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Robust Subspace Iteration and Privacy-Preserving Spectral Analysis

机译:强大的子空间迭代和隐私保留频谱分析

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We discuss a new robust convergence analysis of the well-known subspace iteration algorithm for computing the dominant singular vectors of a matrix, also known as simultaneous iteration or power method. The result characterizes the convergence behavior of the algorithm when a large amount noise is introduced after each matrix-vector multiplication. While interesting in its own right, the main motivation comes from the problem of privacy-preserving spectral analysis where noise is added in order to achieve the privacy guarantee known as differential privacy. This result leads to nearly tight worst-case bounds for the problem of computing a differentially private low-rank approximation in the spectral norm. Our results extend to privacy-preserving principal component analysis. We obtain improvements for several variants of differential privacy that have been considered. The running time of our algorithm is nearly linear in the input sparsity leading to strong improvements in running time over previous work. Complementing our worst-case bounds, we show that the error dependence of our algorithm on the matrix dimension can be replaced by a tight dependence on the coherence of the matrix. This parameter is always bounded by the matrix dimension but often much smaller. Indeed, the assumption of low coherence is essential in several machine learning and signal processing applications.
机译:我们讨论了用于计算矩阵的主要奇异矢量的众所周知的子空间迭代算法的新的稳健融合分析,也称为同时迭代或功率方法。结果表征在每个矩阵矢量乘法之后引入大量噪声时算法的收敛行为。虽然自己的权利有趣,但主要的动机来自隐私保护频谱分析问题,其中添加了噪声,以实现称为差异隐私的隐私保证。该结果导致几乎紧张的最坏情况界限,用于计算光谱规范中的差别私有低秩近似的问题。我们的结果扩展到隐私保留主成分分析。我们获得了若干差异隐私的变体的改进。我们的算法的运行时间几乎是线性的输入稀疏,导致在以前的工作中运行时间的强大改进。补充我们最糟糕的界限,我们表明我们对矩阵尺寸的算法对矩阵尺寸的误差依赖性可以通过对矩阵的相干性的紧密依赖来替换。此参数始终受矩阵尺寸的界限,但通常更小。实际上,在几种机器学习和信号处理应用中,低相干性的假设是必不可少的。

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