We use the forward search to provide robust Mahalanobis distances to detect the presence of outliers in a sample of multivariate normal data. Theoretical results on order statistics and on estimation in truncated samples provide the distribution of our test statistic. We also introduce several new robust distances with associated distributional results. Comparisons of our procedure with tests using other robust Mahalanobis distances show the good size and high power of our procedure. We also provide a unification of results on correction factors for estimation from truncated samples
Using the likelihood-based Wilks’ method to identify multiple outliers in multivariate datasets can ...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
We use the forward search to provide robust Mahalanobis distances to detect the presence of outlier...
While methods of detecting outliers is frequently implemented by statisticians when analyzing univar...
A collection of robust Mahalanobis distances for multivariate outlier detection is proposed, based o...
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...
This book is about using graphs to explore and model continuous multivariate data. Such data are oft...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
Detecting outliers for multivariate data is difficult and does not work by visual inspection. Mahala...
This paper makes comparisons of automated procedures for robust multivariate outlier detection throu...
Multivariate outliers are usually identified by means of robust distances. A statistically principl...
Using the likelihood-based Wilks’ method to identify multiple outliers in multivariate datasets can ...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
We use the forward search to provide robust Mahalanobis distances to detect the presence of outlier...
While methods of detecting outliers is frequently implemented by statisticians when analyzing univar...
A collection of robust Mahalanobis distances for multivariate outlier detection is proposed, based o...
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...
This book is about using graphs to explore and model continuous multivariate data. Such data are oft...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
Detecting outliers for multivariate data is difficult and does not work by visual inspection. Mahala...
This paper makes comparisons of automated procedures for robust multivariate outlier detection throu...
Multivariate outliers are usually identified by means of robust distances. A statistically principl...
Using the likelihood-based Wilks’ method to identify multiple outliers in multivariate datasets can ...
In multivariate data, outliers are difficult to detect especially when the dimension of the data inc...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...