In this paper, we study the kernel methods for density estimation of stationary samples under generalized conditions, which unify both the linear and alpha -mixing processes discussed in the literature and also adapt to the non-linear or/and non-a-mixing processes. Under general, mild conditions, the kernel density estimators are shown to be asymptotically normal. Some specific theorems are derived within various contexts, and their applications and relationship with the relevant references are considered. It is interesting that the conditions on the bandwidth may be very simple, even in the generalized context. The stationary sequences discussed cover a large number of (linear or nonlinear) time series and econometric models (such as the A...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
The Gaussian kernel density estimator is known to have substantial problems for bounded random varia...
AbstractIn this paper, we build a central limit theorem for triangular arrays of sequences which sat...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
The nonparametric estimation results for time series described in the literature to date stem fairly...
Nonparametric kernel estimation of density and conditional mean is widely used, but many of the poin...
Kernel type density estimators are studied for random fields. It is proved that the estimators are a...
AbstractThe nonparametric estimation results for time series described in the literature to date ste...
The sole purpose of this paper is to establish asymptotic normality of the usual kernel estimate of ...
We consider the general modern notion of the so-called associated kernels for smoothing density func...
AbstractWe consider the estimation of the multivariate probability density functions of stationary r...
© 2018 Hanyuan Hang, Ingo Steinwart, Yunlong Feng and Johan A.K. Suykens. We study the density estim...
February 2006; August 2006 (Revised)We consider nonparametric estimation of marginal density functio...
To appear in " Statistical Inference for Stochastic Processes"We prove the asymptotic normality of t...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
The Gaussian kernel density estimator is known to have substantial problems for bounded random varia...
AbstractIn this paper, we build a central limit theorem for triangular arrays of sequences which sat...
Nonparametric kernel estimation of density is widely used, how-ever, many of the pointwise and globa...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
The nonparametric estimation results for time series described in the literature to date stem fairly...
Nonparametric kernel estimation of density and conditional mean is widely used, but many of the poin...
Kernel type density estimators are studied for random fields. It is proved that the estimators are a...
AbstractThe nonparametric estimation results for time series described in the literature to date ste...
The sole purpose of this paper is to establish asymptotic normality of the usual kernel estimate of ...
We consider the general modern notion of the so-called associated kernels for smoothing density func...
AbstractWe consider the estimation of the multivariate probability density functions of stationary r...
© 2018 Hanyuan Hang, Ingo Steinwart, Yunlong Feng and Johan A.K. Suykens. We study the density estim...
February 2006; August 2006 (Revised)We consider nonparametric estimation of marginal density functio...
To appear in " Statistical Inference for Stochastic Processes"We prove the asymptotic normality of t...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
The Gaussian kernel density estimator is known to have substantial problems for bounded random varia...
AbstractIn this paper, we build a central limit theorem for triangular arrays of sequences which sat...