Lecture 9: Likelihood Methods 1: Discrete Choice, GLM and Computational Methods
Materials here: https://github.com/paulgp/applied-met... Please note that I've cut out questions from students, so some of the cuts in the video might feel slightly disjointed!

▶︎
Lecture 10: Likelihood Methods II: Multiple Discrete Choices

▶︎
Lecture 12: Likelihood Methods IV: Hierarchical Models + Bayesian Shrinkage

▶︎
Lecture 13: Canonical Methods I: Difference-in-Differences

▶︎
Lecture 11: Likelihood Methods III: Duration Models

▶︎
From Child Prodigy to Winning Fields Medal, Nobel of Math

▶︎
Lecture 1: Potential Outcomes and Directed Acyclic Graphs

▶︎
General relativity from first principles – Adam Brown

▶︎
What Americans Need to Understand About China | The Ezra Klein Show

▶︎
Statistical Rethinking 2026 - Lecture A01 - Introduction to Bayesian Workflow

▶︎
Is Russia Actually Losing?

▶︎
Neil deGrasse Tyson: The Whistleblowers Were Right About Aliens

▶︎
6. Monte Carlo Simulation

▶︎
Lecture 15: Canonical Research Designs III: Instrumental Variables I

▶︎
Explaining generalized linear models (GLMs) | VNT #15

▶︎
How to increase your vocabulary: Live English Class

▶︎
How To Think SO Clearly People Assume You're Brilliant

▶︎
JavaScript Tutorial For Beginners | JavaScript Training | JavaScript Course | Intellipaat

▶︎
The Scariest Chart In Electrical Engineering

▶︎
