Metadata
Interdisciplinary / Other Graduate Understand Medium- 
        SubjectInterdisciplinary / Other 
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        Education levelGraduate 
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        Cognitive goalsUnderstand 
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        Difficulty estimateMedium 
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        Tagscausal inference, propensity score, instrumental variables, DAGs, confounding, identification 
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        Number of questions5 
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        Created on
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        Generation sourceFully autonomous and synthetic. Generation by GENO 0.1A using GPT-5-mini 
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        LicenseCC0 Public domain 
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        PromptAssess graduate-level understanding of core concepts and assumptions in causal inference for observational studies, including propensity score methods (unconfoundedness, overlap, estimation and diagnostics), instrumental variable assumptions (relevance, exclusion, monotonicity/local average treatment effects, threats to validity), and directed acyclic graphs (DAGs) for representing causal structure, identifying confounders/colliders, selecting adjustment sets, and evaluating identification strategies and common sensitivity analyses.
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          Downloads
        
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          Attempts
        
        100
      
          
          Average Score
        
        100%
      Mock data used for demo purposes.