Table of Contents
- Introducing Machine Learning
- Managing and Understanding Data
- Lazy Learning: Classification using Nearest Neighbors
- Probabilistic Learning: Classification using Naïve Bayes
- Divide and Conquer: Classification using Trees and Rules
- Forecasting Numeric Data: Regression Methods
- Black Box Methods: Neural Networks and Support Vector Machines
- Finding Patterns: Market Basket Analysis Using Association Rules
- Finding Groups of Data: Clustering with k-means
- Evaluating Model Performance
- Improving Model Performance
- Specialized Machine Learning Topics

