- Schedule of Classes - February 21, 2020 7:14PM EST
- Course Catalog - February 21, 2020 7:15PM EST
Course information provided by the Courses of Study 2019-2020.
This class provides an introduction to relatively simple but powerful multivariate statistical techniques needed to analyze and model complex datasets frequently encountered in the environmental sciences. Emphasis is given to developing the mathematical foundation of these methods to foster a deeper understanding of the benefits and limitations of different approaches. The goal is to provide students in the applied environmental sciences with a toolbox of methods not taught in more introductory statistical courses, but also to ensure that students can use these methods in their own work without viewing them as a "black box". The course only assumes a limited knowledge of calculus, linear algebra, and statistics, and will provide a review of the mathematical concepts needed to understand the multivariate techniques presented. Applications will be presented primarily from the geophysical and ecological sciences, but the theory will be applicable to other environmental fields. Upon completion of the course, students will be able to use the multivariate techniques presented in the course to understand and evaluate environmental problems of interest in their respective domains.
When Offered Spring.
Permission Note Enrollment limited to: students who have taken either multivariable calculus, linear algebra, or introductory statistics or have permission of instructor.
- Students will be able to explain the utility of multivariate methods for inference, risk analysis, data compression and signal extraction, classification, and clustering in high dimensions.
- Students will be able to conduct multivariate analyses in modern statistical programming environments.
Regular Academic Session. Combined with: BEE 4310
Credits and Grading Basis
3 Credits Graded(Letter grades only)
Class Number & Section Details
- MWFRiley-Robb Hall B15
Pre or co-reqs: multivariable calculus, linear algebra, introductory statistics or permission of instructor.
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