Getting Started
  • Introduction
Basic Concepts
  • What Are Multilayer Perceptrons?
  • How Multilayer Perceptrons Work
  • The Learning Process
  • Prediction Accuracy Metrics
  • The ROC Curve
Predicting A Categorical Response
  • Training the Model
  • Making Predictions in the Test Set
  • Plotting and Interpreting the ROC Curve
  • Testing Different Numbers of Hidden Nodes
  • Validating Our Model With the K-Fold Cross-Validation Technique
Predicting a Continuous Response
  • Training the Model
  • Making Predictions
  • Testing the Number of Hidden Nodes
  • Validating the Model
Practical Exercises
  • Practice
Course Materials
  • R Code
  • Data Sets
  • PowerPoint Slides