A new nonparametric estimator for the conditional hazard rate is proposed, which is defined as the ratio of local linear estimators for the conditional density and survivor function. The resulting hazard rate estimator is shown to be pointwise consistent and asymptotically normally distributed under appropriate conditions. Furthermore, plug-in bandwidths based on normal and uniform reference distributions and minimizing the asymptotic mean squared error are derived. In terms of the mean squared error the new estimator is highly competitive in comparison to existing estimators for the conditional hazard rate. Moreover, its smoothing parameters are relatively robust to misspecification of the reference distributions, which facilitates bandwid...
In this paper, we define the Weibull kernel and use it to nonparametric estimation of the proba-bili...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
The estimation of hazard function becomes an important tool in statistics. Also, the single-index mo...
A new nonparametric estimator for the conditional hazard rate is proposed, which is defined as the r...
A new nonparametric estimator for the conditional hazard rate is proposed, which is defined as the r...
is proposed to estimate the covariate effect in a nonparametric proportional hazards model, λ(t|x) ...
In survival analysis, the relationship between a survival time and a covariate is conveniently model...
The Reversed Hazard Rate (RHR) function is an important measure as a tool in the analysis of the rel...
A smoothed bootstrap method is presented for the purpose of bandwidth selection in nonparametric haz...
Motivated by the advantages the local linear fitting method provides for estimation of den-sities ne...
A completely nonparametric method for the estimation of mixture cure models is proposed. A nonparame...
In this article we study the method of nonparametric regression based on a transformation model, und...
In this paper we investigate the asymptotic mean square error and the rates of convergence of the es...
As an alternative to the local partial likelihood method of Tibshirani and Hastie and Fan, Gijbels, ...
Abstract. The nonparametric approach to estimate hazard rates for lifetime data is flexible, model-f...
In this paper, we define the Weibull kernel and use it to nonparametric estimation of the proba-bili...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
The estimation of hazard function becomes an important tool in statistics. Also, the single-index mo...
A new nonparametric estimator for the conditional hazard rate is proposed, which is defined as the r...
A new nonparametric estimator for the conditional hazard rate is proposed, which is defined as the r...
is proposed to estimate the covariate effect in a nonparametric proportional hazards model, λ(t|x) ...
In survival analysis, the relationship between a survival time and a covariate is conveniently model...
The Reversed Hazard Rate (RHR) function is an important measure as a tool in the analysis of the rel...
A smoothed bootstrap method is presented for the purpose of bandwidth selection in nonparametric haz...
Motivated by the advantages the local linear fitting method provides for estimation of den-sities ne...
A completely nonparametric method for the estimation of mixture cure models is proposed. A nonparame...
In this article we study the method of nonparametric regression based on a transformation model, und...
In this paper we investigate the asymptotic mean square error and the rates of convergence of the es...
As an alternative to the local partial likelihood method of Tibshirani and Hastie and Fan, Gijbels, ...
Abstract. The nonparametric approach to estimate hazard rates for lifetime data is flexible, model-f...
In this paper, we define the Weibull kernel and use it to nonparametric estimation of the proba-bili...
The parametrically guided kernel smoother is a promising nonparametric estimation approach that aims...
The estimation of hazard function becomes an important tool in statistics. Also, the single-index mo...