The significance of count data modeling and its applications to real-world phenomena have been highlighted in several research studies. The present study focuses on a two-parameter discrete distribution that can be obtained by compounding the Poisson and extended exponential distributions. It has tractable and explicit forms for its statistical properties. The maximum likelihood estimation method is used to estimate the unknown parameters. An extensive simulation study was also performed. In this paper, the significance of the proposed distribution is demonstrated in a count regression model and in a first-order integer-valued autoregressive process, referred to as the INAR(1) process. In addition to this, the empirical importance of the pr...
The INteger-valued AutoRegressive (INAR) processes were introduced in the literature by Al-Osh and A...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
Integer valued AR (INAR) processes are perfectly suited for modelling count data. We consider the in...
Motivated by the extended Poisson INAR(1), which allows innovations to be serially dependent, we dev...
In this article, we focus on the integer valued autoregressive model, INAR (1), with Poisson innovat...
Non–negative integer–valued time series are often encountered in many different scientific fields, u...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
International audienceRegularity conditions are given for the consistency of the Poisson quasi-maxim...
To model count time series Al-Osh & Alzaid (1987) and McKenzie (1988) introduced the INteger-valued ...
This paper aims to model integer valued time series with possible negative values and either positiv...
Modelling counts of events can be found in several situations of real life. For instance, the number...
In this paper, a Poisson-Akash INAR(1) model was proposed in order to improve on the modelling of ov...
In this article, a novel probability discrete model is introduced for modeling overdispersed count d...
To model count time series Al-Osh & Alzaid (1987) and McKenzie (1988) introduced the INteger-valued ...
The INteger-valued AutoRegressive (INAR) processes were introduced in the literature by Al-Osh and A...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
Integer valued AR (INAR) processes are perfectly suited for modelling count data. We consider the in...
Motivated by the extended Poisson INAR(1), which allows innovations to be serially dependent, we dev...
In this article, we focus on the integer valued autoregressive model, INAR (1), with Poisson innovat...
Non–negative integer–valued time series are often encountered in many different scientific fields, u...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
International audienceRegularity conditions are given for the consistency of the Poisson quasi-maxim...
To model count time series Al-Osh & Alzaid (1987) and McKenzie (1988) introduced the INteger-valued ...
This paper aims to model integer valued time series with possible negative values and either positiv...
Modelling counts of events can be found in several situations of real life. For instance, the number...
In this paper, a Poisson-Akash INAR(1) model was proposed in order to improve on the modelling of ov...
In this article, a novel probability discrete model is introduced for modeling overdispersed count d...
To model count time series Al-Osh & Alzaid (1987) and McKenzie (1988) introduced the INteger-valued ...
The INteger-valued AutoRegressive (INAR) processes were introduced in the literature by Al-Osh and A...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...