Outlier identification is important in many applications of multivariate analysis. Either because there is some specific interest in finding anomalous observations or as a pre-processing task before the application of some multivariate method, in order to preserve the results from possible harmful effects of those observations. It is also of great interest in supervised classification (or discriminant analysis) if, when predicting group membership, one wants to have the possibility of labelling an observation as does not belong to any of the available groups. The identification of outliers in multivariate data is usually based on Mahalanobis distance. The use of robust estimates of the mean and the covariance matrix is advised in order to a...
The classical estimators of multivariate location and scatter for the normal model are the sample m...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
This paper makes comparisons of automated procedures for robust multivariate outlier detection throu...
Outlier identification is important in many applications of multivariate analysis. Either because th...
We examine relationships between the problem of robust estimation of multivariate location and shape...
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...
Multivariate outliers are usually identified by means of robust distances. A statistically principl...
Methodologies for identifying multivariate outliers are extremely important in statistical analysis....
Researchers often lack knowledge about how to deal with outliers when analyzing their data. Even mor...
Mahalanobis-type distances in which the shape matrix is derived from a consistent high-breakdown rob...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
The method proposed by Hadi (1994) for multiple outlier detection in a single group of multivariate...
Data in practice are often of high dimension and multivariate in nature. Detection of outliers has b...
Outlier identification often implies inspecting each z-transformed variable and adding a Mahalanobis...
The classical estimators of multivariate location and scatter for the normal model are the sample m...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
This paper makes comparisons of automated procedures for robust multivariate outlier detection throu...
Outlier identification is important in many applications of multivariate analysis. Either because th...
We examine relationships between the problem of robust estimation of multivariate location and shape...
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...
Multivariate outliers are usually identified by means of robust distances. A statistically principl...
Methodologies for identifying multivariate outliers are extremely important in statistical analysis....
Researchers often lack knowledge about how to deal with outliers when analyzing their data. Even mor...
Mahalanobis-type distances in which the shape matrix is derived from a consistent high-breakdown rob...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
The method proposed by Hadi (1994) for multiple outlier detection in a single group of multivariate...
Data in practice are often of high dimension and multivariate in nature. Detection of outliers has b...
Outlier identification often implies inspecting each z-transformed variable and adding a Mahalanobis...
The classical estimators of multivariate location and scatter for the normal model are the sample m...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
This paper makes comparisons of automated procedures for robust multivariate outlier detection throu...