An item response theory (IRT) model is used as a measurement error model for the dependent variable of a multilevel model where tests or questionnaires consisting of separate items are used to perform a measurement error analysis. The advantage of using latent scores as dependent variables of a multilevel model is that it offers the possibility of modeling response variation and measurement error and separating the influence of item difficulty and ability level. The two-parameter normal ogive model is used for the IRT model. It is shown that the stochastic EM (expectation-maximization) (SEM) algorithm can be used to estimate the parameters that are close to the maximum likelihood estimated. It turns out that this algorithm is easily impleme...
Modelling complex cognitive and psychological outcomes in, for example, educational assessment led t...
Statistical properties of the ability level estimate ( ) in item response theory (IRT) were investig...
It is shown that measurement error in predictor variables can be modeled using item response theory ...
An item response theory (IRT) model is used as a measurement error model for the dependent variable ...
A two-level regression model is imposed on the ability parameters in an item response theory (IRT) m...
In this article, a two-level regression model is imposed on the ability parameters in an item respon...
In this article, atwo-level regression model is imposed on the ability parameters in an item respons...
This article presents an application of a stochastic approximation expectation maximization (EM) alg...
A two-level regression model is imposed on the ability parameters in an item response theory (IRT) m...
This paper focuses on handling measurement error in predictor variables using item response theory (...
textRecently, researchers have reformulated Item Response Theory (IRT) models into multilevel models...
none3siTitolo della collana: Contributions to StatisticsItem response theory (IRT) models have been ...
Variance component models are generally accepted for the analysis of hierarchical structured data. A...
A structural multilevel model is presented where some of the variables cannot be observed directly b...
In educational and psychological measurement, the study of test dimensionality is a fundamental issu...
Modelling complex cognitive and psychological outcomes in, for example, educational assessment led t...
Statistical properties of the ability level estimate ( ) in item response theory (IRT) were investig...
It is shown that measurement error in predictor variables can be modeled using item response theory ...
An item response theory (IRT) model is used as a measurement error model for the dependent variable ...
A two-level regression model is imposed on the ability parameters in an item response theory (IRT) m...
In this article, a two-level regression model is imposed on the ability parameters in an item respon...
In this article, atwo-level regression model is imposed on the ability parameters in an item respons...
This article presents an application of a stochastic approximation expectation maximization (EM) alg...
A two-level regression model is imposed on the ability parameters in an item response theory (IRT) m...
This paper focuses on handling measurement error in predictor variables using item response theory (...
textRecently, researchers have reformulated Item Response Theory (IRT) models into multilevel models...
none3siTitolo della collana: Contributions to StatisticsItem response theory (IRT) models have been ...
Variance component models are generally accepted for the analysis of hierarchical structured data. A...
A structural multilevel model is presented where some of the variables cannot be observed directly b...
In educational and psychological measurement, the study of test dimensionality is a fundamental issu...
Modelling complex cognitive and psychological outcomes in, for example, educational assessment led t...
Statistical properties of the ability level estimate ( ) in item response theory (IRT) were investig...
It is shown that measurement error in predictor variables can be modeled using item response theory ...