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or Math, or BA/BS in a related field with significant coursework in Economics, Math, and Statistics Excellent research and writing skills Knowledge of statistics/econometrics Knowledge of statistical
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Internal Number: A-177400-3 General Description Salary: $85,000 - $90,000 a year The Department of Economics at Johns Hopkins University invites applications for two postdoctoral fellowships in econometrics
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. QualificationsEmpty heading Education: Bachelor?s degree in computer science, machine learning, applied mathematics, econometrics, statistics, engineering, physics, or related discipline required Masters in
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, Denmark [map ] Subject Areas: Nonparametric estimation, Machine learning methods in econometrics and time series analysis, Statistics for high-dimensional data, Stochastic volatility models Appl Deadline
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as an assistant will conduct didactic classes (in Polish), as well as research in the field of application of statistical and econometric methods in economics and finance Where to apply Website https
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Applied Economics (Ref: FBM231103) Job Description Candidates with teaching interest and key research strength in one or more of the following subject areas: Statistics, Applied Mathematics, Econometrics
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and statistics in a higher education institution in Romania Specific Requirements advanced knowledge of econometrics and programming in Gauss and/or Matlab and/or Python and/or R is an advantage
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. The Programme has established recognised strengths in applied economics and behavioural economics, alongside core areas of econometrics, macroeconomics, and development. Faculty members regularly publish in
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applied economics and behavioural economics, alongside core areas of econometrics, macroeconomics, and development. Faculty members regularly publish in leading international journals, engage in
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to design and implement machine learning analyses of the results of evaluations of social and economic programs. The role combines modern machine learning with applied econometrics to estimate program impacts