Motivation: Principal components analysis (PCA) is a very popular dimension reduction technique that is widely used as a first step in the analysis of high-dimensional microarray data. However, the classical approach that is based on the mean and the sample covariance matrix of the data is very sensitive to outliers. Also, classification methods based on this covariance matrix do not give good results in the presence of outlying measurements. Results: First, we propose a robust PCA (ROBPCA) method for high-dimensional data. It combines projection-pursuit ideas with robust estimation of low-dimensional data. We also pro-pose a diagnostic plot to display and classify the outliers. This ROBPCA method is applied to several bio-chemical datasets...
With the advent of high-throughput measurement techniques, scientists and engineers are starting to ...
Multivariate data are typically represented by a rectangular matrix (table) in which the rows are th...
The classi¿cation of high dimensional data, such as images, gene-expression data and spectral data, ...
Motivation: Principal components analysis (PCA) is a very popular dimension reduction technique whic...
In this paper we introduce a new method for robust principal component analysis. Classical PCA is ba...
Motivation: Principal Component Analysis (PCA) is one of the most popular dimensionality reduction t...
The high dimensionality of microarray data, the expressions of thousands of genes in a much smaller ...
Principal Component Analysis (PCA) is a very versatile technique for dimension reduction in multivar...
Data exploratory methods, such as Principal Component Analysis (PCA), cannot properly be directly ap...
Principal component Analysis (PCA) is one of the most frequently used multivariate statistical metho...
In principal component analysis (PCA), the principal components (PC) are linear combinations of the ...
Background: A key question when analyzing high throughput data is whether the information provided b...
Principal Component Analysis (PCA) has been proven to be an efficient method in dimensionality reduc...
Principal Component Analysis (PCA) is a widely used technique for reducing dimensionality of multiva...
In 1901, Karl Pearson invented Principal Component Analysis (PCA). Since then, PCA serves as a proto...
With the advent of high-throughput measurement techniques, scientists and engineers are starting to ...
Multivariate data are typically represented by a rectangular matrix (table) in which the rows are th...
The classi¿cation of high dimensional data, such as images, gene-expression data and spectral data, ...
Motivation: Principal components analysis (PCA) is a very popular dimension reduction technique whic...
In this paper we introduce a new method for robust principal component analysis. Classical PCA is ba...
Motivation: Principal Component Analysis (PCA) is one of the most popular dimensionality reduction t...
The high dimensionality of microarray data, the expressions of thousands of genes in a much smaller ...
Principal Component Analysis (PCA) is a very versatile technique for dimension reduction in multivar...
Data exploratory methods, such as Principal Component Analysis (PCA), cannot properly be directly ap...
Principal component Analysis (PCA) is one of the most frequently used multivariate statistical metho...
In principal component analysis (PCA), the principal components (PC) are linear combinations of the ...
Background: A key question when analyzing high throughput data is whether the information provided b...
Principal Component Analysis (PCA) has been proven to be an efficient method in dimensionality reduc...
Principal Component Analysis (PCA) is a widely used technique for reducing dimensionality of multiva...
In 1901, Karl Pearson invented Principal Component Analysis (PCA). Since then, PCA serves as a proto...
With the advent of high-throughput measurement techniques, scientists and engineers are starting to ...
Multivariate data are typically represented by a rectangular matrix (table) in which the rows are th...
The classi¿cation of high dimensional data, such as images, gene-expression data and spectral data, ...