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Linear, Generalized, and Mixed/Multilevel models with R

Course philosophy

Introductory statistics are typically taught as a sequence of disconnected tests and protocols (e.g. t-test, ANOVA, ANCOVA, regression) while, in reality, all these analyses can be seen as special cases of a more general linear model. In this course, we will introduce Generalised Linear Models as a unified, coherent, and easily extendable framework for the analysis of many different types of data, including Normal (Gaussian), binary, and discrete (count) responses, and both categorical (factors) and continuous predictors.



Slides (PDF)

Interactive tutorials, R scripts, etc

https://pakillo.github.io/LM-GLM-GLMM-intro/

LICENSE

These materials are released with a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License. You can use/adapt them for non-commercial purposes as long as you mention the source (this repository) and share the materials with a similar license.

Francisco Rodriguez-Sanchez
https://frodriguezsanchez.net