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will be and what theories and methods you will apply. It must be clear from the application in what way the postdoctoral project will add to your competence and scientific development. The motivation
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: a description of research topic and question(s) discussion of relevant theory and empirical materials/data description of planned methods progress plan references/bibliography The quality
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: The topic of the Master’s degree must be of relevance to the job description Preference will be given to candidates with a multi-disciplinary background consisting of both control theory (or related fields
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specified) Project description (3-5 pages) including: A presentation of the research topic (including discussion of relevant theory and previous research), An outline of the research design, A plan for the
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internationally. The group also seeks to contribute to knowledge production in interdisciplinary democratic theory, innovative methodological and democratic experiments, and to maintain a close collaboration with
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the Research Council of Norway. In this project, we will use advanced time-lapse imaging, numerical simulations, and reactive mixing theories to better understand and predict the role of fluid mixing as a driver
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), relevant theory and a preliminary plan for data collection (source, methods and statistics) an account of expected outcome, preferably with verifiable hypotheses a time schedule list of partners
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addressing measurement quality issues related to respondent non-compliance in ecological momentary assessment, or exploring the use of machine learning techniques to aid the estimation of item response theory
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project bridges two foundational fields in computer science and mathematics: Theory of Algorithms and Extremal Combinatorics. By integrating these areas, the project seeks to develop innovative
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-compliance in ecological momentary assessment, or exploring the use of machine learning techniques to aid the estimation of item response theory (IRT) models in small samples. The ideal candidate has prior