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On the Worst-Case Approximability of Sparse PCA

Abstract

It is well known that Sparse PCA (Sparse Principal Component Analysis) is NP-hard to solve exactly on worst-case instances. What is the complexity of solving Sparse PCA approximately? Our contributions include: 1) a simple and efficient algorithm that achieves an n1/3n^{-1/3}-approximation; 2) NP-hardness of approximation to within (1ε)(1-\varepsilon), for some small constant ε>0\varepsilon > 0; 3) SSE-hardness of approximation to within any constant factor; and 4) an expexp(Ω(loglogn))\exp\exp\left(\Omega\left(\sqrt{\log \log n}\right)\right) ("quasi-quasi-polynomial") gap for the standard semidefinite program.

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