Detecting outlying observations is an important step in any analysis, even when robust estimates are used. In particular, the robustified Mahalanobis distance is a natural measure of outlyingness if one focuses on ellipsoidal distributions. However, it is well known that the asymptotic chi-square approximation for the cutoff value of the Mahalanobis distance based on several robust estimates (like the minimum volume ellipsoid, the minimum covariance determinant and the S-estimators) is not adequate for detecting atypical observations in small samples from the normal distribution. In the multi-population setting and under a common principal components model, aggregated measures based on standardized empirical influence functions are used to ...
Current study employs Monte Carlo simulation in the building of a significance test to indicate the ...
The common principal components model for several groups of multivariate observations assumes equal ...
Recently robust techniques for multivariate statistical methods such as principal component analysis...
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
A collection of robust Mahalanobis distances for multivariate outlier detection is proposed, based o...
In principal components analysis, the influence function and local influence approaches have been we...
AbstractIn principal components analysis, the influence function and local influence approaches have...
The presence of outliers can very problematic in data analysis, leading statisticians to develop a w...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Over the last few years, Kernel Principal Component Analysis (KPCA) has found several applications i...
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
In principal component analysis (PCA), the principal components (PC) are linear combinations of the ...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
Principal component analysis is a widely used technique that provides an optimal lower-dimensional a...
Current study employs Monte Carlo simulation in the building of a significance test to indicate the ...
The common principal components model for several groups of multivariate observations assumes equal ...
Recently robust techniques for multivariate statistical methods such as principal component analysis...
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
A collection of robust Mahalanobis distances for multivariate outlier detection is proposed, based o...
In principal components analysis, the influence function and local influence approaches have been we...
AbstractIn principal components analysis, the influence function and local influence approaches have...
The presence of outliers can very problematic in data analysis, leading statisticians to develop a w...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Over the last few years, Kernel Principal Component Analysis (KPCA) has found several applications i...
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
In principal component analysis (PCA), the principal components (PC) are linear combinations of the ...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
Principal component analysis is a widely used technique that provides an optimal lower-dimensional a...
Current study employs Monte Carlo simulation in the building of a significance test to indicate the ...
The common principal components model for several groups of multivariate observations assumes equal ...
Recently robust techniques for multivariate statistical methods such as principal component analysis...