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present. Although methods exist to balance early diagnosis benefits and false positive risks for single disease tests, such methods are not available for multi-disease tests. In the MERIT project, we will
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a deeply synergistic endeavor: foundational AI research on methods that can accelerate scientific discovery, where domain insights from the natural sciences drive the development of better AI. We seek
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the department of Methods & Statistics at Utrecht University. As an Assistant Professor you are involved in teaching and research activities, and as a core member of the ODISSEI Social Data Science (SoDa) team
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and with societal stakeholders to achieve real-world impact. You will also participate in joint training programmes on interdisciplinary and transdisciplinary research methods, citizen engagement, and
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interdisciplinary and brings together methods and techniques from philosophy, logic and linguistics. You will be conducting research within the Provability work package. The overall goal of this work package is to
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together methods and techniques from philosophy, logic and linguistics. You will be conducting research within the Propositions work package. The overall goal of this work package is to develop an account of
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to the intensional paradoxes. The project is highly interdisciplinary and brings together methods and techniques from philosophy, logic and linguistics. PhD 1 will be conducting research within the Property work
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on its own methodological traditions, faculty members necessarily apply a wide range of methods and frequently rely on meta-analysis, event history modelling, fs/QCA, and ethnographic observations. RSM
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development of AI and avoiding its misuse. These issues might be exacerbated by the lack of formal guarantees in explaining the behavior of AI systems in terms of human-interpretable, high-level concepts. While
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team as a PhD candidate to work on beyond the state-of-the-art model distillation and robustness methods, enabling efficient, reliable inference for challenging real-world problems in the semiconductor