The course looks at the theoretical and practical implications of a wide array of clustering techniques that are currently available in SAS. The techniques considered include cluster preprocessing, variable clustering, k-means clustering, and hierarchical clustering.
Learn how to
- Prepare and explore data for a cluster analysis.
- Distinguish among many different clustering techniques, making informed choices about which to use.
- Evaluate the results of a cluster analysis.
- Determine the appropriate number of clusters to retain.
- Profile and describe clustered observations.
- Score observations into clusters.
Who should attend
Intermediate- or senior-level statisticians, data analysts, and data miners
Before attending this course, you should:
- Be able to execute SAS programs and create SAS data sets. You can gain this experience by completing the SAS Programming 1: Essentials course.
- Have completed a graduate-level course in statistics or the Statistics 1: Introduction to ANOVA, Regression, and Logistic Regression course.
- Have an understanding of matrix algebra.
This course addresses SAS/STAT software.