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This Machine Learning in SPSS course presents advanced models available in IBM SPSS Modeler. The participant is first introduced to a technique named PCA/Factor, to reduce the number of fields to a number of core factors, referred to as components or factors. The next topics focus on supervised models, including Support Vector Machines, Random Trees, and XGBoost. Methods are reviewed on how to analyze text data, combine individual models into a single model, and how to enhance the power of IBM SPSS Modeler by adding external models, developed in Python or R, to the Modeling palette.
Introduction to advanced machine learning models
Group fields: Factor Analysis and Principal Component Analysis
Predict targets with Nearest Neighbor Analysis
Explore advanced supervised models
Introduction to Generalized Linear Models
Combine supervised models
Use external machine learning models
Analyze text data
Introduction to advanced machine learning models
Group fields: Factor Analysis and Principal Component Analysis
Predict targets with Nearest Neighbor Analysis
Explore advanced supervised models
Introduction to Generalized Linear Models
Combine supervised models
Use external machine learning models
Analyze text data