We study inference and diagnostics for count time series regression models that include a feedback mechanism. In particular, we are interested in negative binomial processes for count time series. We study probabilistic properties and quasi‐likelihood estimation for this class of processes. We show that the resulting estimators are consistent and asymptotically normally distributed. These facts enable us to construct probability integral transformation plots for assessing any assumed distributional assumptions. The key observation in developing the theory is a mean parameterized form of the negative binomial distribution. For transactions data, it is seen that the negative binomial distribution offers a better fit than the Poisson distribut...
Summary. This paper introduces an exchangeable negative binomial distribution resulting from relaxin...
AbstractNegative binomial point processes are defined for which all finite-dimensional distributions...
The geometric distribution leads to a Lévy process parameterized by the probability of success. The ...
Two negative binomial quasi-maximum likelihood estimates (NB-QMLE's) for a general class of count ti...
We consider the problem of assessing prediction for count time series based on either the Poisson di...
The negative binomial distribution (NBD) and negative binomial processes have been used as natural m...
To model count time series Al-Osh & Alzaid (1987) and McKenzie (1988) introduced the INteger-valued ...
The quasi-negative-binomial distribution was applied to queuing theory for determining the distribut...
By developing data augmentation methods unique to the negative binomial (NB) distribution, we unite ...
We introduce Negative Binomial Autoregressive (NBAR) processes for (univariate and bivariate) count ...
To model count time series Al-Osh & Alzaid (1987) and McKenzie (1988) introduced the INteger-valued ...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
<p>We define a family of probability distributions for random count matrices with a potentially unbo...
The quasi-negative-binomial distribution was applied to queuing theory for determining the distribut...
Some problems of' statistical inference for discrete-valued time series are investigated in this stu...
Summary. This paper introduces an exchangeable negative binomial distribution resulting from relaxin...
AbstractNegative binomial point processes are defined for which all finite-dimensional distributions...
The geometric distribution leads to a Lévy process parameterized by the probability of success. The ...
Two negative binomial quasi-maximum likelihood estimates (NB-QMLE's) for a general class of count ti...
We consider the problem of assessing prediction for count time series based on either the Poisson di...
The negative binomial distribution (NBD) and negative binomial processes have been used as natural m...
To model count time series Al-Osh & Alzaid (1987) and McKenzie (1988) introduced the INteger-valued ...
The quasi-negative-binomial distribution was applied to queuing theory for determining the distribut...
By developing data augmentation methods unique to the negative binomial (NB) distribution, we unite ...
We introduce Negative Binomial Autoregressive (NBAR) processes for (univariate and bivariate) count ...
To model count time series Al-Osh & Alzaid (1987) and McKenzie (1988) introduced the INteger-valued ...
This paper discusses the specification and estimation of seemingly unrelated multivariate count data...
<p>We define a family of probability distributions for random count matrices with a potentially unbo...
The quasi-negative-binomial distribution was applied to queuing theory for determining the distribut...
Some problems of' statistical inference for discrete-valued time series are investigated in this stu...
Summary. This paper introduces an exchangeable negative binomial distribution resulting from relaxin...
AbstractNegative binomial point processes are defined for which all finite-dimensional distributions...
The geometric distribution leads to a Lévy process parameterized by the probability of success. The ...