9.1 - Difference-in-Differences Motivation and Preliminaries
In this part of the Introduction to Causal Inference course, we motivate and introduce the preliminaries for causal effect estimation via difference-in-differences. Please post questions in the YouTube comments section.
Introduction to Causal Inference Course Website: causalcourse.com
Course Lectures Playlist: https://www.youtube.com/watch?v=tT8xLRS_cRQ&list=PLoazKTcS0Rzb6bb9L508cyJ1z-U9iWkA0&index=58
Видео 9.1 - Difference-in-Differences Motivation and Preliminaries канала Brady Neal - Causal Inference
Introduction to Causal Inference Course Website: causalcourse.com
Course Lectures Playlist: https://www.youtube.com/watch?v=tT8xLRS_cRQ&list=PLoazKTcS0Rzb6bb9L508cyJ1z-U9iWkA0&index=58
Видео 9.1 - Difference-in-Differences Motivation and Preliminaries канала Brady Neal - Causal Inference
Показать
Комментарии отсутствуют
Информация о видео
27 октября 2020 г. 18:00:11
00:06:03
Другие видео канала
3.6 - Chains and Forks5.3 - The Frontdoor Adjustment11.6 - Parametric Interventions for Causal Discovery7.6 - More Flexible Sensitivity Analysis9.4 - Problems with Difference-in-Differences12.3 - Transportability of Causal Effects Across Populations3.4 - Causal Graphs9.3 - Difference-in-Differences Assumptions and Proof6.1 - CATE Preliminaries and Outline10.1 - Causal Discovery Motivation and Outline10.7 - Nonlinear Additive Noise Setting for Causal Discovery2.10 - Estimands, Estimates, and the Identification-Estimation Flowchart12.2 - Causal Insights for Transfer Learning3.9 - The Flow of Association and Causation in Graphs4.9 - M-Bias and Conditioning on Descendants of Treatment10.5 - Impossibility Results for Independence-Based and Nonparametric Causal Discovery4.10 - A Complete Graphical Example with Estimation14.3 - Mediation10.6 - Linear Non-Gaussian Setting for Causal Discovery12.1 - Transfer Learning, Domain Generalization, and Covariate Shift