The aim of this thesis is to provide two extensions to the theory of nonparametric kernel density estimation that increase the scope of the technique. The basic ideas of kernel density estimation are not new, having been proposed by Rosenblatt [20] and extended by Parzen [17]. The objective is that for a given set of data, estimates of functions of the distribution of the data such as probability densities are derived without recourse to rigid parametric assumptions and allow the data themselves to be more expressive in the statistical outcome. Thus kernel estimation has captured the imagination of statisticians searching for more flexibility and eager to utilise the computing revolution. The abundance of data and computing power ha...
In this paper we propose a new nonparametric kernel based estimator for a density function $f$ which...
The estimation of density based on positive dependent samples has been studied recently with consis...
This paper studies the estimation of the conditional density f (x, ·) of Y i given X i = x, from the...
This dissertation presents some new and serious attempts towards using auxiliary information effecti...
Nonparametric density estimation is of great importance when econometricians want to model the prob...
The paper introduces the idea of inadmissible kernels and shows that an Epanechnikov type kernel is ...
In this lecture, we discuss kernel estimation of probability density functions (PDF). Nonparametric ...
AbstractThe problem of nonparametric estimation of a multivariate density function is addressed. In ...
The object of the present study is to summarize recent developments in nonparametric density estimat...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
We show that maximum likelihood weighted kernel density estimation offers a unified approach to dens...
We present a novel nonparametric density estimator and a new data-driven bandwidth selection method ...
AbstractMultivariate kernel density estimators are known to systematically deviate from the true val...
AbstractLet X be a unit vector random variable taking values on a k-dimensional sphere Ω with probab...
AbstractLet X1,…,Xn be n consecutive observations of a linear process X1=μ+∑r=0∞ArZt−r, where μ is a...
In this paper we propose a new nonparametric kernel based estimator for a density function $f$ which...
The estimation of density based on positive dependent samples has been studied recently with consis...
This paper studies the estimation of the conditional density f (x, ·) of Y i given X i = x, from the...
This dissertation presents some new and serious attempts towards using auxiliary information effecti...
Nonparametric density estimation is of great importance when econometricians want to model the prob...
The paper introduces the idea of inadmissible kernels and shows that an Epanechnikov type kernel is ...
In this lecture, we discuss kernel estimation of probability density functions (PDF). Nonparametric ...
AbstractThe problem of nonparametric estimation of a multivariate density function is addressed. In ...
The object of the present study is to summarize recent developments in nonparametric density estimat...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
We show that maximum likelihood weighted kernel density estimation offers a unified approach to dens...
We present a novel nonparametric density estimator and a new data-driven bandwidth selection method ...
AbstractMultivariate kernel density estimators are known to systematically deviate from the true val...
AbstractLet X be a unit vector random variable taking values on a k-dimensional sphere Ω with probab...
AbstractLet X1,…,Xn be n consecutive observations of a linear process X1=μ+∑r=0∞ArZt−r, where μ is a...
In this paper we propose a new nonparametric kernel based estimator for a density function $f$ which...
The estimation of density based on positive dependent samples has been studied recently with consis...
This paper studies the estimation of the conditional density f (x, ·) of Y i given X i = x, from the...