This thesis focus on stochastic algorithms in high dimension as well as their application in robust statistics. In what follows, the expression high dimension may be used when the the size of the studied sample is large or when the variables we consider take values in high dimensional spaces (not necessarily finite). In order to analyze these kind of data, it can be interesting to consider algorithms which are fast, which do not need to store all the data, and which allow to update easily the estimates. In large sample of high dimensional data, outliers detection is often complicated. Nevertheless, these outliers, even if they are not many, can strongly disturb simple indicators like the mean and the covariance. We will focus on robust esti...
La thèse comporte deux parties distinctes. La première partie concerne des modèles pour les extrêmes...
We compare three methods used in stochastic geometry in order to investigate asymp- totic behaviour ...
18/12/2006The objective of this thesis is to apply the stochastic approximations methods to the esti...
Cette thèse porte sur l'étude d'algorithmes stochastiques en grande dimension ainsi qu'à leur applic...
Statistical learning theory aims at providing a better understanding of the statistical properties ...
This thesis in divided in two parts. The first part studies models for multivariate extremes. We giv...
This thesis in divided in two parts. The first part studies models for multivariate extremes. We giv...
International audienceThe geometric median, also called $L^1$-median, is often used in robust statis...
International audienceWith the progress of measurement apparatus and the development of automatic se...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
International audienceEstimation procedures based on recursive algorithms are interesting and powerf...
International audienceThe geometric median covariation matrix is a robust multivariate indicator of ...
Three topics are explored in this thesis: inference in high-dimensional multi-task regression, geome...
La thèse comporte deux parties distinctes. La première partie concerne des modèles pour les extrêmes...
We compare three methods used in stochastic geometry in order to investigate asymp- totic behaviour ...
18/12/2006The objective of this thesis is to apply the stochastic approximations methods to the esti...
Cette thèse porte sur l'étude d'algorithmes stochastiques en grande dimension ainsi qu'à leur applic...
Statistical learning theory aims at providing a better understanding of the statistical properties ...
This thesis in divided in two parts. The first part studies models for multivariate extremes. We giv...
This thesis in divided in two parts. The first part studies models for multivariate extremes. We giv...
International audienceThe geometric median, also called $L^1$-median, is often used in robust statis...
International audienceWith the progress of measurement apparatus and the development of automatic se...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
International audienceEstimation procedures based on recursive algorithms are interesting and powerf...
International audienceThe geometric median covariation matrix is a robust multivariate indicator of ...
Three topics are explored in this thesis: inference in high-dimensional multi-task regression, geome...
La thèse comporte deux parties distinctes. La première partie concerne des modèles pour les extrêmes...
We compare three methods used in stochastic geometry in order to investigate asymp- totic behaviour ...
18/12/2006The objective of this thesis is to apply the stochastic approximations methods to the esti...