STAT 346
Regression Theory and Applications Spring 2023 (also offered Fall 2022)
Division III Quantative/Formal Reasoning

Class Details

This course focuses on the building of empirical models through data in order to predict, explain, and interpret scientific phenomena. Regression modeling is the most widely used method for analyzing and predicting a response data and for understand the relationship with explanatory variables. This course provides both theoretical and practical training in statistical modeling with particular emphasis on simple linear and multiple regression, using R to develop and diagnose models. The course covers the theory of multiple regression and diagnostics from a linear algebra perspective with emphasis on the practical application of the methods to real data sets. The data sets will be taken from a wide variety of disciplines.
The Class: Format: lecture
Limit: 30
Expected: 20
Class#: 3476
Grading: yes pass/fail option, no fifth course option
Requirements/Evaluation: Weekly homework, theory and data analysis exams, final course project.
Prerequisites: MATH 250, and at least one of STAT 201 or 202. Or permission of the instructor.
Enrollment Preferences: Statistics Majors
Distributions: Division III Quantative/Formal Reasoning
QFR Notes: This course prepares students in the use of quantitative methods for the modeling, prediction and understanding of scientific phenomena.

Class Grid

Updated 2:32 pm

Course Catalog Search


(searches Title and Course Description only)
TERM




SUBJECT
DIVISION



DISTRIBUTION



ENROLLMENT LIMIT
COURSE TYPE
Start Time
End Time
Day(s)