BTRY 3020
Last Updated
- Schedule of Classes - October 16, 2017 11:09AM EDT
- Course Catalog - June 14, 2017 7:15PM EDT
Classes
BTRY 3020
Course Description
Course information provided by the Courses of Study 2016-2017.
Applies linear statistical methods to quantitative problems addressed in biological and environmental research. Methods include linear regression, inference, model assumption evaluation, the likelihood approach, matrix formulation, generalized linear models, single-factor and multifactor analysis of variance (ANOVA), and a brief foray into nonlinear modeling. Carries out applied analysis in a statistical computing environment.
When Offered Spring.
Prerequisites/Corequisites Prerequisite: BTRY 3010 or equivalent.
Distribution Category (OPHLS-AG)
- Students will be able to design a statistical experiment using randomization techniques.
- Students will be able to analyze multivariate linear and nonlinear data that include quantitative and qualitative variables.
- Students will be able to apply generalized linear model, generalized additive models, and mixed effects models to appropriately collected data.
- Students will be able to formulate and evaluate parametric and nonparametric methods for determining model uncertainty.
- Students will be able to employ matrix methods to effectively design and implement linear models.
- Students will be able to assess the quality of a statistical analysis.
Regular Academic Session. Choose one lecture and one laboratory. Combined with: STSCI 3200
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Credits and Grading Basis
4 Credits Stdnt Opt(Letter or S/U grades)
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Class Number & Section Details
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Meeting Pattern
- TR Bradfield Hall 101
Instructors
Earls, C
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Additional Information
Prerequisite: BTRY 3010 or 6010.
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Class Number & Section Details
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Meeting Pattern
- T Mann Library B30B
Instructors
Earls, C
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Class Number & Section Details
-
Meeting Pattern
- T Mann Library B30B
Instructors
Earls, C
-
Class Number & Section Details
-
Meeting Pattern
- T Mann Library B30B
Instructors
Earls, C
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