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Learning Bayesian Networks: A Copula Approach for Mixed-Type Data
Federico Castelletti
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Department of Statistical Science
Faculty of Economics
Academic Field: Statistics and Mathematical Methods For Decisions
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Social Sciences
United Nations
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Social Survey
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Medical Student
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Psychology
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Mental Health
100%
Psychology
Copula
100%
Mental Health
100%
Psychology
100%
Computer Science
Learning Bayesian Network
100%
Binary Variable
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Bayesian Methodology
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Discrete Variable
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Economics, Econometrics and Finance
Bayesian
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Mental Disorder
50%
Mathematics
Several Variables
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