The sole purpose of this paper is to establish asymptotic normality of the usual kernel estimate of the marginal probability density function of a strictly stationary sequence of associated random variables. In much of the discussions and derivations, the term association is used to include both positively and negatively associated random variables. The method of proof follows the familiar pattern for dependent situations of using large and small blocks. A result made available in the literature recently is instrumental in the derivations.Association Positively (negatively) associated sequences of random variables Kernel estimate Asymptotic normality
In some long-term studies, a series of dependent and possibly truncated lifetimes may be observed. S...
Let {X n, n ≥ 1} be a strictly stationary sequence of associated random variables defined on a...
In this paper, we study a smooth estimator of the conditional hazard rate function in the censorship...
Let ZN, N≥1 denote the integer lattice points in the N-dimensional Euclidean space and be an Rd-valu...
In this paper, we study the kernel methods for density estimation of stationary samples under genera...
We consider the general modern notion of the so-called associated kernels for smoothing density func...
In this paper, we consider the kernel estimator of the p-dimensional marginal distribution function...
The book concerns the notion of association in probability and statistics. Association and some othe...
Let be a set of observations from a stationary jointly associated process and [theta](x) be the cond...
Let {Xn, n≥1} be a stationary sequence of associated random variables and Un be a U-statistic ...
Kernel type density estimators are studied for random fields. It is proved that the estimators are a...
AbstractLet {Xi,Yi}i=1∞ be a set of observations from a stationary jointly associated process and θ(...
We propose kernel type estimators for the density function of non negative random variables, where t...
Let fXn; n 1g be a strictly stationary sequence of negatively associated ran-dom variables, with co...
The main goal of this paper is to study the asymptotic normality of the estimate of the Conditional ...
In some long-term studies, a series of dependent and possibly truncated lifetimes may be observed. S...
Let {X n, n ≥ 1} be a strictly stationary sequence of associated random variables defined on a...
In this paper, we study a smooth estimator of the conditional hazard rate function in the censorship...
Let ZN, N≥1 denote the integer lattice points in the N-dimensional Euclidean space and be an Rd-valu...
In this paper, we study the kernel methods for density estimation of stationary samples under genera...
We consider the general modern notion of the so-called associated kernels for smoothing density func...
In this paper, we consider the kernel estimator of the p-dimensional marginal distribution function...
The book concerns the notion of association in probability and statistics. Association and some othe...
Let be a set of observations from a stationary jointly associated process and [theta](x) be the cond...
Let {Xn, n≥1} be a stationary sequence of associated random variables and Un be a U-statistic ...
Kernel type density estimators are studied for random fields. It is proved that the estimators are a...
AbstractLet {Xi,Yi}i=1∞ be a set of observations from a stationary jointly associated process and θ(...
We propose kernel type estimators for the density function of non negative random variables, where t...
Let fXn; n 1g be a strictly stationary sequence of negatively associated ran-dom variables, with co...
The main goal of this paper is to study the asymptotic normality of the estimate of the Conditional ...
In some long-term studies, a series of dependent and possibly truncated lifetimes may be observed. S...
Let {X n, n ≥ 1} be a strictly stationary sequence of associated random variables defined on a...
In this paper, we study a smooth estimator of the conditional hazard rate function in the censorship...