Stationarity and ergodic properties for some observation-driven models in random environments

07/15/2020
by   Paul Doukhan, et al.
0

The first motivation of this paper is to study stationarity and ergodic properties for a general class of time series models defined conditional on an exogenous covariates process. The dynamic of these models is given by an autoregressive latent process which forms a Markov chain in random environments. Contrarily to existing contributions in the field of Markov chains in random environments, the state space is not discrete and we do not use small set type assumptions or uniform contraction conditions for the random Markov kernels. Our assumptions are quite general and allows to deal with models that are not fully contractive, such as threshold autoregressive processes. Using a coupling approach, we study the existence of a limit, in Wasserstein metric, for the backward iterations of the chain. We also derive ergodic properties for the corresponding skew-product Markov chain. Our results are illustrated with many examples of autoregressive processes widely used in statistics or in econometrics, including GARCH type processes, count autoregressions and categorical time series.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/13/2021

Ergodic properties of some Markov chains models in random environments

We study ergodic properties of some Markov chains models in random envir...
research
12/06/2021

Strong mixing properties of discrete-valued time series with exogenous covariates

We derive strong mixing conditions for many existing discrete-valued tim...
research
08/02/2019

Iterations of dependent random maps and exogeneity in nonlinear dynamics

We discuss existence and uniqueness of stationary and ergodic nonlinear ...
research
07/31/2019

Coupling and perturbation techniques for categorical time series

We present a general approach for studying autoregressive categorical ti...
research
04/24/2018

Modelling corporate defaults: A Markov-switching Poisson log-linear autoregressive model

This article extends the autoregressive count time series model class by...
research
01/23/2019

Stick-breaking processes, clumping, and Markov chain occupation laws

We consider the connections among `clumped' residual allocation models (...
research
03/16/2023

On Distributional Autoregression and Iterated Transportation

We consider the problem of defining and fitting models of autoregressive...

Please sign up or login with your details

Forgot password? Click here to reset