Introduction to Machine Learning Models Using IBM SPSS Modeler (V18.2) (0A079G) – Outline

Detailed Course Outline

Introduction to machine learning models

  • • Taxonomy of machine learning models
  • • Identify measurement levels
  • • Taxonomy of supervised models
  • • Build and apply models in IBM SPSS Modeler

Supervised models: Decision trees - CHAID

  • • CHAID basics for categorical targets
  • • Include categorical and continuous predictors
  • • CHAID basics for continuous targets
  • • Treatment of missing values

Supervised models: Decision trees - C&R Tree

  • • C&R Tree basics for categorical targets
  • • Include categorical and continuous predictors
  • • C&R Tree basics for continuous targets
  • • Treatment of missing values

Evaluation measures for supervised models

  • • Evaluation measures for categorical targets
  • • Evaluation measures for continuous targets

Supervised models: Statistical models for continuous targets - Linear regression

  • • Linear regression basics
  • • Include categorical predictors
  • • Treatment of missing values

Supervised models: Statistical models for categorical targets - Logistic regression

  • • Logistic regression basics
  • • Include categorical predictors
  • • Treatment of missing values

Supervised models: Black box models - Neural networks

  • • Neural network basics
  • • Include categorical and continuous predictors
  • • Treatment of missing values

Supervised models: Black box models - Ensemble models

  • • Ensemble models basics
  • • Improve accuracy and generalizability by boosting and bagging
  • • Ensemble the best models

Unsupervised models: K-Means and Kohonen

  • • K-Means basics
  • • Include categorical inputs in K-Means
  • • Treatment of missing values in K-Means
  • • Kohonen networks basics
  • • Treatment of missing values in Kohonen

Unsupervised models: TwoStep and Anomaly detection

  • • TwoStep basics
  • • TwoStep assumptions
  • • Find the best segmentation model automatically
  • • Anomaly detection basics
  • • Treatment of missing values

Association models: Apriori

  • • Apriori basics
  • • Evaluation measures
  • • Treatment of missing values

Association models: Sequence detection

  • • Sequence detection basics
  • • Treatment of missing values

Preparing data for modeling

  • • Examine the quality of the data
  • • Select important predictors
  • • Balance the data