|
12345678910111213141516171819202122232425262728293031 |
- [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
|