We consider autocovariance operators of a stationary stochastic process on a Polish space that is embedded into a reproducing kernel Hilbert space. We investigate how empirical estimates of these operators converge along realizations of the process under various conditions. In particular, we examine ergodic and strongly mixing processes and obtain several asymptotic results as well as finite sample error bounds. We provide applications of our theory in terms of consistency results for kernel PCA with dependent data and the conditional mean embedding of transition probabilities. Finally, we use our approach to examine the nonparametric estimation of Markov transition operators and highlight how our theory can give a consistency analysis for ...
The nonparametric estimation results for time series described in the literature to date stem fairly...
AbstractThe necessary and sufficient matrix condition of Mitchell, Morris and Ylvisaker (1990) for a...
AbstractLet {Xj: j ⩾ 1} be a real-valued stationary process. Recursive kernel estimators of the join...
We consider autocovariance operators of a stationary stochastic process on a Polish space that is e...
Weakly and strongly consistent nonparametric estimates, along with rates of convergence, are establi...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
Aspects of estimation of the (marginal) probability density for a stationary sequence or continuous ...
AbstractLet {Xj} ∞j=−∞ be a real-valued stationary process. Recursive kernel estimators of the joint...
AbstractLet {Zi; i ϵ N} be a strictly stationary real valued time series. We predict ZN + 1 from {Z1...
AbstractWe consider the estimation of the multivariate probability density functions of stationary r...
We provide a necessary and sufficient condition for the almost sure convergence and the strong consi...
AbstractWe give the asymptotic statistical theory (strong consistency and asymptotic normality) of a...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
Locally stationary processes are characterised by spectral densities that are functions of rescaled...
AbstractWe consider some parametric spectral estimators that can be used in a wide range of situatio...
The nonparametric estimation results for time series described in the literature to date stem fairly...
AbstractThe necessary and sufficient matrix condition of Mitchell, Morris and Ylvisaker (1990) for a...
AbstractLet {Xj: j ⩾ 1} be a real-valued stationary process. Recursive kernel estimators of the join...
We consider autocovariance operators of a stationary stochastic process on a Polish space that is e...
Weakly and strongly consistent nonparametric estimates, along with rates of convergence, are establi...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
Aspects of estimation of the (marginal) probability density for a stationary sequence or continuous ...
AbstractLet {Xj} ∞j=−∞ be a real-valued stationary process. Recursive kernel estimators of the joint...
AbstractLet {Zi; i ϵ N} be a strictly stationary real valued time series. We predict ZN + 1 from {Z1...
AbstractWe consider the estimation of the multivariate probability density functions of stationary r...
We provide a necessary and sufficient condition for the almost sure convergence and the strong consi...
AbstractWe give the asymptotic statistical theory (strong consistency and asymptotic normality) of a...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
Locally stationary processes are characterised by spectral densities that are functions of rescaled...
AbstractWe consider some parametric spectral estimators that can be used in a wide range of situatio...
The nonparametric estimation results for time series described in the literature to date stem fairly...
AbstractThe necessary and sufficient matrix condition of Mitchell, Morris and Ylvisaker (1990) for a...
AbstractLet {Xj: j ⩾ 1} be a real-valued stationary process. Recursive kernel estimators of the join...