A novel Bayesian modelling framework for response accuracy (RA), response times (RTs) and other process data is proposed. In a Bayesian covariance structure modelling approach, nested and crossed dependences within test-taker data (e.g., within a testlet, between RAs and RTs for an item) are explicitly modelled. The local dependences are modelled directly through covariance parameters in an additive covariance matrix. The inclusion of random effects (on person or group level) is not necessary, which allows constructing parsimonious models for responses and multiple types of process data. Bayesian Covariance Structure Models (BCSMs) are presented for various well-known dependence structures. Through truncated shifted inverse-gamma priors, cl...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
The aim of the article is to propose a Bayesian estimation through Markov chain Monte Carlo of a mu...
The aim of the article is to propose a Bayesian estimation through Markov chain Monte Carlo of a mul...
A multivariate generalization of the log-normal model for response times is proposed within an innov...
In a Bayesian Covariance Structure Model (BCSM) the dependence structure implied by random item para...
The article presents Bayesian hierarchical modeling frameworks for two measurement models for visual...
Human response time (RT) data are widely used in experimental psychology to evaluate theories of men...
Response times on test items are easily collected in modern computerized testing. When collecting bo...
Current modeling of response times on test items has been strongly influenced by the paradigm of exp...
Current modeling of response times on test items has been strongly influenced by the paradigm of exp...
Understanding the relationship between person, item, and testlet covariates and person, item, and te...
Two marginal one-parameter item response theory models are introduced, by integrating out the latent...
Educational studies are often focused on growth in student performance and background variables that...
Inferences on ability in item response theory (IRT) have been mainly based on item responses while r...
A Bayesian response surface updating procedure is applied in order to update covariance functions fo...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
The aim of the article is to propose a Bayesian estimation through Markov chain Monte Carlo of a mu...
The aim of the article is to propose a Bayesian estimation through Markov chain Monte Carlo of a mul...
A multivariate generalization of the log-normal model for response times is proposed within an innov...
In a Bayesian Covariance Structure Model (BCSM) the dependence structure implied by random item para...
The article presents Bayesian hierarchical modeling frameworks for two measurement models for visual...
Human response time (RT) data are widely used in experimental psychology to evaluate theories of men...
Response times on test items are easily collected in modern computerized testing. When collecting bo...
Current modeling of response times on test items has been strongly influenced by the paradigm of exp...
Current modeling of response times on test items has been strongly influenced by the paradigm of exp...
Understanding the relationship between person, item, and testlet covariates and person, item, and te...
Two marginal one-parameter item response theory models are introduced, by integrating out the latent...
Educational studies are often focused on growth in student performance and background variables that...
Inferences on ability in item response theory (IRT) have been mainly based on item responses while r...
A Bayesian response surface updating procedure is applied in order to update covariance functions fo...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
The aim of the article is to propose a Bayesian estimation through Markov chain Monte Carlo of a mu...
The aim of the article is to propose a Bayesian estimation through Markov chain Monte Carlo of a mul...