The R package tscount provides likelihood-based estimation methods for analysis and modelling of count time series following generalized linear models. This is a exible class of models which can describe serial correlation in a parsimonious way. The conditional mean of the process is linked to its past values, to past observations and to potential covariate e ects. The package allows for models with the identity and with the logarithmic link function. The conditional distribution can be Poisson or Negative Binomial. An important special case of this class is the so-called INGARCH model and its log-linear extension. The package includes methods for model tting and assessment, prediction and intervention analysis. This paper summar...
This paper describes the R package cold for the analysis of count longitudinal data. In this package...
There are many situations in practice where one may encounter time series of counts. For example, o...
package for analysis of count time series following generalized linear models D iscussion P ape
The R package tscount provides likelihood-based estimation methods for analysis and modeling of coun...
The R package tscount provides likelihood-based estimation methods for analysis and modeling of coun...
Count time series are found in many different applications, e.g. from medicine, finance or industry,...
We review the theory and application of generalized linear autoregressive moving average observation...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
The paper authenticated the need for separate positive integer time series model(s). This was done f...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
Models of count time series with denumerable states space with conditional probability distributios ...
There has been growing interest in modeling stationary series that have discrete marginal distributi...
We introduce a new R package for analysis and inference of network count time series. Such data aris...
This paper compares two alternative models for autocorrelated count time series. The first model can...
Models for time series count data include several proposed by Zeger and Qaqish (1988), subsequently ...
This paper describes the R package cold for the analysis of count longitudinal data. In this package...
There are many situations in practice where one may encounter time series of counts. For example, o...
package for analysis of count time series following generalized linear models D iscussion P ape
The R package tscount provides likelihood-based estimation methods for analysis and modeling of coun...
The R package tscount provides likelihood-based estimation methods for analysis and modeling of coun...
Count time series are found in many different applications, e.g. from medicine, finance or industry,...
We review the theory and application of generalized linear autoregressive moving average observation...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
The paper authenticated the need for separate positive integer time series model(s). This was done f...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
Models of count time series with denumerable states space with conditional probability distributios ...
There has been growing interest in modeling stationary series that have discrete marginal distributi...
We introduce a new R package for analysis and inference of network count time series. Such data aris...
This paper compares two alternative models for autocorrelated count time series. The first model can...
Models for time series count data include several proposed by Zeger and Qaqish (1988), subsequently ...
This paper describes the R package cold for the analysis of count longitudinal data. In this package...
There are many situations in practice where one may encounter time series of counts. For example, o...
package for analysis of count time series following generalized linear models D iscussion P ape