AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of stationary sequences which are observed through some non-linear instantaneous filter applied to long-range dependent Gaussian sequences. It is shown that the limiting distribution of the kernel estimator can be, in quite contrast to the case of short-range dependence, Gaussian or non-Gaussian depending on the choice of the bandwidth sequences. In particular, if the bandwidth h(N) for sample of size N is selected to converge to zero fast enough, the usual √Nh(N) rate asymptotic normality still holds
This paper considers statistical inference for nonstationaryGaussian processes with long-range depen...
This article investigates general scaling settings and limit distributions of functionals of filtere...
This article investigates general scaling settings and limit distributions of functionals of filtere...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
This paper studies the asymptotic properties of the kernel probability density estimate of stationar...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
AbstractThis paper considers statistical inference for nonstationary Gaussian processes with long-ra...
Abstract: We consider the nonparametric estimation of the density func-tion of weakly and strongly d...
This paper considers statistical inference for nonstationaryGaussian processes with long-range depen...
This paper considers statistical inference for nonstationary Gaussian processes with long-range depe...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
A central limit theorem is given for certain weighted partial sums of a covariance stationary proces...
In kernel density estimation, those data values that make a nondegenerate contribution to the estima...
This paper considers statistical inference for nonstationary Gaussian processes with long-range depe...
AbstractA central limit theorem for a class of non-instantaneous filters of a stationary Gaussian pr...
This paper considers statistical inference for nonstationaryGaussian processes with long-range depen...
This article investigates general scaling settings and limit distributions of functionals of filtere...
This article investigates general scaling settings and limit distributions of functionals of filtere...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
This paper studies the asymptotic properties of the kernel probability density estimate of stationar...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
AbstractThis paper considers statistical inference for nonstationary Gaussian processes with long-ra...
Abstract: We consider the nonparametric estimation of the density func-tion of weakly and strongly d...
This paper considers statistical inference for nonstationaryGaussian processes with long-range depen...
This paper considers statistical inference for nonstationary Gaussian processes with long-range depe...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
A central limit theorem is given for certain weighted partial sums of a covariance stationary proces...
In kernel density estimation, those data values that make a nondegenerate contribution to the estima...
This paper considers statistical inference for nonstationary Gaussian processes with long-range depe...
AbstractA central limit theorem for a class of non-instantaneous filters of a stationary Gaussian pr...
This paper considers statistical inference for nonstationaryGaussian processes with long-range depen...
This article investigates general scaling settings and limit distributions of functionals of filtere...
This article investigates general scaling settings and limit distributions of functionals of filtere...