This article proposes a mixture double autoregressive model by introducing the flexibility of mixture models to the double autoregressive model, a novel conditional heteroscedastic model recently proposed in the literature. To make it more flexible, the mixing proportions are further assumed to be time varying, and probabilistic properties including strict stationarity and higher order moments are derived. Inference tools including the maximum likelihood estimation, an expectation–maximization (EM) algorithm for searching the estimator and an information criterion for model selection are carefully studied for the logistic mixture double autoregressive model, which has two components and is encountered more frequently in practice. Monte Carl...
We generalize the Gaussian Mixture Autoregressive (GMAR) model to the Fisher’s z Mixture Autoregress...
In this paper we propose a class of time-domain models for analyzing possibly nonstationary time ser...
Abstract: This paper gives necessary and sucient conditions for stationarity and existence of second...
Conditional heteroscedastic models are one important type of time series models which have been wide...
We generalize the Gaussian mixture transition distribution (GMTD) model introduced by Le and co-work...
We generalise the mixture autoregressive, MAR, model to the logistic mixture autoregressive with exo...
We consider mixture univariate autoregressive conditional heteroskedastic models, both with Gaussian...
The authors show how to extend univariate mixture autoregressive models to a multivariate time serie...
In this paper, we reconsider the mixture vector autoregressive model, which was proposed in the lite...
The double autoregressive model finds its use in the modelling of conditional heteroscedasticity of ...
Integer-valued correlated stochastic processes, which we often meet in the real world, are of major...
Autoregressive (AR) models are an important tool in the study of time series data. However, the stan...
A general Bayesian sampling method is developed that uses parallel chains to select betweenmodels an...
Recently, there has been a lot of interest in modelling real data with a heavy-tailed distribution. ...
In this paper we consider mixture generalized autoregressive conditional heteroskedastic models, and...
We generalize the Gaussian Mixture Autoregressive (GMAR) model to the Fisher’s z Mixture Autoregress...
In this paper we propose a class of time-domain models for analyzing possibly nonstationary time ser...
Abstract: This paper gives necessary and sucient conditions for stationarity and existence of second...
Conditional heteroscedastic models are one important type of time series models which have been wide...
We generalize the Gaussian mixture transition distribution (GMTD) model introduced by Le and co-work...
We generalise the mixture autoregressive, MAR, model to the logistic mixture autoregressive with exo...
We consider mixture univariate autoregressive conditional heteroskedastic models, both with Gaussian...
The authors show how to extend univariate mixture autoregressive models to a multivariate time serie...
In this paper, we reconsider the mixture vector autoregressive model, which was proposed in the lite...
The double autoregressive model finds its use in the modelling of conditional heteroscedasticity of ...
Integer-valued correlated stochastic processes, which we often meet in the real world, are of major...
Autoregressive (AR) models are an important tool in the study of time series data. However, the stan...
A general Bayesian sampling method is developed that uses parallel chains to select betweenmodels an...
Recently, there has been a lot of interest in modelling real data with a heavy-tailed distribution. ...
In this paper we consider mixture generalized autoregressive conditional heteroskedastic models, and...
We generalize the Gaussian Mixture Autoregressive (GMAR) model to the Fisher’s z Mixture Autoregress...
In this paper we propose a class of time-domain models for analyzing possibly nonstationary time ser...
Abstract: This paper gives necessary and sucient conditions for stationarity and existence of second...