Recently robust techniques for multivariate statistical methods such as principal component analysis, canonical correlation analysis and factor analysis have been con- structed. In contrast to the classical approach, these robust techniques are able to resist the effect of outliers. However, there does not yet exist a graphical tool to identify in a comprehensive way the data points that do not obey the model assumptions. Our goal is to construct such graphics based on empirical influence functions. These graphics not only detect the influential points but also classify the observations according to their robust distances. In this way the observations are divided in four different classes which are regular points, non-outlying influential p...
Outlier identification is important in many applications of multivariate analysis. Either because th...
High leverage collinearity influential observations are those high leverage points that change the m...
This article extends the analysis of multivariate transformations to linear and quadratic discrimina...
We propose a diagnostic method that can be used whenever multiple outliers are identified by robust...
This text presents methods that are robust to the assumption of a multivariate normal distribution o...
Abstract. When applying a statistical method in practice it often occurs that some observations devi...
Many data sets, especially medical data, consist of a two-dimensional table Xnxp containing p variab...
Rather than attempt an encyclopedic survey of nonparametric and robust multivariate methods, we limi...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Outlier robust diagnostics (graphically) using Robustly Studentized Robust Residuals (RSRR) and Part...
Beran (2003) defined statistics as the study of algorithms for data analysis. In many situations se...
This paper presents a method for detecting multivariate outliers which might be distorting theı esti...
Outlier robust diagnostics (graphically) using Robustly Studentized Robust Residuals (RSRR) and Part...
In this paper, we describe an overall strategy for robust estimation of multivariate location and sh...
Our aim is to construct a factor analysis method that can resist the effect of outliers. For this we...
Outlier identification is important in many applications of multivariate analysis. Either because th...
High leverage collinearity influential observations are those high leverage points that change the m...
This article extends the analysis of multivariate transformations to linear and quadratic discrimina...
We propose a diagnostic method that can be used whenever multiple outliers are identified by robust...
This text presents methods that are robust to the assumption of a multivariate normal distribution o...
Abstract. When applying a statistical method in practice it often occurs that some observations devi...
Many data sets, especially medical data, consist of a two-dimensional table Xnxp containing p variab...
Rather than attempt an encyclopedic survey of nonparametric and robust multivariate methods, we limi...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Outlier robust diagnostics (graphically) using Robustly Studentized Robust Residuals (RSRR) and Part...
Beran (2003) defined statistics as the study of algorithms for data analysis. In many situations se...
This paper presents a method for detecting multivariate outliers which might be distorting theı esti...
Outlier robust diagnostics (graphically) using Robustly Studentized Robust Residuals (RSRR) and Part...
In this paper, we describe an overall strategy for robust estimation of multivariate location and sh...
Our aim is to construct a factor analysis method that can resist the effect of outliers. For this we...
Outlier identification is important in many applications of multivariate analysis. Either because th...
High leverage collinearity influential observations are those high leverage points that change the m...
This article extends the analysis of multivariate transformations to linear and quadratic discrimina...