Bijan Mazaheri: Synthetic Potential Outcomes and the Hierarchy of Causal Identifiability

Bijan Mazaheri: Synthetic Potential Outcomes and the Hierarchy of Causal Identifiability

David Hirshberg: Balance in Causal Inference: Poststratification to Regularized Riesz RepresentersПодробнее

David Hirshberg: Balance in Causal Inference: Poststratification to Regularized Riesz Representers

Anish Agarwal: Synthetic Combinations: A Causal Inference Framework for Combinatorial InterventionsПодробнее

Anish Agarwal: Synthetic Combinations: A Causal Inference Framework for Combinatorial Interventions

Identifiability conditions for causal inference frameworkПодробнее

Identifiability conditions for causal inference framework

POL SCI 701 - 04 Causality: The Potential Outcomes FrameworkПодробнее

POL SCI 701 - 04 Causality: The Potential Outcomes Framework

Camelia Hssaine - What to do When You Can't A/B test: Exploring Different Causal Inference MethodsПодробнее

Camelia Hssaine - What to do When You Can't A/B test: Exploring Different Causal Inference Methods

Jilles Vreeken: Interpretability and CausalityПодробнее

Jilles Vreeken: Interpretability and Causality

potential outcome modelПодробнее

potential outcome model

Causation in econometrics - selection bias and average causal effectПодробнее

Causation in econometrics - selection bias and average causal effect

57 - Causation in econometrics - selection bias and average causal effectПодробнее

57 - Causation in econometrics - selection bias and average causal effect

2 - Potential Outcomes (Week 2)Подробнее

2 - Potential Outcomes (Week 2)

Susan Athey: Synthetic Difference in DifferencesПодробнее

Susan Athey: Synthetic Difference in Differences

Jennifer Hill - Deep Down, Everyone Wants to be CausalПодробнее

Jennifer Hill - Deep Down, Everyone Wants to be Causal