所有可能的规范中。