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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护频谱分析

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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.
机译:我们讨论了众所周知的子空间迭代算法的一种新的鲁棒收敛性分析,该算法用于计算矩阵的显性奇异矢量,也称为同时迭代或幂方法。该结果表征了在每次矩阵向量乘法之后引入大量噪声时算法的收敛行为。尽管其本身很有趣,但主要动机来自保留隐私的频谱分析问题,在该频谱分析中添加了噪声以实现称为差分隐私的隐私保证。

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