Fantope Projection and Selection: A near-optimal convex relaxation of sparse PCA
–Neural Information Processing Systems
We propose a novel convex relaxation of sparse principal subspace estimation based on the convex hull of rank-d projection matrices (the Fantope). The convex problem can be solved efficiently using alternating direction method of multipliers (ADMM). We establish a near-optimal convergence rate, in terms of the sparsity, ambient dimension, and sample size, for estimation of the principal subspace of a general covariance matrix without assuming the spiked covariance model. In the special case of d =1, our result implies the near-optimality of DSPCA (d'Aspremont et al. [1]) even when the solution is not rank 1. We also provide a general theoretical framework for analyzing the statistical properties of the method for arbitrary input matrices that extends the applicability and provable guarantees to a wide array of settings. We demonstrate this with an application to Kendall's tau correlation matrices and transelliptical component analysis.
Neural Information Processing Systems
Mar-13-2024, 17:52:29 GMT
- Country:
- North America > United States
- Ohio (0.04)
- Wisconsin > Dane County
- Madison (0.04)
- North America > United States
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- Research Report (0.48)
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