Course Overview
  • Course Introduction
  • Walk-through of a data science project
  • Starting with R and data
Modeling and Machine Learning
  • Mapping Business to Machine Learning Tasks
  • Validating Models
  • Your Feedback is Valuable
  • Naive Bayes: background
  • Naive Bayes: practice
  • Linear Regression: background
  • Linear Regression: practice
  • Logistic Regression: background
  • Logistic Regression: practice
  • Decision Trees and Random Forest: background
  • Random Forest: practice
  • Generalized Additive Models
  • Support Vector Machines
  • Gradient Boosting
  • Regularization for Linear and Logistic Regression
  • Evaluating Models
Data
  • Loading Data in R
  • Visualizing Data
  • Missing Values
  • The Shape of Data
  • Dealing with Categorical Variables
  • Useful Data Transformations
Moving On
  • Recommended Books
  • Further Topics
  • Next Steps