Autoregressive (AR) models are an important tool in the study of time series data. However, the standard AR model only allows for unimodal marginal and conditional densities, and cannot capture conditional heteroscedasticity. Previously, the Gaussian mixture AR (GMAR) model was considered to remedy these shortcomings by using a Gaussian mixture conditional model. We introduce the Laplace mixture (LMAR) model that utilizes a Laplace mixture conditional model, as an alternative to the GMAR model. We characterize the LMAR model and provide conditions for stationarity. An MM (minorization–maximization) algorithm is then proposed for maximum pseudolikelihood (MPL) estimation of an LMAR model. Conditions for asymptotic inference and a rule for mo...
We consider data generating mechanisms which can be represented as mixtures of finitely many regress...
The authors show how to extend univariate mixture autoregressive models to a multivariate time serie...
We consider mixture univariate autoregressive conditional heteroskedastic models, both with Gaussian...
Mixture of autoregressions (MoAR) models provide a model-based approach to the clustering of time se...
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...
Mixture of Linear Experts (MoLE) models provide a popular framework for modeling nonlinear regressio...
This article proposes a mixture double autoregressive model by introducing the flexibility of mixtur...
We generalize the Gaussian Mixture Autoregressive (GMAR) model to the Fisher’s z Mixture Autoregress...
Includes supplementary materials for the online appendix.We propose the approximate Laplace approxim...
We consider a novel class of non-linear models for time series analysis based on mixtures of local a...
We propose a new family of linear mixed-effects models based on the generalized Laplace distribution...
International audienceIn this paper we are interested in estimating the number of components of a mi...
In this paper, we reconsider the mixture vector autoregressive model, which was proposed in the lite...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
We consider data generating mechanisms which can be represented as mixtures of finitely many regress...
The authors show how to extend univariate mixture autoregressive models to a multivariate time serie...
We consider mixture univariate autoregressive conditional heteroskedastic models, both with Gaussian...
Mixture of autoregressions (MoAR) models provide a model-based approach to the clustering of time se...
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...
Mixture of Linear Experts (MoLE) models provide a popular framework for modeling nonlinear regressio...
This article proposes a mixture double autoregressive model by introducing the flexibility of mixtur...
We generalize the Gaussian Mixture Autoregressive (GMAR) model to the Fisher’s z Mixture Autoregress...
Includes supplementary materials for the online appendix.We propose the approximate Laplace approxim...
We consider a novel class of non-linear models for time series analysis based on mixtures of local a...
We propose a new family of linear mixed-effects models based on the generalized Laplace distribution...
International audienceIn this paper we are interested in estimating the number of components of a mi...
In this paper, we reconsider the mixture vector autoregressive model, which was proposed in the lite...
This paper presents a new approach to estimating mixture models based on a recent inference principl...
We consider data generating mechanisms which can be represented as mixtures of finitely many regress...
The authors show how to extend univariate mixture autoregressive models to a multivariate time serie...
We consider mixture univariate autoregressive conditional heteroskedastic models, both with Gaussian...