Optimal detection of sparse principal components in high dimension

02/23/2012
by   Quentin Berthet, et al.
0

We perform a finite sample analysis of the detection levels for sparse principal components of a high-dimensional covariance matrix. Our minimax optimal test is based on a sparse eigenvalue statistic. Alas, computing this test is known to be NP-complete in general, and we describe a computationally efficient alternative test using convex relaxations. Our relaxation is also proved to detect sparse principal components at near optimal detection levels, and it performs well on simulated datasets. Moreover, using polynomial time reductions from theoretical computer science, we bring significant evidence that our results cannot be improved, thus revealing an inherent trade off between statistical and computational performance.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/03/2013

Computational Lower Bounds for Sparse PCA

In the context of sparse principal component detection, we bring evidenc...
research
12/15/2017

Sparse principal component analysis via random projections

We introduce a new method for sparse principal component analysis, based...
research
05/28/2021

Sparse Principal Components Analysis: a Tutorial

The topic of this tutorial is Least Squares Sparse Principal Components ...
research
01/31/2018

De-biased sparse PCA: Inference and testing for eigenstructure of large covariance matrices

Sparse principal component analysis (sPCA) has become one of the most wi...
research
01/23/2019

High-dimensional Interactions Detection with Sparse Principal Hessian Matrix

In statistical methods, interactions are the contributions from the prod...
research
10/08/2019

SIMPCA: A framework for rotating and sparsifying principal components

We propose an algorithmic framework for computing sparse components from...
research
05/31/2020

Estimating Principal Components under Adversarial Perturbations

Robustness is a key requirement for widespread deployment of machine lea...

Please sign up or login with your details

Forgot password? Click here to reset