Toggle navigation
FANR6750
2023.1.0
Syllabus
Schedule
Lectures
Lecture 0: Course introduction
Lecture 1: Introduction to statistics
Lecture 2: Introduction to linear models
Lecture 3: Principles of inference
Lecture 4: Linear models part 1: categorical predictor w/ 2 levels
Lecture 5: Null hypothesis significance testings
Lecture 6: Statistical power
Lecture 7: Linear models part 2: categorical predictor > 2 levels
Lecture 8: Multiple Comparisons
Lecture 9: Multiple Regression
Lecture 10: Interactions
Lecture 11: Evaluating assumptions
Lecture 12: Model selection
Lecture 13: Random effects
Lecture 14: Nested designs
Lecture 15: Split-plot designs
Lecture 16: Repeated measures
Lecture 17: Generalized linear models
Lecture 18: Logistic regression
Lecture 19: Poisson regression
Lecture 20: Zero-inflated regression
Labs
Lab 1: Introduction to R
Lab 2: Introduction to projects and RMarkdown
Lab 3: t-tests
Lab 4: ANOVA
Lab 5: Multiple Regression
Lab 6: Interactions
Lab 7: Evaluating assumptions
Lab 8: Model selection
Lab 9: Nested designs
Lab 10: Split-plot designs
Lab 11: Repeated measures
Lab 12: Logistic regression
Lab 13: Poisson regression
References
Assignment instructions
Projects and directories
R Markdown reference
Creating publication-quality graphics
Page not found (404)
Content not found. Please use links in the navbar.
Contents