Data Mining & Pred Analytics
Durham
Engineering&Physical Sciences::Mathematics&Statistics
Online Course Delivery Method:
Online Synchronous
Credits: 3.0
Class Size: 5
Term:
Spring 2024
-
Full Term (01/23/2024
-
05/06/2024)
CRN:
52160
Grade Mode:
Letter Grading
An introduction to supervised and unsupervised methods for exploring large data sets and developing predictive models. Unsupervised methods include: market basket analysis, principal components, clustering, and variables clustering. Important statistical and machine learning methods (supervised learning) include: Classification and Regression Tress (CART), Random Forests, Neural Nets, Support Vector Machines, Logistic Regression and Penalized Regression. Additional topics focus on metamodeling, validation strategies, bagging and boosting to improve prediction or classification, and ensemble prediction from a set of diverse models. Required case studies and projects provide students with experience in applying these techniques and strategies. The course necessarily involves the use of statistical software and programming languages. Students must have completed a calculus-based introductory statistics course.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Instructors:
Philip Ramsey
Times & Locations
Start Date | End Date | Days | Time | Location |
---|---|---|---|---|
1/23/2024 | 5/6/2024 | MW | 12:40pm - 2:00pm | ONLINE |
Final Exam5/13/2024 | 5/13/2024 | M | 3:30pm - 5:30pm | ONLINE |