3.6 - Chains and Forks
In this part of the Introduction to Causal Inference course, we cover the flow of association in chains and forks. 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=Q9CAtMpuWCA&list=PLoazKTcS0Rzb6bb9L508cyJ1z-U9iWkA0&index=24
Видео 3.6 - Chains and Forks канала Brady Neal - Causal Inference
Introduction to Causal Inference Course Website: causalcourse.com
Course Lectures Playlist: https://www.youtube.com/watch?v=Q9CAtMpuWCA&list=PLoazKTcS0Rzb6bb9L508cyJ1z-U9iWkA0&index=24
Видео 3.6 - Chains and Forks канала Brady Neal - Causal Inference
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14 сентября 2020 г. 18:00:05
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