Tighten after Relax: Minimax-Optimal Sparse PCA in Polynomial Time
–Neural Information Processing Systems
We provide statistical and computational analysis of sparse Principal Component Analysis (PCA) in high dimensions. The sparse PCA problem is highly nonconvex in nature. Consequently, though its global solution attains the optimal statistical rate of convergence, such solution is computationally intractable to obtain. Meanwhile, although its convex relaxations are tractable to compute, they yield estimators with suboptimal statistical rates of convergence.
Neural Information Processing Systems
Sep-30-2025, 08:58:31 GMT
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