2022-2023 Graduate Catalogue Archived Catalogue
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DSC 531 - Generalized Linear Models Course Description: Introduction to generalization of ordinary linear regression and applications with implementation in computer languages such as Python, R, SAS, and Matlab. Estimated parameters with maximum likelihood, maximum quasi-likelihood, or Bayesian techniques. Learn when to apply common distributions for typical uses and their canonical link functions. Six lecture hours and two laboratory hours per week for each week of the half-semester session.
Credit Hours: 3
Corequisite Courses: None Prerequisite Courses: None Additional Restrictions/ Requirements: None Course Repeatability: Course may not be repeated
ADDITIONAL COURSE INFORMATION
Equivalent Courses: None Undergraduate Crosslisting: None Additional Course Fees: None Course Attribute: None
Click here for the Spring 2025 Class Schedule.
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