IOE 366 - Linear Stat Models
Section: 001
Term: FA 2009
Subject: Industrial and Operations Engineering (IOE)
Department: CoE Industrial and Operations Engineering
Credits:
2 (Non-LSA credit).
Requirements & Distribution:
BS
Enforced Prerequisites:
IOE 265 & MATH 214 (C->)
BS:
This course counts toward the 60 credits of math/science required for a Bachelor of Science degree.
Repeatability:
May not be repeated for credit.
Primary Instructor:

Linear statistical models and their application to engineering data analysis. Linear regression and correlation; multiple linear regression, analysis of variance, introduction to design of experiments.

IOE 366 - Linear Stat Models
Schedule Listing
001 (LEC)
 
11483
Open
8
 
-
TuTh 9:00AM - 10:30AM
Note: IOE 366 MEETS FIRST HALF OF TERM. STUDENTS ARE AUTO-ENROLLED IN LECTURE WHEN THEY ELECT THE LAB.
002 (LAB)
P
11485
Open
4
 
-
M 9:30AM - 10:30AM
003 (LAB)
P
11487
Open
1
 
-
M 10:30AM - 11:30AM
004 (LAB)
P
11489
Open
1
 
-
M 11:30AM - 12:30PM
005 (LAB)
P
11491
Closed
0
 
-
M 12:30PM - 1:30PM
006 (LAB)
P
11493
Open
1
 
-
M 1:30PM - 2:30PM
007 (LAB)
P
11495
Open
1
 
-
M 2:30PM - 3:30PM
NOTE: Data maintained by department in Wolverine Access. If no textbooks are listed below, check with the department.


ISBN: 0471794732
Applied statistics and probability for engineers, Author: Douglas C. Montgomery, George C. Runger., Publisher: Wiley 4th ed. 2007
Required
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