In recent years, sparse principal component analysis has emerged as an extremely popular dimension reduction technique for high-dimensional data. The theoretical challenge, in the simplest case, is to estimate the leading eigenvector of a population covariance matrix under the assumption that this eigenvector is sparse. An impressive range of estimators have been proposed; some of these are fast to compute, while others are known to achieve the minimax optimal rate over certain Gaussian or sub-Gaussian classes. In this paper, we show that, under a widely-believed assumption from computational complexity theory, there is a fundamental trade-off between statistical and computational performance in this problem. More precisely, working with ne...
We study sparse principal components analysis in high dimensions, where p (the number of variables) ...
We provide statistical and computational analysis of sparse Principal Component Analysis (PCA) in hi...
We study the problem of estimating the leading eigenvectors of a high-dimensional populatio...
In recent years, sparse principal component analysis has emerged as an extremely popular dimension r...
In recent years, sparse principal component analysis has emerged as an extremely popular dimension r...
In recent years, Sparse Principal Component Analysis has emerged as an extremely popular dimension r...
In recent years, Sparse Principal Component Analysis has emerged as an extremely popular dimension r...
Sparse Principal Component Analysis (PCA) methods are efficient tools to reduce the dimension (or nu...
Sparse Principal Component Analysis (PCA) methods are efficient tools to reduce the dimension (or nu...
. Principal component analysis (PCA) is a classical dimension reduction method which projects data o...
. Principal component analysis (PCA) is a classical dimension reduction method which projects data o...
Estimating the leading principal components of data, assuming they are sparse, is a central task in ...
In sparse principal component analysis we are given noisy observations of a low-rank matrix of di-me...
In sparse principal component analysis we are given noisy observations of a low-rank matrix of di-me...
Sparse Principal Component Analysis (PCA) methods are efficient tools to reduce the dimension (or nu...
We study sparse principal components analysis in high dimensions, where p (the number of variables) ...
We provide statistical and computational analysis of sparse Principal Component Analysis (PCA) in hi...
We study the problem of estimating the leading eigenvectors of a high-dimensional populatio...
In recent years, sparse principal component analysis has emerged as an extremely popular dimension r...
In recent years, sparse principal component analysis has emerged as an extremely popular dimension r...
In recent years, Sparse Principal Component Analysis has emerged as an extremely popular dimension r...
In recent years, Sparse Principal Component Analysis has emerged as an extremely popular dimension r...
Sparse Principal Component Analysis (PCA) methods are efficient tools to reduce the dimension (or nu...
Sparse Principal Component Analysis (PCA) methods are efficient tools to reduce the dimension (or nu...
. Principal component analysis (PCA) is a classical dimension reduction method which projects data o...
. Principal component analysis (PCA) is a classical dimension reduction method which projects data o...
Estimating the leading principal components of data, assuming they are sparse, is a central task in ...
In sparse principal component analysis we are given noisy observations of a low-rank matrix of di-me...
In sparse principal component analysis we are given noisy observations of a low-rank matrix of di-me...
Sparse Principal Component Analysis (PCA) methods are efficient tools to reduce the dimension (or nu...
We study sparse principal components analysis in high dimensions, where p (the number of variables) ...
We provide statistical and computational analysis of sparse Principal Component Analysis (PCA) in hi...
We study the problem of estimating the leading eigenvectors of a high-dimensional populatio...