The maximum of the conditional hazard function is a parameter of great importance in statistics, in particular in seismicity studies, because it constitutes the maximum risk of occurrence of an earthquake in a given interval of time. Using the kernel nonparametric estimates based on convolution kernel techniques of the rst derivative of the conditional hazard function, we establish the asymptotic behavior of a hazard rate in the presence of a functional explanatory variable and asymptotic normality of the maximum value in the case of a strong mixing process.Keywords: Almost complete convergence; Asymptotic normality; Conditional hazard function; Functional data; Nonparametric estimation; Small ball probability; Strong mixing processe
AbstractWe consider the estimation of a regression functional where the explanatory variables take v...
In this note, we investigate the kernel-type estimator of the nonparametric expectile regression mod...
The aim of this paper is to estimate nonparametrically the conditional quantile density function. A ...
The maximum of the conditional hazard function is a parameter of great importance in seismicity stud...
In the literature much work has been devoted to the non-parametric estimation of survival analysis f...
In this paper we deal with nonparametric estimate of the conditional hazard function, when the covar...
In this study, we are interested in using the local linear technique to estimate the conditional haz...
In this paper we investigate the asymptotic mean square error and the rates of convergence of the es...
This paper considers the problem of nonparametric estimation of the conditional hazard function for ...
This paper deals with the conditional hazard estimator of a real response where the variable is give...
The estimation of hazard function becomes an important tool in statistics. Also, the single-index mo...
In this paper we consider a competing risks model including covariates in which the observations are...
AbstractWe investigate nonparametric curve estimation (including density, distribution, hazard, cond...
The main objective of this paper is to investigate the nonparametric estimation of the conditional d...
In this work, we investigate the asymptotic properties of a nonparametric mode of a conditional dens...
AbstractWe consider the estimation of a regression functional where the explanatory variables take v...
In this note, we investigate the kernel-type estimator of the nonparametric expectile regression mod...
The aim of this paper is to estimate nonparametrically the conditional quantile density function. A ...
The maximum of the conditional hazard function is a parameter of great importance in seismicity stud...
In the literature much work has been devoted to the non-parametric estimation of survival analysis f...
In this paper we deal with nonparametric estimate of the conditional hazard function, when the covar...
In this study, we are interested in using the local linear technique to estimate the conditional haz...
In this paper we investigate the asymptotic mean square error and the rates of convergence of the es...
This paper considers the problem of nonparametric estimation of the conditional hazard function for ...
This paper deals with the conditional hazard estimator of a real response where the variable is give...
The estimation of hazard function becomes an important tool in statistics. Also, the single-index mo...
In this paper we consider a competing risks model including covariates in which the observations are...
AbstractWe investigate nonparametric curve estimation (including density, distribution, hazard, cond...
The main objective of this paper is to investigate the nonparametric estimation of the conditional d...
In this work, we investigate the asymptotic properties of a nonparametric mode of a conditional dens...
AbstractWe consider the estimation of a regression functional where the explanatory variables take v...
In this note, we investigate the kernel-type estimator of the nonparametric expectile regression mod...
The aim of this paper is to estimate nonparametrically the conditional quantile density function. A ...