Simulation-based expert prior elicitation

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Method and software development

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This thesis focuses on the specification of prior distributions for parameters in Bayesian models. In particular, it addresses the formulation of informative priors derived from expert knowledge, a research area referred to as expert prior elicitation. This thesis contributes to the field by introducing a novel simulation-based method that builds on recent advances in predictive prior elicitation. The proposed method is hybrid and model-agnostic, developed within a modular framework that facilitates flexible adaption and extension. Its performance is systematically evaluated across several simulation studies. In addition, we introduce elicito, an open-source Python package that implements the proposed method. The software adheres to the FAIR principles of research software engineering and is distributed via PyPI and conda-forge. Comprehensive documentation, including API references and tutorials, is hosted on a project website. The source code is openly available on GitHub, where it is actively maintained and version-controlled. A continuous integration testing framework is incorporated for quality assurance. Future research directions include validating the method on complex, real-world case studies and expanding its implementation into a fully interoperable software ecosystem for expert prior elicitation.

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Expert prior elicitation, Bayesian workflow, Prior specification, Informative priors, Elicito

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A-priori-Verteilung, Bayes-Verfahren, Prognoseverfahren

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