Theoretical Guarantees for Sparse Principal Component Analysis based on the Elastic Net

基于弹性网络的稀疏主成分分析的理论保证

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Abstract

Sparse principal component analysis (SPCA) is widely used for dimensionality reduction and feature extraction in high-dimensional data analysis. Despite many methodological and theoretical developments in the past two decades, the theoretical guarantees of the popular SPCA algorithm proposed by [1] based on the elastic net are still unknown. This paper aims to address this critical theoretical gap. We first revisit the SPCA algorithm of [1] and present our implementation. We also study a computationally more efficient variant of the SPCA algorithm in [1] that can be considered as the limiting case of SPCA. We provide the guarantees of convergence to a stationary point for both algorithms and prove that, under a sparse spiked covariance model, both algorithms can recover the principal subspace consistently under mild regularity conditions. We show that their estimation error bounds match the best available bounds of existing works or the minimax rates up to some logarithmic factors. Moreover, we demonstrate the competitive numerical performance of both algorithms in numerical experiments.

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