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Estimating Principal Components under Adversarial Perturbations

机译:估算逆势扰动下的主要成分

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Robustness is a key requirement for widespread deployment of machine learning algorithms, and has received much attention in both statistics and computer science. We study a natural model of robustness for high-dimensional statistical estimation problems that we call the {em adversarial perturbation model}. An adversary can perturb {em every} sample arbitrarily up to a specified magnitude $delta$ measured in some $ell_q$ norm, say $ell_infty$. Our model is motivated by emerging paradigms such as {em low precision machine learning} and {em adversarial training}. We study the classical problem of estimating the top-$r$ principal subspace of the Gaussian covariance matrix in high dimensions, under the adversarial perturbation model. We design a computationally efficient algorithm that given corrupted data, recovers an estimate of the top-$r$ principal subspace with error that depends on a robustness parameter $kappa$ that we identify. This parameter corresponds to the $q o 2$ operator norm of the projector onto the principal subspace, and generalizes well-studied analytic notions of sparsity. Additionally, in the absence of corruptions, our algorithmic guarantees recover existing bounds for problems such as sparse PCA and its higher rank analogs. We also prove that the above dependence on the parameter $kappa$ is almost optimal asymptotically, not just in a minimax sense, but remarkably for {em every} instance of the problem. This {em instance-optimal} guarantee shows that the $q o 2$ operator norm of the subspace essentially {em characterizes} the estimation error under adversarial perturbations.
机译:鲁棒性是对机器学习算法广泛部署的关键要求,并在统计和计算机科学中获得了很多关注。我们研究了我们称之为{ em对冲扰动模型}的高维统计估算问题的自然模型。对手可以在某些$ ell_q $ norm中任意达到指定的幅度$ delta $ overmed { em}样本。$ ell_ idty $。我们的模型是通过新兴范式的动机,例如{ EM低精度机器学习}和{ EM普发的培训}。我们研究了在对抗扰动模型中估算高斯协方差矩阵的高斯协方差矩阵的顶级载体的古典问题。我们设计一种计算上有效的算法,给出了数据损坏的数据,恢复了顶级$ R $主管子空间的估计,其错误取决于我们识别的鲁棒性参数$ kappa $。该参数对应于投影机的$ Q 到2美元运算符范数在主管子空间上,并概括了稀疏的分析迹象。此外,在没有损坏的情况下,我们的算法保证恢复现有的界限,例如稀疏PCA和其较高的秩类似物。我们还证明,上述依赖于参数$ kappa $几乎是渐近的,而不仅仅是在最少的意义上,而且非常适合{ em}的问题。此{ em实例 - 最佳}保证显示,子空间的$ q to 2 $ 2 $ 2 $ oper rang基本上{ em表征}对抗扰动下的估计误差。

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