6 pages, 3 figuresWe study optimal estimation for sparse principal component analysis when the number of non-zero elements is small but on the same order as the dimension of the data. We employ approximate message passing (AMP) algorithm and its state evolution to analyze what is the information theoretically minimal mean-squared error and the one achieved by AMP in the limit of large sizes. For a special case of rank one and large enough density of non-zeros Deshpande and Montanari [1] proved that AMP is asymptotically optimal. We show that both for low density and for large rank the problem undergoes a series of phase transitions suggesting existence of a region of parameters where estimation is information theoretically possible, but AMP...
Sparse Principal Component Analysis (PCA) methods are efficient tools to reduce the dimension (or nu...
We introduce a novel algorithm that computes the k-sparse principal component of a positive semidefi...
In recent years, sparse principal component analysis has emerged as an extremely popular dimension r...
6 pages, 3 figuresWe study optimal estimation for sparse principal component analysis when the numbe...
6 pages, 3 figuresWe study optimal estimation for sparse principal component analysis when the numbe...
Abstract—Sparse Principal Component Analysis (PCA) is a dimensionality reduction technique wherein o...
Abstract—Sparse Principal Component Analysis (PCA) is a dimensionality reduction technique wherein o...
Principal component analysis (PCA) aims at estimating the direction of maximal variability of a high...
How do statistical dependencies in measurement noise influence high-dimensional inference? To answer...
The Sparse Principal Component Analysis (Sparse PCA) problem is a variant of the classical PCA probl...
Estimating the leading principal components of data, assuming they are sparse, is a central task in ...
We provide statistical and computational analysis of sparse Principal Component Analysis (PCA) in hi...
In recent years, Sparse Principal Component Analysis has emerged as an extremely popular dimension r...
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 introduce a novel algorithm that computes the k-sparse principal component of a positive semidefi...
In recent years, sparse principal component analysis has emerged as an extremely popular dimension r...
6 pages, 3 figuresWe study optimal estimation for sparse principal component analysis when the numbe...
6 pages, 3 figuresWe study optimal estimation for sparse principal component analysis when the numbe...
Abstract—Sparse Principal Component Analysis (PCA) is a dimensionality reduction technique wherein o...
Abstract—Sparse Principal Component Analysis (PCA) is a dimensionality reduction technique wherein o...
Principal component analysis (PCA) aims at estimating the direction of maximal variability of a high...
How do statistical dependencies in measurement noise influence high-dimensional inference? To answer...
The Sparse Principal Component Analysis (Sparse PCA) problem is a variant of the classical PCA probl...
Estimating the leading principal components of data, assuming they are sparse, is a central task in ...
We provide statistical and computational analysis of sparse Principal Component Analysis (PCA) in hi...
In recent years, Sparse Principal Component Analysis has emerged as an extremely popular dimension r...
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 introduce a novel algorithm that computes the k-sparse principal component of a positive semidefi...
In recent years, sparse principal component analysis has emerged as an extremely popular dimension r...