Stochastic and Private Nonconvex Outlier-Robust PCA

March 17, 2022 ยท Declared Dead ยท ๐Ÿ› Mathematical and Scientific Machine Learning

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Authors Tyler Maunu, Chenyu Yu, Gilad Lerman arXiv ID 2203.09276 Category cs.LG: Machine Learning Cross-listed cs.CR, math.OC Citations 4 Venue Mathematical and Scientific Machine Learning Last Checked 4 months ago
Abstract
We develop theoretically guaranteed stochastic methods for outlier-robust PCA. Outlier-robust PCA seeks an underlying low-dimensional linear subspace from a dataset that is corrupted with outliers. We are able to show that our methods, which involve stochastic geodesic gradient descent over the Grassmannian manifold, converge and recover an underlying subspace in various regimes through the development of a novel convergence analysis. The main application of this method is an effective differentially private algorithm for outlier-robust PCA that uses a Gaussian noise mechanism within the stochastic gradient method. Our results emphasize the advantages of the nonconvex methods over another convex approach to solving this problem in the differentially private setting. Experiments on synthetic and stylized data verify these results.
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