An exponential smoothing procedure applied to a homogeneous Markovian observation sequence generates an inhomogeneous Markov process as sequence of smoothed values. If the underlying observation sequence is moreover ergodic then for two classes of smoothing functions the strong ergodicity of the sequence of smoothed values is proved. As a consequence a central limit theorem and a law of large numbers hold true for the smoothed values. The proof uses general results for so-called convergent inhomogeneous Markov processes. In the literature a lot of time series are discussed to which the smoothing procedures are applicable. Smoothing of non-linear time series; Generalized exponential smoothing; Convergent Inhomogeneous Markov processes AMS 19...
We investigate conditions for the ergodicity of threshold autoregressive time series by embedding th...
In this paper, we investigate computable lower bounds for the best strongly ergodic rate of converg...
In this paper, we address the problem of filtering and fixed-lag smoothing for discrete-time and dis...
State-space models are a very general class of time series capable of modeling-dependent observation...
AbstractState-space models are a very general class of time series capable of modeling-dependent obs...
This paper studies the equivalence of exponential ergodicity and L2-exponential convergence mainly f...
AbstractThis paper studies the equivalence of exponential ergodicity and L2-exponential convergence ...
AbstractA notion of ergodicity is defined by analogy to homogeneous chains, and a necessary and suff...
In this paper we find nonasymptotic exponential upper bounds for the deviation in the ergodic theore...
It is established in this paper that exponential smoothing, in its most general linear form, is an o...
We continue the work of improving the rate of convergence of ergodic homogeneous Markov chains. The ...
New improved rates of convergence for ergodic homogeneous Markov chains are studied. Examples of com...
We consider ergodic diffusion processes for which the class of invariant measures is an exponential ...
AbstractFor Lp convergence rates of a time homogeneous Markov process, sufficient conditions are giv...
For Lp convergence rates of a time homogeneous Markov process, sufficient conditions are given in te...
We investigate conditions for the ergodicity of threshold autoregressive time series by embedding th...
In this paper, we investigate computable lower bounds for the best strongly ergodic rate of converg...
In this paper, we address the problem of filtering and fixed-lag smoothing for discrete-time and dis...
State-space models are a very general class of time series capable of modeling-dependent observation...
AbstractState-space models are a very general class of time series capable of modeling-dependent obs...
This paper studies the equivalence of exponential ergodicity and L2-exponential convergence mainly f...
AbstractThis paper studies the equivalence of exponential ergodicity and L2-exponential convergence ...
AbstractA notion of ergodicity is defined by analogy to homogeneous chains, and a necessary and suff...
In this paper we find nonasymptotic exponential upper bounds for the deviation in the ergodic theore...
It is established in this paper that exponential smoothing, in its most general linear form, is an o...
We continue the work of improving the rate of convergence of ergodic homogeneous Markov chains. The ...
New improved rates of convergence for ergodic homogeneous Markov chains are studied. Examples of com...
We consider ergodic diffusion processes for which the class of invariant measures is an exponential ...
AbstractFor Lp convergence rates of a time homogeneous Markov process, sufficient conditions are giv...
For Lp convergence rates of a time homogeneous Markov process, sufficient conditions are given in te...
We investigate conditions for the ergodicity of threshold autoregressive time series by embedding th...
In this paper, we investigate computable lower bounds for the best strongly ergodic rate of converg...
In this paper, we address the problem of filtering and fixed-lag smoothing for discrete-time and dis...