
Episode 12: Your Machine Learning Solves The Wrong Problem
High Signal: Data Science | Career | AI
00:00
Exploring Causal Machine Learning
This chapter introduces the concept of causal machine learning (Causal ML) and its significance in refining traditional machine learning questions. It emphasizes the need for experimentation to understand the causal effects of actions on outcomes, highlighting the distinctions between problem definition, data collection, and model building. Furthermore, it discusses the tools and methodologies used in Causal ML, including Generalized Random Forests, while stressing the importance of effective communication of results to decision-makers.
Transcript
Play full episode