Multivariate count data are commonly analysed by using Poisson distributions with varying intensity parameters, resulting in a random-effects model. In the analysis of a data set on the frequency of different emotion experiences we find that a Poisson model with a single random effect does not yield an adequate fit. An alternative model that requires as many random effects as emotion categories requires high-dimensional integration and the estimation of a large number of parameters. As a solution to these computational problems, we propose a factor-analytic Poisson model and show that a two-dimensional factor model fits the reported data very well. Moreover, it yields a substantively satisfactory solution: one factor describing the degree o...
Most of the currently used latent trait models are designed for testing situations, where subjects a...
Emotions are part and parcel of the human condition, but their nature is debated. Three broad classe...
Structural equation models are commonly used to analyze 2-mode data sets, in which a set of objects ...
Multivariate count data are commonly analysed by using Poisson distributions with varying intensity ...
The paper presents a multilevel framework for the analysis of multivariate count data that are obser...
We develop a general class of factor-analytic models for the analysis of multivariate (truncated) co...
This paper discusses the specification and extimation of random effects count data models. A new mul...
AbstractWe develop a general class of factor-analytic models for the analysis of multivariate (trunc...
The Rasch Poisson Counts model is an appropriate item response theory (IRT) model for analyzing many...
We introduce an approach for incorporating dependence between outcomes from a Poisson regression mod...
People experience the same event but do not feel the same way. Such individual differences in emotio...
Infrequent count data in psychological research are commonly modelled using zeroinflated Poisson reg...
In emotion dynamic research, one distinguishes various elementary emotion dynamic features, which ar...
© 2017 American Psychological Association. In emotion dynamic research, one distinguishes various el...
ABSTRACT This paper explains how Poisson regression can be used in studies in which the dependent va...
Most of the currently used latent trait models are designed for testing situations, where subjects a...
Emotions are part and parcel of the human condition, but their nature is debated. Three broad classe...
Structural equation models are commonly used to analyze 2-mode data sets, in which a set of objects ...
Multivariate count data are commonly analysed by using Poisson distributions with varying intensity ...
The paper presents a multilevel framework for the analysis of multivariate count data that are obser...
We develop a general class of factor-analytic models for the analysis of multivariate (truncated) co...
This paper discusses the specification and extimation of random effects count data models. A new mul...
AbstractWe develop a general class of factor-analytic models for the analysis of multivariate (trunc...
The Rasch Poisson Counts model is an appropriate item response theory (IRT) model for analyzing many...
We introduce an approach for incorporating dependence between outcomes from a Poisson regression mod...
People experience the same event but do not feel the same way. Such individual differences in emotio...
Infrequent count data in psychological research are commonly modelled using zeroinflated Poisson reg...
In emotion dynamic research, one distinguishes various elementary emotion dynamic features, which ar...
© 2017 American Psychological Association. In emotion dynamic research, one distinguishes various el...
ABSTRACT This paper explains how Poisson regression can be used in studies in which the dependent va...
Most of the currently used latent trait models are designed for testing situations, where subjects a...
Emotions are part and parcel of the human condition, but their nature is debated. Three broad classe...
Structural equation models are commonly used to analyze 2-mode data sets, in which a set of objects ...