0A039G  Advanced Machine Learning Models Using IBM SPSS Modeler (V18.2)

Duração:     1 Dia

Nível:           Avançado

Audiência:   Business Analyst, Data Scientist

PRÓXIMAS SESSÕES
Início (AAAA-MM-DD) Fim (AAAA-MM-DD) Língua Preço
2023-11-10 2023-11-10 Português 800 EUR 1409
2023-11-24 2023-11-24 Português 800 EUR 1423
2023-12-08 2023-12-08 Português 800 EUR 1437
2023-12-22 2023-12-22 Português 800 EUR 1451
2024-01-19 2024-01-19 Português 800 EUR 1479
2024-02-02 2024-02-02 Português 800 EUR 1493
2024-02-16 2024-02-16 Português 800 EUR 1507
2024-03-01 2024-03-01 Português 800 EUR 1521
2024-03-15 2024-03-15 Português 800 EUR 1535
2024-03-29 2024-03-29 Português 800 EUR 1549
2024-04-12 2024-04-12 Português 800 EUR 1563
2024-04-26 2024-04-26 Português 800 EUR 1577
2024-05-10 2024-05-10 Português 800 EUR 1591
2024-05-24 2024-05-24 Português 800 EUR 1605
2024-06-07 2024-06-07 Português 800 EUR 1619
2024-06-21 2024-06-21 Português 800 EUR 1633
SÍNTESE

This 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.

PREREQUISITOS
  • Knowledge of your business requirements
  • Required: IBM SPSS Modeler Foundations (V18.2) course (0A069G/0E069G) or equivalent knowledge of how to import, explore, and prepare data with IBM SPSS Modeler v18.2, and know the basics of modeling.
  • Recommended: Introduction to Machine Learning Models Using IBM SPSS Modeler (V18.2) course (0A079G/0E079G), or equivalent knowledge or experience with the product about supervised machine learning models (CHAID, C&R Tree, Regression, Random Trees, Neural Net, XGBoost), unsupervised machine learning models (TwoStep Cluster), and association machine learning models such as APriori.

Introduction to advanced machine learning models • Taxonomy of models • Overview of supervised models • Overview of models to create natural groupings 

Group fields: Factor Analysis and Principal Component Analysis • Factor Analysis basics • Principal Components basics • Assumptions of Factor Analysis • Key issues in Factor Analysis • Improve the interpretability • Factor and component scores 

Predict targets with Nearest Neighbor Analysis • Nearest Neighbor Analysis basics • Key issues in Nearest Neighbor Analysis • Assess model fit 

Explore advanced supervised models • Support Vector Machines basics • Random Trees basics • XGBoost basics

 

Introduction to Generalized Linear Models • Generalized Linear Models • Available distributions • Available link functions 

Combine supervised models • Combine models with the Ensemble node • Identify ensemble methods for categorical targets • Identify ensemble methods for flag targets • Identify ensemble methods for continuous targets • Meta-level modeling 

Use external machine learning models • IBM SPSS Modeler Extension nodes • Use external machine learning programs in IBM SPSS Modeler 

Analyze text data • Text Mining and Data Science • Text Mining applications • Modeling with text data

Introduction to advanced machine learning models• Taxonomy of models• Overview of supervised models• Overview of models to create natural groupingsGroup fields:  Factor Analysis and Principal Component Analysis• Factor Analysis basics• Principal Components basics• Assumptions of Factor Analysis• Key issues in Factor Analysis• Improve the interpretability• Factor and component scoresPredict targets with Nearest Neighbor Analysis• Nearest Neighbor Analysis basics• Key issues in Nearest Neighbor Analysis• Assess model fitExplore advanced supervised models• Support Vector Machines basics• Random Trees basics• XGBoost basicsIntroduction to Generalized Linear Models• Generalized Linear Models• Available distributions• Available link functionsCombine supervised models• Combine models with the Ensemble node• Identify ensemble methods for categorical targets• Identify ensemble methods for flag targets• Identify ensemble methods for continuous targets• Meta-level modelingUse external machine learning models• IBM SPSS Modeler Extension nodes• Use external machine learning programs in IBM SPSS ModelerAnalyze text data• Text Mining and Data Science• Text Mining applications• Modeling with text data