In this article, we present a simple multivariate outlier-detection procedure and a robust estimator for the covariance matrix, based on the use of information obtained from projections onto the directions that maximize and minimize the kurtosis coefficient of the projected data. The properties of this estimator (computational cost, bias) are analyzed and compared with those of other robust estimators described in the literature through simulation studies. The performance of the outlier-detection procedure is analyzed by applying it to a set of well-known examplesPublicad
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
Robust statistics has slowly become familiar to all practitioners. Books entirely devoted to the sub...
International audienceA large dimensional characterization of robust M-estimators of covariance (or ...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
A severe limitation for the application of robust position and scale estimators having a high breakd...
A powerful procedure for outlier detection and robust estimation of shape and location with multivar...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
The outlier detection problem and the robust covariance estimation problem are often interchangeable...
Detecting outliers for multivariate data is difficult and does not work by visual inspection. Mahala...
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
Outlier identification is important in many applications of multivariate analysis. Either because th...
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
Robust statistics has slowly become familiar to all practitioners. Books entirely devoted to the sub...
International audienceA large dimensional characterization of robust M-estimators of covariance (or ...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
A severe limitation for the application of robust position and scale estimators having a high breakd...
A powerful procedure for outlier detection and robust estimation of shape and location with multivar...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
The outlier detection problem and the robust covariance estimation problem are often interchangeable...
Detecting outliers for multivariate data is difficult and does not work by visual inspection. Mahala...
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
Outlier identification is important in many applications of multivariate analysis. Either because th...
A look at the psychology literature reveals that researchers still seem to encounter difficulties in...
Robust statistics has slowly become familiar to all practitioners. Books entirely devoted to the sub...
International audienceA large dimensional characterization of robust M-estimators of covariance (or ...