Rapport de rechercheInternational audienceWe present a nonparametric family of estimators for the tail index of a Pareto-type distribution when covariate information is available. Our estimators are based on a weighted sum of the log-spacings between some selected observations. This selection is achieved through a moving window approach on the covariate domain and a random threshold on the variable of interest. Asymptotic normality is proved under mild regularity conditions and illustrated for some weight functions. Finite sample performances are presented on a real data study
We introduce a non-parametric robust and asymptotically unbiased estimator for the tail index of a c...
International audienceIn this paper, we introduce a new risk measure, the so-called Conditional Tail...
Extreme Value Theory is increasingly used in the modelling of financial time series. The non-normali...
Rapport de rechercheInternational audienceWe present a nonparametric family of estimators for the ta...
AbstractWe present a nonparametric family of estimators for the tail index of a Pareto-type distribu...
ADInternational audienceWe consider a nonparametric regression estimator of conditional tails introd...
23International audienceIn this paper, we investigate the estimation of the tail index and extreme q...
International audienceWe introduce a location-scale model for conditional heavy-tailed distributions...
It is well known that the tail behavior of a heavy-tailed distribution is controlled by a parameter ...
International audienceThis paper deals with the estimation of an extreme value index of a heavy-tail...
International audienceFor heavy-tailed distributions, the so-called tail index is an important param...
International audienceEstimation of the extreme-value index of a heavy-tailed distribution is addres...
We consider robust and nonparametric estimation of the coefficient of tail dependence in presence of...
International audienceWe present a nonparametric family of estimators for the tail index of a Weibul...
The problem. Estimation of the tail index associated to a random variable Y. Some covariate info...
We introduce a non-parametric robust and asymptotically unbiased estimator for the tail index of a c...
International audienceIn this paper, we introduce a new risk measure, the so-called Conditional Tail...
Extreme Value Theory is increasingly used in the modelling of financial time series. The non-normali...
Rapport de rechercheInternational audienceWe present a nonparametric family of estimators for the ta...
AbstractWe present a nonparametric family of estimators for the tail index of a Pareto-type distribu...
ADInternational audienceWe consider a nonparametric regression estimator of conditional tails introd...
23International audienceIn this paper, we investigate the estimation of the tail index and extreme q...
International audienceWe introduce a location-scale model for conditional heavy-tailed distributions...
It is well known that the tail behavior of a heavy-tailed distribution is controlled by a parameter ...
International audienceThis paper deals with the estimation of an extreme value index of a heavy-tail...
International audienceFor heavy-tailed distributions, the so-called tail index is an important param...
International audienceEstimation of the extreme-value index of a heavy-tailed distribution is addres...
We consider robust and nonparametric estimation of the coefficient of tail dependence in presence of...
International audienceWe present a nonparametric family of estimators for the tail index of a Weibul...
The problem. Estimation of the tail index associated to a random variable Y. Some covariate info...
We introduce a non-parametric robust and asymptotically unbiased estimator for the tail index of a c...
International audienceIn this paper, we introduce a new risk measure, the so-called Conditional Tail...
Extreme Value Theory is increasingly used in the modelling of financial time series. The non-normali...