International audienceBoth clustering and outlier detection tasks have a wide range of applications in signal processing. We focus here on the case where the data is corrupted with outliers and samples are relatively small. We study approximations of the distribution of the Mahalanobis distance when using robust estimators for the mean and the scatter matrix. We develop clustering and outlier rejection methods in the context of robust mixture modelling. We leverage on robust clustering and parameter estimations on a portion of the data, and we perform outlier detection on the rest of the data. We illustrate the importance of our method with synthetic simulations where we compare the theoretical asymptotic distribution and an approximated di...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
We propose a robust heteroscedastic model-based clustering method based on snipping. An observation ...
Mahalanobis-type distances in which the shape matrix is derived from a consistent high-breakdown rob...
International audienceBoth clustering and outlier detection tasks have a wide range of applications ...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
Outlier identification is important in many applications of multivariate analysis. Either because th...
We propose a model-based clustering procedure where each component can take into account cluster-spe...
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...
In this paper we examine some of the relationships between two important optimization problems that ...
Robust methods are needed to fit regression lines when outliers are present. In a clustering framewo...
This dissertation broadly focuses on developing robust machine learning and optimization approaches ...
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
We propose a robust heteroscedastic model-based clustering method based on snipping. An observation ...
Mahalanobis-type distances in which the shape matrix is derived from a consistent high-breakdown rob...
International audienceBoth clustering and outlier detection tasks have a wide range of applications ...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
A collection of methods for multivariate outlier detection based on a robust Mahalanobis distance is...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
Outlier identification is important in many applications of multivariate analysis. Either because th...
We propose a model-based clustering procedure where each component can take into account cluster-spe...
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...
In this paper we examine some of the relationships between two important optimization problems that ...
Robust methods are needed to fit regression lines when outliers are present. In a clustering framewo...
This dissertation broadly focuses on developing robust machine learning and optimization approaches ...
Summary. We use the forward search to provide robust Mahalanobis distances to detect the presence of...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
We propose a robust heteroscedastic model-based clustering method based on snipping. An observation ...
Mahalanobis-type distances in which the shape matrix is derived from a consistent high-breakdown rob...