Statistical Methods & Thinking

Episode 10 | From Chi-Square to GLMs: Beyond Linear Regression

36 min · 2 de feb de 2026
portada del episodio Episode 10 | From Chi-Square to GLMs: Beyond Linear Regression

Descripción

This episode is about working with categorical outcomes—questions where results fall into categories rather than a numeric scale. We learn how to check whether two variables are related, how to model the chance of a “yes/no” outcome using multiple predictors, and how to compare different modeling choices. We finish with simple ways to judge how well a model fits and whether a simpler or more detailed model is the better choice.

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episode Episode 11 | Finding Structure in Multivariate Data artwork

Episode 11 | Finding Structure in Multivariate Data

This episode is about what to do when your data has many variables at once. We start with the basic idea of how variables “move together” (correlation and covariance), and why that matters for understanding patterns in real datasets. Then we introduce dimension reduction—ways to compress lots of information into a few summary features, so you can see the main structure without getting lost in details. We explain how these methods find the directions where the data varies most, and how a simple “rotation” can make the results easier to interpret. We wrap up with practical rules of thumb for deciding how many components to keep, and a quick preview of how these ideas connect to grouping similar observations and classifying new cases.

2 de feb de 202644 min