We present the FSDA (Forward Search for Data Analysis) toolbox, a new software library that extends MATLAB and its Statistics Toolbox to support a robust and efficient analysis of complex datasets, affected by different sources of heterogeneity. As the name of the library indicates, the project was born around the Forward Search approach, but it has evolved to include the main traditional robust multivariate and regression techniques, including LMS, LTS, MCD, MVE, MM and S estimation. To address problems where data deviate from typical model assumptions, tools are available for robust data transformation and robust model selection. When different views of the data are available, e.g. a scatterplot of units and a plot of distances of such un...
In this article we implement a forward search algorithm for identifying atypical subjects/observatio...
Atkinson and Riani's forward search approach has been proposed as a robust procedure for the detecti...
Forward Search methods have been shown to be usefully employed for detecting multiple outliers in co...
The FSDA (Flexible Statistics for Data Analysis) toolbox is a software library that extends MATLAB a...
The identification of atypical observations and the immunization of data analysis against both outli...
The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for th...
The forward search is a powerful general method for detecting multiple masked outliers and for deter...
Robustness of Linear Mixed Models (LMM) with random effects is investigated with the forward search ...
This contribution is about the analysis of international trade data through a robust approach for th...
We have developed a new user-friendly graphical interface for robust calibration with a collection o...
One of the biggest challenges of the statisticians is to be able to effectively present and communic...
The forward search provides a series of robust parameter estimates based on increasing numbers of ob...
This book is about using graphs to explore and model continuous multivariate data. Such data are oft...
The forward search provides data-driven flexible trimming of a C-p statistic for the choice of regre...
We extend the capabilities of MixSim, a framework which is useful for evaluating the performance of ...
In this article we implement a forward search algorithm for identifying atypical subjects/observatio...
Atkinson and Riani's forward search approach has been proposed as a robust procedure for the detecti...
Forward Search methods have been shown to be usefully employed for detecting multiple outliers in co...
The FSDA (Flexible Statistics for Data Analysis) toolbox is a software library that extends MATLAB a...
The identification of atypical observations and the immunization of data analysis against both outli...
The Forward Search is a powerful general method, incorporating flexible data-driven trimming, for th...
The forward search is a powerful general method for detecting multiple masked outliers and for deter...
Robustness of Linear Mixed Models (LMM) with random effects is investigated with the forward search ...
This contribution is about the analysis of international trade data through a robust approach for th...
We have developed a new user-friendly graphical interface for robust calibration with a collection o...
One of the biggest challenges of the statisticians is to be able to effectively present and communic...
The forward search provides a series of robust parameter estimates based on increasing numbers of ob...
This book is about using graphs to explore and model continuous multivariate data. Such data are oft...
The forward search provides data-driven flexible trimming of a C-p statistic for the choice of regre...
We extend the capabilities of MixSim, a framework which is useful for evaluating the performance of ...
In this article we implement a forward search algorithm for identifying atypical subjects/observatio...
Atkinson and Riani's forward search approach has been proposed as a robust procedure for the detecti...
Forward Search methods have been shown to be usefully employed for detecting multiple outliers in co...