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Lecture
Causal Inference: Adjustment Sets
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Causal Inference: Estimands and Ontologies
Explores causal inference, emphasizing the importance of committing to an ontology for drawing causal inferences and selecting appropriate estimands.
Causal Effects Bounds: Sensitivity Parameters on Risk Difference Scale
Explores deriving bounds for causal effects using sensitivity parameters on the risk difference scale, addressing limitations and proposing new approaches.
Region of Convergence: Single Pole
Covers the concept of Region of Convergence for signals with single poles.
Higher Education and Successful Marriage
Analyzes the causal effect of higher education on successful marriage and covers criteria for causal inference.
Causal Inference in Cognitive Neuroscience
Explores the promises of causal inference in cognitive neuroscience using neurostimulation approaches to understand brain-behavior relationships.
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Front Door Criterion: Adjustment Formula
Explores the front door criterion for valid adjustment sets in causal inference.
Disentangling Confounding and Nonsense Associations
Explores statistical dependence, confounding, and causal inference methods, emphasizing the distinction between existing and new approaches.
Causal Inference & Directed Graphs
Explores causal inference, directed graphs, and fairness in algorithms, emphasizing conditional independence and the implications of DAGs.
Model Selection and Local Geometry
Explores model selection challenges in causal models and the impact of local geometry on statistical inference.