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Dive into the research topics where Damazo Twebaze Kadengye is active.

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Featured researches published by Damazo Twebaze Kadengye.


Behavior Research Methods | 2013

A generalized longitudinal mixture IRT model for measuring differential growth in learning environments.

Damazo Twebaze Kadengye; Eva Ceulemans; Wim Van Den Noortgate

This article describes a generalized longitudinal mixture item response theory (IRT) model that allows for detecting latent group differences in item response data obtained from electronic learning (e-learning) environments or other learning environments that result in large numbers of items. The described model can be viewed as a combination of a longitudinal Rasch model, a mixture Rasch model, and a random-item IRT model, and it includes some features of the explanatory IRT modeling framework. The model assumes the possible presence of latent classes in item response patterns, due to initial person-level differences before learning takes place, to latent class-specific learning trajectories, or to a combination of both. Moreover, it allows for differential item functioning over the classes. A Bayesian model estimation procedure is described, and the results of a simulation study are presented that indicate that the parameters are recovered well, particularly for conditions with large item sample sizes. The model is also illustrated with an empirical sample data set from a Web-based e-learning environment.


Behavior Research Methods | 2012

Simple imputation methods versus direct likelihood analysis for missing item scores in multilevel educational data

Damazo Twebaze Kadengye; Wilfried Cools; Eva Ceulemans; Wim Van Den Noortgate

Missing data, such as item responses in multilevel data, are ubiquitous in educational research settings. Researchers in the item response theory (IRT) context have shown that ignoring such missing data can create problems in the estimation of the IRT model parameters. Consequently, several imputation methods for dealing with missing item data have been proposed and shown to be effective when applied with traditional IRT models. Additionally, a nonimputation direct likelihood analysis has been shown to be an effective tool for handling missing observations in clustered data settings. This study investigates the performance of six simple imputation methods, which have been found to be useful in other IRT contexts, versus a direct likelihood analysis, in multilevel data from educational settings. Multilevel item response data were simulated on the basis of two empirical data sets, and some of the item scores were deleted, such that they were missing either completely at random or simply at random. An explanatory IRT model was used for modeling the complete, incomplete, and imputed data sets. We showed that direct likelihood analysis of the incomplete data sets produced unbiased parameter estimates that were comparable to those from a complete data analysis. Multiple-imputation approaches of the two-way mean and corrected item mean substitution methods displayed varying degrees of effectiveness in imputing data that in turn could produce unbiased parameter estimates. The simple random imputation, adjusted random imputation, item means substitution, and regression imputation methods seemed to be less effective in imputing missing item scores in multilevel data settings.


Applied Psychological Measurement | 2014

Direct likelihood analysis and multiple imputation for missing item scores in multilevel cross-classification educational data

Damazo Twebaze Kadengye; Eva Ceulemans; Wim Van Den Noortgate

Multiple imputation (MI) has become a highly useful technique for handling missing values in many settings. In this article, the authors compare the performance of a MI model based on empirical Bayes techniques to a direct maximum likelihood analysis approach that is known to be robust in the presence of missing observations. Specifically, they focus on handling of missing item scores in multilevel cross-classification item response data structures that may require more complex imputation techniques, and for situations where an imputation model can be more general than the analysis model. Through a simulation study and an empirical example, the authors show that MI is more effective in estimating missing item scores and produces unbiased parameter estimates of explanatory item response theory models formulated as cross-classified mixed models.


Journal of Experimental Education | 2015

Modeling Growth in Electronic Learning Environments Using a Longitudinal Random Item Response Model

Damazo Twebaze Kadengye; Eva Ceulemans; Wim Van Den Noortgate


Archive | 2014

MEASUREMENT, STATISTICS, AND RESEARCH DESIGN Modeling Growth in Electronic Learning Environments Using a Longitudinal Random Item Response Model

Damazo Twebaze Kadengye; Eva Ceulemans; Wim Van Den Noortgate


Archive | 2013

Application of Random Item IRT Models to Longitudinal Data from Electronic Learning Environments

Damazo Twebaze Kadengye; Wim Van Den Noortgate; Eva Ceulemans


Archive | 2013

A mixture IRT growth model for longitudinal data from e-learning environments

Damazo Twebaze Kadengye; Eva Ceulemans; Wim Van Den Noortgate


Archive | 2012

Multiple imputation for missing binary item scores in multilevel cross-classified educational data when the Analysis and Imputation models differ

Damazo Twebaze Kadengye; Eva Ceulemans; Wim Van Den Noortgate


Archive | 2012

Missing item scores in multilevel cross-classified educational data: An empirical Bayes Multiple Imputation approach

Damazo Twebaze Kadengye; Eva Ceulemans; Wim Van Den Noortgate


Archive | 2010

Statistical Modeling of e-Learning Data with Missing Response Values

Damazo Twebaze Kadengye; Wim Van Den Noortgate; Eva Ceulemans

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Eva Ceulemans

Katholieke Universiteit Leuven

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Wim Van Den Noortgate

Katholieke Universiteit Leuven

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Wilfried Cools

Katholieke Universiteit Leuven

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