A powerful procedure for outlier detection and robust estimation of shape and location with multivariate data in high dimension is proposed. The procedure searches for outliers in univariate projections on directions that are obtained both randomly, as in the Stahel-Donoho method, and by maximizing and minimizing the kurtosis coefficient of the projected data, as in the Pe˜na and Prieto method.We propose modifications of both methods to improve their computational efficiency and combine them in a procedure which is affine equivariant, has a high breakdown point, is fast to compute and can be applied when the dimension is large. Its performance is illustrated with a Monte Carlo experiment and in a real dataset.Publicad
The outlier detection problem and the robust covariance estimation problem are often interchangeable...
This article uses Projection Pursuit methods to develop a procedure for detecting outliers in a mult...
Outlier identification is important in many applications of multivariate analysis. Either because th...
A powerful procedure for outlier detection and robust estimation of shape and location with multivar...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
In this paper, we describe an overall strategy for robust estimation of multivariate location and sh...
Given a data set arising from a series of observations, an outlier is a value that deviates substant...
Using projection pursuit techniques, in this paper we propose a procedure to detect multiple outlier...
Standard statistical techniques such as least squares regression are very accurate if the underlying...
In extending univariate outlier detection methods to higher dimension, various issues arise: limited...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
Most outlier detection rules for multivariate data are based on the assumption of elliptical symmetr...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
DMS-0103698 and CCF-0430366 is gratefully acknowledged. In extending univariate outlier detection me...
In this paper we examine some of the relationships between two important optimization problems that ...
The outlier detection problem and the robust covariance estimation problem are often interchangeable...
This article uses Projection Pursuit methods to develop a procedure for detecting outliers in a mult...
Outlier identification is important in many applications of multivariate analysis. Either because th...
A powerful procedure for outlier detection and robust estimation of shape and location with multivar...
In this article, we present a simple multivariate outlier-detection procedure and a robust estimator...
In this paper, we describe an overall strategy for robust estimation of multivariate location and sh...
Given a data set arising from a series of observations, an outlier is a value that deviates substant...
Using projection pursuit techniques, in this paper we propose a procedure to detect multiple outlier...
Standard statistical techniques such as least squares regression are very accurate if the underlying...
In extending univariate outlier detection methods to higher dimension, various issues arise: limited...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
Most outlier detection rules for multivariate data are based on the assumption of elliptical symmetr...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
DMS-0103698 and CCF-0430366 is gratefully acknowledged. In extending univariate outlier detection me...
In this paper we examine some of the relationships between two important optimization problems that ...
The outlier detection problem and the robust covariance estimation problem are often interchangeable...
This article uses Projection Pursuit methods to develop a procedure for detecting outliers in a mult...
Outlier identification is important in many applications of multivariate analysis. Either because th...