A new class of integer time series models is proposed to capture the dynamic transmission of count processes over time. The approach extends existing integer mixed autoregressive-moving average models (INARMA) by allowing for shifts in the dynamics of the count process through regime changes, referred to as a threshold integer autoregressive-moving average model (TINARMA). An efficient method of moments estimator is proposed, with standard errors based on subsampling, as maximum likelihood methods are infeasible for TINARMA processes. Applying the framework to global banking crises over 200 years of data, the empirical results show strong evidence of autoregressive and moving average dynamics which vary across systemic and nonsystemic regim...
Since the pioneering work by Tong (1978, 1983), threshold time series modelling and its applications...
The traditional threshold time series model is famous for its capability in capturing asymmetry. Reg...
In linear time series analysis, the incorporation of the moving-average term in autoregressive model...
A new class of integer time series models is proposed to capture the dynamic transmission of count p...
The subject of time series analysis has drawn significant attentions in recent years, since it is of...
This thesis comprises four papers concerning modelling of financial count data. Paper [1], [2] and [...
In this paper we present some nonlinear autoregressive moving average (NARMA) models proposed in the...
Integer-valued correlated stochastic processes, which we often meet in the real world, are of major...
April 2009 ...
International audienceInteger autoregressive and moving average models have been developed over the ...
Non–negative integer–valued time series are often encountered in many different scientific fields, u...
In this paper we propose a new class of nonlinear time series models, the threshold variable driven ...
This paper considers the periodic self-exciting threshold integer-valued autoregressive processes un...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
This thesis aims to develop a series of nonlinear time series models for analysing count data, espec...
Since the pioneering work by Tong (1978, 1983), threshold time series modelling and its applications...
The traditional threshold time series model is famous for its capability in capturing asymmetry. Reg...
In linear time series analysis, the incorporation of the moving-average term in autoregressive model...
A new class of integer time series models is proposed to capture the dynamic transmission of count p...
The subject of time series analysis has drawn significant attentions in recent years, since it is of...
This thesis comprises four papers concerning modelling of financial count data. Paper [1], [2] and [...
In this paper we present some nonlinear autoregressive moving average (NARMA) models proposed in the...
Integer-valued correlated stochastic processes, which we often meet in the real world, are of major...
April 2009 ...
International audienceInteger autoregressive and moving average models have been developed over the ...
Non–negative integer–valued time series are often encountered in many different scientific fields, u...
In this paper we propose a new class of nonlinear time series models, the threshold variable driven ...
This paper considers the periodic self-exciting threshold integer-valued autoregressive processes un...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
This thesis aims to develop a series of nonlinear time series models for analysing count data, espec...
Since the pioneering work by Tong (1978, 1983), threshold time series modelling and its applications...
The traditional threshold time series model is famous for its capability in capturing asymmetry. Reg...
In linear time series analysis, the incorporation of the moving-average term in autoregressive model...