2. Polynomial and Logistic Regression#
Syllabus Points Covered
Software automation
Algorithms in machine learning
Investigate common applications of key ML algorithms
data analysis and forecasting
Describe types of algorithms associated with ML
logistic regression
Programming for automation
Design, develop and apply ML regression models using an OOP to predict numeric values
polynomial regression
logistic regression
Chapter Contents
- 2.1. Polynomial and Logistic Regression
- 2.2. Polynomial Regression
- 2.3. The Relationship Between Linear Regression and Polynomial Regression
- 2.4. Building a Polynomial Regression Model
- 2.5. Extension: Selecting The Polynomial Degree
- 2.6. Logistic Regression
- 2.7. Measuring Error
- 2.8. Building a Logistic Regression Model
- 2.9. Predicting With A Logistic Regression Model
- 2.10. Extension: Further Classification Metrics
- 2.11. Extension: Multiple Logistic Regression