STAT 432

Spring 2018 All Classes

All Classes

Credit: 3 OR 4 hours.

Topics in supervised and unsupervised learning are covered, including logistic regression, support vector machines, classification trees and nonparametric regression. Model building and feature selection are discussed for these techniques, with a focus on regularization methods, such as lasso and ridge regression, as well as methods for model selection and assessment using cross validation. Cluster analysis and principal components analysis are introduced as examples of unsupervised learning.

3 undergraduate hours. 4 graduate hours. Prerequisite: STAT 400, and either STAT 420 or STAT 425.

STAT 432 class schedule data for spring 2018
CRN Type Section Time Day Location Instructor Section Details
67118
Lecture
1GR
10:00AM -10:50AM
MWF
223 Gregory Hall
Dalpiaz, D
Part of Term:
1
Date Range:
01/16/18-05/02/18
Credit:
4 hours
Restriction(s):
Restricted to Graduate - Urbana-Champaign.
67119
Lecture
1UG
10:00AM -10:50AM
MWF
223 Gregory Hall
Dalpiaz, D
Part of Term:
1
Date Range:
01/16/18-05/02/18
Credit:
3 hours
Restriction(s):
Restricted to Undergrad - Urbana-Champaign.
COURSE EXPLORER
Email: Course Explorer Feedback

OFFICE OF THE REGISTRAR | 901 W. Illinois Street, Urbana, Illinois 61801

Site developed by: Technology Services at Illinois | UNIVERSITY OF ILLINOIS URBANA-CHAMPAIGN
1102 Digital Computer Laboratory | MC-256 | Urbana, IL 61801 | phone 217-244-7000