The aim of this contribution is to derive a robust approximate conditional procedure used to eliminate nuisance parameters in regression and scale models. Unlike the approximations to exact conditional solutions based on the likelihood function and on the maximum likelihood estimator, the robust conditional approximation of marginal tail probabilities does not suffer from lack of robustness to model misspecification. To assess the performance of the proposed robust conditional procedure the results of sensitivity analyses are discussed
Let y, ,..., Yn denote independent real-valued observations, each distributed accord-ing to a densit...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
of marginal tail probabilities for a class of smooth functions with applications to Bayesian and con...
The aim of this contribution is to derive a robust approximate conditional procedure used to elimina...
The aim of this contribution is to investigate the stability of approximate conditional procedures u...
The aim of this contribution is to investigate the stability of approximate conditional procedures u...
Consiglio Nazionale delle Ricerche - Biblioteca Centrale - P.le Aldo Moro, 7 Rome / CNR - Consiglio ...
We consider robust methods of likelihood and frequentist inference for the nonlinear parameter, say ...
Conditional inference is an intrinsic part of statistical theory, though not routinely of statistica...
International audienceWe study nonparametric robust tail coefficient estimation when the variable of...
The robustness properties of conditional normal-theory procedures of inference for a location parame...
We describe some recent approaches to likelihood based inference in the presence of nuisance paramet...
We discuss some recent (nonparametric) approximations of tail probabilities of marginal distribution...
In this paper we define a robust conditional location functional without requiring any moment condit...
We consider bias-corrected estimation of the stable tail dependence function in the regression conte...
Let y, ,..., Yn denote independent real-valued observations, each distributed accord-ing to a densit...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
of marginal tail probabilities for a class of smooth functions with applications to Bayesian and con...
The aim of this contribution is to derive a robust approximate conditional procedure used to elimina...
The aim of this contribution is to investigate the stability of approximate conditional procedures u...
The aim of this contribution is to investigate the stability of approximate conditional procedures u...
Consiglio Nazionale delle Ricerche - Biblioteca Centrale - P.le Aldo Moro, 7 Rome / CNR - Consiglio ...
We consider robust methods of likelihood and frequentist inference for the nonlinear parameter, say ...
Conditional inference is an intrinsic part of statistical theory, though not routinely of statistica...
International audienceWe study nonparametric robust tail coefficient estimation when the variable of...
The robustness properties of conditional normal-theory procedures of inference for a location parame...
We describe some recent approaches to likelihood based inference in the presence of nuisance paramet...
We discuss some recent (nonparametric) approximations of tail probabilities of marginal distribution...
In this paper we define a robust conditional location functional without requiring any moment condit...
We consider bias-corrected estimation of the stable tail dependence function in the regression conte...
Let y, ,..., Yn denote independent real-valued observations, each distributed accord-ing to a densit...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
of marginal tail probabilities for a class of smooth functions with applications to Bayesian and con...