This paper deals with the conditional hazard estimator of a real response where the variable is given a functional random variable (i.e it takes values in an infinite-dimensional space). Specifically, we focus on the functional index model. This approach offers a good compromise between nonparametric and parametric models. The principle aim is to prove the asymptotic normality of the proposed estimator under general conditions and in cases where the variables satisfy the strong mixing dependency. This was achieved by means of the kernel estimator method, based on a single-index structure. Finally, a simulation of our methodology shows that it is efficient for large sample sizes
International audienceLet (T, C, X) be a vector of random variables (rvs) where T, C, and X are the ...
International audienceWe present a nonparametric family of estimators for the tail index of a Weibul...
National audienceWe address the estimation of conditional quantiles when the covariate is functional...
This paper considers the problem of nonparametric estimation of the conditional hazard function for ...
In this paper we deal with nonparametric estimate of the conditional hazard function, when the covar...
In this paper, we study an kernel estimator of the conditional hazard quantile function (CHQF) of a ...
The main objective of this paper is to investigate the nonparametric estimation of the conditional d...
The estimation of hazard function becomes an important tool in statistics. Also, the single-index mo...
The main objective of this work is to estimate, semi-parametrically, the mode of a conditional densi...
In this study, we are interested in using the local linear technique to estimate the conditional haz...
In this paper, we investigate the asymptotic properties of a nonparametric conditional quantile esti...
In this paper, we consider a functional linear regression model, where both the covariate and the re...
The maximum of the conditional hazard function is a parameter of great importance in statistics, in ...
The main objective of this paper is to estimate non-parametrically the quantiles of a conditional d...
The main objective of this paper is to non-parametrically estimate the quantiles of a conditional di...
International audienceLet (T, C, X) be a vector of random variables (rvs) where T, C, and X are the ...
International audienceWe present a nonparametric family of estimators for the tail index of a Weibul...
National audienceWe address the estimation of conditional quantiles when the covariate is functional...
This paper considers the problem of nonparametric estimation of the conditional hazard function for ...
In this paper we deal with nonparametric estimate of the conditional hazard function, when the covar...
In this paper, we study an kernel estimator of the conditional hazard quantile function (CHQF) of a ...
The main objective of this paper is to investigate the nonparametric estimation of the conditional d...
The estimation of hazard function becomes an important tool in statistics. Also, the single-index mo...
The main objective of this work is to estimate, semi-parametrically, the mode of a conditional densi...
In this study, we are interested in using the local linear technique to estimate the conditional haz...
In this paper, we investigate the asymptotic properties of a nonparametric conditional quantile esti...
In this paper, we consider a functional linear regression model, where both the covariate and the re...
The maximum of the conditional hazard function is a parameter of great importance in statistics, in ...
The main objective of this paper is to estimate non-parametrically the quantiles of a conditional d...
The main objective of this paper is to non-parametrically estimate the quantiles of a conditional di...
International audienceLet (T, C, X) be a vector of random variables (rvs) where T, C, and X are the ...
International audienceWe present a nonparametric family of estimators for the tail index of a Weibul...
National audienceWe address the estimation of conditional quantiles when the covariate is functional...