DATA 410 - Multivariate Analysis 5 CR
Introduce various statistical methods for analyzing more than one outcome variable and understanding the relationships between variables. Topics include a variety of multivariate models such as MANOVA, discriminant functions, canonical correlation, and cluster analysis. The focus will be on real world examples from a variety of sources and using statistical software.
Recommended: DATA 460 or DA 460. Prerequisite(s): MATH 342 with a C or better and DATA 333 or ISIT 333 with a C or better or permission of the instructor.
Course Outcomes - Identify the common multivariate analysis methods, and their advantages and limitations.
- Evaluate the relevant aspects of a real-world data set and choose an appropriate type of multivariate analysis method
- Formulate, fit, and apply models using
Find out when this course is offered
Add to Favorites (opens a new window)
|