International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods but can heavily suffer from non-Gaussian distributions and/or contaminated datasets, mainly because of the underlying Gaussian assumption that is not robust. To fill this gap, this paper presents a new robust discriminant analysis where each data point is drawn by its own arbitrary Elliptically Symmetrical (ES) distribution and its own arbitrary scale parameter. Such a model allows for possibly very heterogeneous, independent but non-identically distributed samples. After deriving a new decision rule, it is shown that maximum-likelihood parameter estimation and classification are very simple, fast and robust compared to state-of-the-art methods
International audienceStatistical pattern recognition traditionally relies on features-based represe...
Quadratic and Linear Discriminant Analysis (QDA/LDA) are the most often applied classification rules...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...
International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods bu...
International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods bu...
International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods bu...
International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods bu...
Linear and Quadratic Discriminant Analysis (LDA/QDA) are the most often applied classification rules...
This thesis compares the performance and robustness of five different varities of discriminant analy...
This thesis compares the performance and robustness of five different varities of discriminant analy...
This thesis is focused on classification methods and their robust alternatives. First, we recall the...
Quadratic and Linear Discriminant Analysis (QDA/LDA) are the most often applied classification rules...
Discriminant analysis, including linear discriminant analysis (LDA) and quadratic discriminant analy...
Quadratic and Linear Discriminant Analysis (QDA/LDA) are the most often applied classification rules...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on ...
International audienceStatistical pattern recognition traditionally relies on features-based represe...
Quadratic and Linear Discriminant Analysis (QDA/LDA) are the most often applied classification rules...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...
International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods bu...
International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods bu...
International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods bu...
International audienceLinear and Quadratic Discriminant Analysis are well-known classical methods bu...
Linear and Quadratic Discriminant Analysis (LDA/QDA) are the most often applied classification rules...
This thesis compares the performance and robustness of five different varities of discriminant analy...
This thesis compares the performance and robustness of five different varities of discriminant analy...
This thesis is focused on classification methods and their robust alternatives. First, we recall the...
Quadratic and Linear Discriminant Analysis (QDA/LDA) are the most often applied classification rules...
Discriminant analysis, including linear discriminant analysis (LDA) and quadratic discriminant analy...
Quadratic and Linear Discriminant Analysis (QDA/LDA) are the most often applied classification rules...
Linear discriminant analysis is typically carried out using Fisher’s method. This method relies on ...
International audienceStatistical pattern recognition traditionally relies on features-based represe...
Quadratic and Linear Discriminant Analysis (QDA/LDA) are the most often applied classification rules...
Robust linear discriminant analysis for multiple groups: influence and classification efficiencies C...