Introduces multivariate regression and random forests for modeling data. Addresses data access, variable selection and model diagnostics. Introduces foundations for visual thinking. Reviews common statistical graphics such as dot plots, box plots, q-q plots. Addresses more advanced methods such as scatterplot matrices enhanced by smoothed or density contours, and search tools for finding graphics with suggestive patterns. Notes: Course will introduce R software for analysis. A final project will involve visualization of a real data set.Offered by Statistics. May not be repeated for credit.
Visualization For Analytics
Host University
George Mason University
Semester
Spring 2023
Credits
3
Instructor
Adetokunbo Fadahunsi (tfadahun@gmu.edu)
Course Information
Prerequisites
STAT 250 or equivalent.