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educational technology. You will become part of the Department of Methodology and Statistics and will join an active research group in psychometrics. This project is supervised by dr. Maria Bolsinova, dr
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, and prof. Jeroen Vermunt. Background With the advance of computerized assessments, process data such as response times are now commonly available when respondents take psychological or educational tests
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members, you'll conduct research, publish papers, and complete a PhD thesis. Alongside this, you'll dedicate around 20% of your time to teaching at various academic levels and potentially supervising theses
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staff position within a Research Infrastructure? No Offer Description Project Description We are looking for a talented and ambitious PhD candidate in mixed methods research to develop a novel mixed
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- and well-being researchers, large collections of data resulting from two empirical studies will be analyzed to develop methods and software that can and will be used by many researchers. The first PhD
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will work at the Department of Developmental Psychology. The main task is to develop, coordinate, and execute a PhD project within the research program mentioned above, publish the research results
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techniques on interlocutors’ ability to achieve (better) interpersonal understanding. You will write a dissertation on the combined studies. We also ask you to spend 10% of your time on teaching in
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., policy makers and mental health care professionals) Teaching and supervision (e.g., supervision of bachelor theses, max 0.2 FTE) Requirements Specific Requirements We look for a highly motivated
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. Linnet Taylor as promotor, and will be spending 80% of their time on research, with the remaining 20% on teaching. The PhD candidate will be working within TILT, an interdisciplinary institute working
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Love Nonlinear Social Science”. The goal of this project is to develop statistical methods based on Bayesian Gaussian processes that allow us to combine different sources of information (prior and data