Portugal
-
€ 1.000,00
This course is appropriate for SAS Enterprise Miner from release 5.3 up to 14.2. The course covers the skills that are required to assemble analysis flow diagrams using the rich tool set of SAS Enterprise Miner for both pattern discovery (segmentation, association, and sequence analyses) and predictive modeling (decision tree, regression, and neural network models).
Learn how to
: 3.00 days
: 6 half day sessions
: 8 half day sessions
: 24 hours/180 days license
Before attending this course, you should be acquainted with Microsoft Windows and Windows software. In addition, you should have at least an introductory-level familiarity with basic statistics and regression modeling. Previous SAS software experience is helpful but not required.
This course addresses SAS Enterprise Miner software.
Introduction
Learn how to
- define a SAS Enterprise Miner project and explore data graphically
- modify data for better analysis results
- build and understand predictive models such as decision trees and regression models
- compare and explain complex models
- generate and use score code
- apply association and sequence discovery to transaction data.
: 3.00 days
: 6 half day sessions
: 8 half day sessions
: 24 hours/180 days license
Before attending this course, you should be acquainted with Microsoft Windows and Windows software. In addition, you should have at least an introductory-level familiarity with basic statistics and regression modeling. Previous SAS software experience is helpful but not required.
This course addresses SAS Enterprise Miner software.
Introduction
- introduction to SAS Enterprise Miner
- creating a SAS Enterprise Miner project, library, and diagram
- defining a data source
- exploring a data source
- introduction
- cultivating decision trees
- optimizing the complexity of decision trees
- understanding additional diagnostic tools (self-study)
- autonomous tree growth options (self-study)
- selecting regression inputs
- optimizing regression complexity
- interpreting regression models
- transforming inputs
- categorical inputs
- polynomial regressions (self-study)
- input selection
- stopped training
- other modeling tools (self-study)
- model fit statistics
- statistical graphics
- adjusting for separate sampling
- profit matrices
- internally scored data sets
- score code modules
- cluster analysis
- market basket analysis (self-study)
- ensemble models
- variable selection
- categorical input consolidation
- surrogate models
- SAS Rapid Predictive Modeler
- banking segmentation case study
- website usage associations case study
- credit risk case study
- enrollment management case study
www.sas.com
15 Dezembro
