Forward Search methods have been shown to be usefully employed for detecting multiple outliers in continuous multivariate data. Starting from an outlier-free subset of observations, they iteratively enlarge this good subset using Mahalanobis distances based only on the good observations. In this paper, an alternative formulation of the FS paradigm is presented, that takes a mixture of K>1 normal components as a null model. The proposal is developed according to both the graphical and the inferential approach to FS-based outlier detection. The performance of the method is shown on an illustrative example and evaluated on a simulation experiment in the multiple cluster setting
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
The forward search is a powerful general method for detecting multiple masked outliers and for deter...
The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for th...
Forward Search methods have been shown to be usefully employed for detecting multiple outliers in co...
The Forward Search (FS) consists in ordering the observations by closeness to the multivariate norma...
The Forward Search (FS) represents a useful tool for clustering data that include outlying observati...
The forward search is a powerful method for detecting unidentified subsets and masked outliers and f...
Atkinson and Riani's forward search approach has been proposed as a robust procedure for the detecti...
none1noDOI della pubblicazione contenente: 10.1007/978-3-642-13312-1The Forward Search (FS) represen...
This paper makes comparisons of automated procedures for robust multivariate outlier detection throu...
The goal of this paper is to describe a semi-automatic approach to outlier detection and clustering ...
This book is about using graphs to explore and model continuous multivariate data. Such data are oft...
This work is motivated by an application in an industrial context, where the activity of sensors is ...
In this article we extend and implement the forward search algorithm for identifying atypical subjec...
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
The forward search is a powerful general method for detecting multiple masked outliers and for deter...
The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for th...
Forward Search methods have been shown to be usefully employed for detecting multiple outliers in co...
The Forward Search (FS) consists in ordering the observations by closeness to the multivariate norma...
The Forward Search (FS) represents a useful tool for clustering data that include outlying observati...
The forward search is a powerful method for detecting unidentified subsets and masked outliers and f...
Atkinson and Riani's forward search approach has been proposed as a robust procedure for the detecti...
none1noDOI della pubblicazione contenente: 10.1007/978-3-642-13312-1The Forward Search (FS) represen...
This paper makes comparisons of automated procedures for robust multivariate outlier detection throu...
The goal of this paper is to describe a semi-automatic approach to outlier detection and clustering ...
This book is about using graphs to explore and model continuous multivariate data. Such data are oft...
This work is motivated by an application in an industrial context, where the activity of sensors is ...
In this article we extend and implement the forward search algorithm for identifying atypical subjec...
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
The forward search is a powerful general method for detecting multiple masked outliers and for deter...
The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for th...