[TOC]
10 Advice for Applying Machine Learning
10.1 Deciding What to Try Next
10.2 Evaluating a Hypothesis
10.3 Model Selection and Train/Validation/Test Sets
##10.4 Diagnosing Bias vs. Variance
10.5 Regularization and Bias/Variance
10.6 Learning Curves
10.7 Deciding What to Do Next Revisited
11 Machine Learning System Design
11.1 Prioritizing What to Work On
11.2 Error Analysis
11.3 Error Metrics for Skewed Classes
11.4 Trading Off Precision and Recall
11.5 Data For Machine Learning