Analytics
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Overview
Description
Provides an introduction to basic statistical and data analytic methods. This course covers topics such as data archetypes; exploratory data analysis; basic statistical paradigms including frequentist, likelihood and Bayesian approaches; contingency tables; sampling distributions; the Central Limit Theorem; point and interval estimation; sufficiency; tests of statistical significance including large sample, likelihood ratio and resampling approaches; basic random variable linear combinations; ANOVA; correlation; and linear, logistic, and Poisson regression. Course content will be delivered through lectures, hands-on lab instruction and team-based learning using multiple statistical packages (R, SAS and Stata).
Career
Graduate
Credits
Value
0
Max
3
Min
3
Number Of Credits
0
Number Of Repeats
0
Repeatable
No
Code
51bbe61798170178d934b3fc932196b8
Instructor Contact Hours
0
Instruction Mode
Lecture
Optional Component
No
Workload Hours
100