A Well-Tempered Landscape for Non-convex Robust Subspace Recovery

June 13, 2017 ยท Declared Dead ยท ๐Ÿ› Journal of machine learning research

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Authors Tyler Maunu, Teng Zhang, Gilad Lerman arXiv ID 1706.03896 Category cs.LG: Machine Learning Cross-listed math.OC, stat.ML Citations 67 Venue Journal of machine learning research Last Checked 3 months ago
Abstract
We present a mathematical analysis of a non-convex energy landscape for robust subspace recovery. We prove that an underlying subspace is the only stationary point and local minimizer in a specified neighborhood under a deterministic condition on a dataset. If the deterministic condition is satisfied, we further show that a geodesic gradient descent method over the Grassmannian manifold can exactly recover the underlying subspace when the method is properly initialized. Proper initialization by principal component analysis is guaranteed with a simple deterministic condition. Under slightly stronger assumptions, the gradient descent method with a piecewise constant step-size scheme achieves linear convergence. The practicality of the deterministic condition is demonstrated on some statistical models of data, and the method achieves almost state-of-the-art recovery guarantees on the Haystack Model for different regimes of sample size and ambient dimension. In particular, when the ambient dimension is fixed and the sample size is large enough, we show that our gradient method can exactly recover the underlying subspace for any fixed fraction of outliers (less than 1).
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