We generalise the mixture autoregressive, MAR, model to the logistic mixture autoregressive with exogenous variables, LMARX, model for the modelling of nonlinear time series. The models consist of a mixture of two Gaussian transfer function models with the mixing proportions changing over time. The model can also be considered as a generalisation of the self-exciting threshold autoregressive, SETAR, model and the open-loop threshold autoregressive, TARSO, model. The advantages of the LMARX model over other nonlinear time series models include a wider range of shape-changing predictive distributions, the ability to handle cycles and conditional heteroscedasticity in the time series and better point prediction. Estimation is easily done via a...
This paper introduces new LM specification procedures to choose between Logistic and Exponential Smo...
Although linear autoregressive models are useful to practitioners in different fields, often a nonli...
Abstract: In this paper we propose a new class of nonlinear time series models, the threshold variab...
We generalize the Gaussian mixture transition distribution (GMTD) model introduced by Le and co-work...
This article proposes a mixture double autoregressive model by introducing the flexibility of mixtur...
We consider a novel class of non-linear models for time series analysis based on mixtures of local a...
Time series analysis aims to model time series data patterns. One model is the model of nonlinear ti...
In this paper, we reconsider the mixture vector autoregressive model, which was proposed in the lite...
Abstract: One of the most important family of nonlinear time-series models, capable of exhibiting li...
We generalize the Gaussian Mixture Autoregressive (GMAR) model to the Fisher’s z Mixture Autoregress...
Autoregressive (AR) models are an important tool in the study of time series data. However, the stan...
We consider a nonlinear vector model called the logistic vector smooth transition autoregressive mod...
The authors show how to extend univariate mixture autoregressive models to a multivariate time serie...
Time series data not only create linear model but also nonlinear model, especially in the economic. ...
A new LM specification procedure to choose between Logistic and Exponential Smooth Transition Autore...
This paper introduces new LM specification procedures to choose between Logistic and Exponential Smo...
Although linear autoregressive models are useful to practitioners in different fields, often a nonli...
Abstract: In this paper we propose a new class of nonlinear time series models, the threshold variab...
We generalize the Gaussian mixture transition distribution (GMTD) model introduced by Le and co-work...
This article proposes a mixture double autoregressive model by introducing the flexibility of mixtur...
We consider a novel class of non-linear models for time series analysis based on mixtures of local a...
Time series analysis aims to model time series data patterns. One model is the model of nonlinear ti...
In this paper, we reconsider the mixture vector autoregressive model, which was proposed in the lite...
Abstract: One of the most important family of nonlinear time-series models, capable of exhibiting li...
We generalize the Gaussian Mixture Autoregressive (GMAR) model to the Fisher’s z Mixture Autoregress...
Autoregressive (AR) models are an important tool in the study of time series data. However, the stan...
We consider a nonlinear vector model called the logistic vector smooth transition autoregressive mod...
The authors show how to extend univariate mixture autoregressive models to a multivariate time serie...
Time series data not only create linear model but also nonlinear model, especially in the economic. ...
A new LM specification procedure to choose between Logistic and Exponential Smooth Transition Autore...
This paper introduces new LM specification procedures to choose between Logistic and Exponential Smo...
Although linear autoregressive models are useful to practitioners in different fields, often a nonli...
Abstract: In this paper we propose a new class of nonlinear time series models, the threshold variab...