Computational Theory Data Visualization

Computational Theory Data Visualization

Course Number: 

This course aims to teach students to use programming to gain intuition about statistical theory and fundamental concepts and to visualize data appropriately. Specifically, computational methods covered include simulation methods and numerical methods in maximization and integration. Appropriate graphical displays of statistical and simulation results will be emphasized. Statistical concepts covered include sampling distributions, confidence intervals and p-values, the central limit theorem, expectation, and maximum likelihood estimation. Student understanding of course ideas will rely heavily on performing simulation studies and discussing the assimilated class results online.


Fall 2018
Section Credits Room Instructor Syllabus
STA 645-201 3.0 TBD Melissa Q Pittard; Kedai Cheng
Enter your linkblue username.
Enter your linkblue password.
Secure Login

This login is SSL protected