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| Section 01: Introduction | |||
| Introduction to Supervised Machine Learning | |||
| Section 02: Regression | |||
| Introduction to Regression | |||
| Evaluating Regression Models | |||
| Conditions for Using Regression Models in ML versus in Classical Statistics | |||
| Statistically Significant Predictors | |||
| Regression Models Including Categorical Predictors. Additive Effects | |||
| Regression Models Including Categorical Predictors. Interaction Effects | |||
| Section 03: Predictors | |||
| Multicollinearity among Predictors and its Consequences | |||
| Prediction for New Observation. Confidence Interval and Prediction Interval | |||
| Model Building. What if the Regression Equation Contains “Wrong” Predictors? | |||
| Section 04: Minitab | |||
| Stepwise Regression and its Use for Finding the Optimal Model in Minitab | |||
| Regression with Minitab. Example. Auto-mpg: Part 1 | |||
| Regression with Minitab. Example. Auto-mpg: Part 2 | |||
| Section 05: Regression Trees | |||
| The Basic idea of Regression Trees | |||
| Regression Trees with Minitab. Example. Bike Sharing: Part 1 | |||
| Regression Trees with Minitab. Example. Bike Sharing: Part 2 | |||
| Section 06: Binary Logistics Regression | |||
| Introduction to Binary Logistics Regression | |||
| Evaluating Binary Classification Models. Goodness of Fit Metrics. ROC Curve. AUC | |||
| Binary Logistic Regression with Minitab. Example. Heart Failure: Part 1 | |||
| Binary Logistic Regression with Minitab. Example. Heart Failure: Part 2 | |||
| Section 07: Classification Trees | |||
| Introduction to Classification Trees | |||
| Node Splitting Methods 1. Splitting by Misclassification Rate | |||
| Node Splitting Methods 2. Splitting by Gini Impurity or Entropy | |||
| Predicted Class for a Node | |||
| The Goodness of the Model – 1. Model Misclassification Cost | |||
| The Goodness of the Model – 2 ROC. Gain. Lit Binary Classification | |||
| The Goodness of the Model – 3. ROC. Gain. Lit. Multinomial Classification | |||
| Predefined Prior Probabilities and Input Misclassification Costs | |||
| Building the Tree | |||
| Classification Trees with Minitab. Example. Maintenance of Machines: Part 1 | |||
| Classification Trees with Miitab. Example. Maintenance of Machines: Part 2 | |||
| Section 08: Data Cleaning | |||
| Data Cleaning: Part 1 | |||
| Data Cleaning: Part 2 | |||
| Creating New Features | |||
| Section 09: Data Models | |||
| Polynomial Regression Models for Quantitative Predictor Variables | |||
| Interactions Regression Models for Quantitative Predictor Variables | |||
| Qualitative and Quantitative Predictors: Interaction Models | |||
| Final Models for Duration and TotalCharge: Without Validation | |||
| Underfitting or Overfitting: The “Just Right Model” | |||
| The “Just Right” Model for Duration | |||
| The “Just Right” Model for Duration: A More Detailed Error Analysis | |||
| The “Just Right” Model for TotalCharge | |||
| The “Just Right” Model for ToralCharge: A More Detailed Error Analysis | |||
| Section 10: Learning Success | |||
| Regression Trees for Duration and TotalCharge | |||
| Predicting Learning Success: The Problem Statement | |||
| Predicting Learning Success: Binary Logistic Regression Models | |||
| Predicting Learning Success: Classification Tree Models | |||