Lecture 0
|
Welcome to SURE: Background and overview
|
HTML
|
Rmd
|
Lecture 1
|
Exploring data: Into the tidyverse
|
HTML
|
Rmd
|
Lecture 2
|
Data Visualization: The grammar of graphics and ggplot2
|
HTML
|
Rmd
|
Lecture 3
|
Data Visualization: Visualizing 1D categorical and continuous variables
|
HTML
|
Rmd
|
Lecture 4
|
Data Visualization: Visualizing 2D categorical and continuous by categorical
|
HTML
|
Rmd
|
Lecture 5
|
Data Visualization: Density estimation
|
HTML
|
Rmd
|
Lecture 6
|
Clustering: K-means
|
HTML
|
Rmd
|
Lecture 7
|
Clustering: Hierarchical clustering
|
HTML
|
Rmd
|
Lecture 8
|
Presentations: And working with xaringan and xaringanthemer
|
HTML
|
Rmd
|
Lecture 9
|
Model-based clustering: Gaussian mixture models
|
HTML
|
Rmd
|
Lecture 10
|
Supervised Learning: Model assessment vs selection
|
HTML
|
Rmd
|
Lecture 11
|
Supervised Learning: Linear regression
|
HTML
|
Rmd
|
Lecture 12
|
Supervised Learning: Intro to variable selection
|
HTML
|
Rmd
|
Lecture 13
|
Supervised Learning: Regularization
|
HTML
|
Rmd
|
Lecture 14
|
Dimension Reduction: Principal components analysis (PCA)
|
HTML
|
Rmd
|
Lecture 15
|
Supervised Learning: Principal component regression and partial least squares
|
HTML
|
Rmd
|
Lecture 16
|
Supervised Learning: Generalized linear models (GLMs)
|
HTML
|
Rmd
|
Lecture 17
|
Supervised Learning: Logistic regression
|
HTML
|
Rmd
|
Lecture 18
|
Supervised Learning: From nonparametric regression to GAMs
|
HTML
|
Rmd
|
Lecture 19
|
Machine learning: Decision trees
|
HTML
|
Rmd
|
Lecture 20
|
Machine learning: Random forests and gradient-boosted trees
|
HTML
|
Rmd
|
Lecture 21
|
Advanced topics: Multinomial logistic regression and multilevel models
|
HTML
|
Rmd
|
Lecture 22
|
Advanced topics: More fun with classification
|
HTML
|
Rmd
|