Count data appears in many research fields and exhibits certain features that make modeling difficult. Most popular approaches to modeling count data can be classified into observation and parameter-driven models. In this paper, we review two models from these classes: the log-linear multivariate conditional intensity model (also referred to as an integer-valued generalized autoregressive conditional heteroskedastic model) and the non-linear state-space model for count data. We compare these models in terms of forecasting performance on simulated data and two real datasets. In simulations, we consider the case of model misspecification. We find that both models have advantages in different situations, and we discuss the pros and cons of inf...
This paper introduces a new multivariate model for time series count data. The Multivariate Autoregr...
An adequate statistical methodology is required for modeling multivariate time series of counts. The...
In this article, we consider two univariate random environment integer-valued autoregressive process...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Contains fulltext : 234930.pdf (Publisher’s version ) (Open Access
Contains fulltext : 239927.pdf (Publisher’s version ) (Open Access
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...
Non–negative integer–valued time series are often encountered in many different scientific fields, u...
Models of count time series with denumerable states space with conditional probability distributios ...
Models of count time series with denumerable states space with conditional probability distributios ...
This paper introduces a new multivariate model for time series count data. The Multivariate Autoregr...
An adequate statistical methodology is required for modeling multivariate time series of counts. The...
In this article, we consider two univariate random environment integer-valued autoregressive process...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Count data appears in many research fields and exhibits certain features that make modeling difficul...
Contains fulltext : 234930.pdf (Publisher’s version ) (Open Access
Contains fulltext : 239927.pdf (Publisher’s version ) (Open Access
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...
Non–negative integer–valued time series are often encountered in many different scientific fields, u...
Models of count time series with denumerable states space with conditional probability distributios ...
Models of count time series with denumerable states space with conditional probability distributios ...
This paper introduces a new multivariate model for time series count data. The Multivariate Autoregr...
An adequate statistical methodology is required for modeling multivariate time series of counts. The...
In this article, we consider two univariate random environment integer-valued autoregressive process...