We consider a log-linear model for time series of counts. This type of model provides a framework where both negative and positive association can be taken into account. In addition time dependent covariates are accommodated in a straightforward way. We study its probabilistic properties and maximum likelihood estimation. It is shown that a perturbed version of the process is geometrically ergodic, and, under some conditions, it approaches the non-perturbed version. In addition, it is proved that the maximum likelihood estimator of the vector of unknown parameters is asymptotically normal with a covariance matrix that can be consistently estimated. The results are based on minimal assumptions and can be extended to the case of log-linear re...
We study inference and diagnostics for count time series regression models that include a feedback m...
A stochastic volatility model in which the log volatilities follow a threshold autoregressive proces...
We consider the problem of estimating and detecting outliers in count time series data following a l...
We consider a log-linear model for time series of counts. This type of model provides a framework wh...
We are studying linear and log-linear models for multivariate count time series data with Poisson ma...
We consider the problems of robust estimation and testing for a log-linear model with feedback for t...
In this article we consider geometric ergodicity and likelihood-based inference for linear and nonli...
Non-linear mixed Poisson autoregressive models are studied for the analysis of count time series. Gi...
This paper introduces a new multivariate model for time series count data. The Multivariate Autoregr...
This paper introduces a new multivariate model for time series count data. The Multivariate Autoregr...
We study robust estimation of a log-linear Poisson model for count time series analysis. More specif...
We consider generalized linear models for regression modeling of count time series. We give easily v...
The paper authenticated the need for separate positive integer time series model(s). This was done f...
Here we present some limit theorems for a general class of generalized linear models describing time...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
We study inference and diagnostics for count time series regression models that include a feedback m...
A stochastic volatility model in which the log volatilities follow a threshold autoregressive proces...
We consider the problem of estimating and detecting outliers in count time series data following a l...
We consider a log-linear model for time series of counts. This type of model provides a framework wh...
We are studying linear and log-linear models for multivariate count time series data with Poisson ma...
We consider the problems of robust estimation and testing for a log-linear model with feedback for t...
In this article we consider geometric ergodicity and likelihood-based inference for linear and nonli...
Non-linear mixed Poisson autoregressive models are studied for the analysis of count time series. Gi...
This paper introduces a new multivariate model for time series count data. The Multivariate Autoregr...
This paper introduces a new multivariate model for time series count data. The Multivariate Autoregr...
We study robust estimation of a log-linear Poisson model for count time series analysis. More specif...
We consider generalized linear models for regression modeling of count time series. We give easily v...
The paper authenticated the need for separate positive integer time series model(s). This was done f...
Here we present some limit theorems for a general class of generalized linear models describing time...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
We study inference and diagnostics for count time series regression models that include a feedback m...
A stochastic volatility model in which the log volatilities follow a threshold autoregressive proces...
We consider the problem of estimating and detecting outliers in count time series data following a l...