This paper compares two alternative models for autocorrelated count time series. The first model can be viewed as a ‘single source of error’ discrete state space model, in which a time-varying parameter is specified as a function of lagged counts, with no additional source of error introduced. The second model is the more conventional ‘dual source of error’ discrete state space model, in which the time-varying parameter is driven by a random autocorrelated process. Using the nomenclature of the literature, the two representations can be viewed as observation-driven and parameter-driven respectively, with the distinction between the two models mimicking that between analogous models for other non-Gaussian data such as financial returns and t...
Models of count time series with denumerable states space with conditional probability distributios ...
This thesis seeks to produce new methods for the analysis and prediction of counting processes throu...
Count time series, Parameter-driven, Observation-driven, Autocorrelation, Overdispersion, Diagnostic...
This paper compares two alternative models for autocorrelated count time series. The first model can...
This paper compares two alternative models for autocorrelated count time series. The first model can...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Integer-valued correlated stochastic processes, which we often meet in the real world, are of major...
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...
A flexible semi-parametric model for autocorrelated count data is proposed. Unlike earlier models av...
Abstract: Analysis of time series of counts is an important research topic in many bio-medical and s...
Some problems of' statistical inference for discrete-valued time series are investigated in this stu...
This article develops the theory and methods for modeling a stationary count time series via Gaussia...
Models of count time series with denumerable states space with conditional probability distributios ...
This thesis seeks to produce new methods for the analysis and prediction of counting processes throu...
Count time series, Parameter-driven, Observation-driven, Autocorrelation, Overdispersion, Diagnostic...
This paper compares two alternative models for autocorrelated count time series. The first model can...
This paper compares two alternative models for autocorrelated count time series. The first model can...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
This paper introduces and evaluates new models for time series count data. The Autoregressive Condit...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Integer-valued correlated stochastic processes, which we often meet in the real world, are of major...
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...
A flexible semi-parametric model for autocorrelated count data is proposed. Unlike earlier models av...
Abstract: Analysis of time series of counts is an important research topic in many bio-medical and s...
Some problems of' statistical inference for discrete-valued time series are investigated in this stu...
This article develops the theory and methods for modeling a stationary count time series via Gaussia...
Models of count time series with denumerable states space with conditional probability distributios ...
This thesis seeks to produce new methods for the analysis and prediction of counting processes throu...
Count time series, Parameter-driven, Observation-driven, Autocorrelation, Overdispersion, Diagnostic...