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Minor in Engineering Statistics
Offered by: Department of Statistical Science and School of Operations Research and Information Engineering
Administered by: ORE undergraduate Major consultant, 203 Rhodes Hall.
Eligibility
Students in all Majors except Operations Research and Engineering may participate in this Minor.
Educational Objectives
This Minor requires the student to develop expertise in engineering statistics. The goal of the program is to provide the student with a firm understanding of statistical principles and engineering applications and the ability to apply this knowledge in real-world situations.
Requirements
At least six (6) courses (minimum of 18 credits), chosen as follows:
Required Courses
ENGRD 270: Basic Engineering Probability and Statistics
OR&IE 360: Engineering Probability and Statistics II
or
ECE 310: Introduction to Probability and Random Signals
Four courses (11 credits minimum) taken from the following lista
OR&IE 361: Introductory Engineering Stochastic Processes I
or
ECE 411: Random Signals in Communications and Signal Processing
OR&IE 476: Applied Linear Statistical Models
OR&IE 576: Regression
OR&IE 563: Applied Time-Series Analysis
OR&IE 575: Experimental Design
OR&IE 577: Quality Control
OR&IE 580: Monte Carlo Simulation
OR&IE 581: Discrete Event Simulation
MATH 471: Basic Probability or BTRY 409: Theory of Statistics
BTRY 602: Statistical Methods II
BTRY 603: Statistical Methods III
or
ILRST 411: Statistical Analysis of Qualitative Data
or
ILRST 310: Statistical Sampling
ILRST 410: Techniques of Multivariate Analysis
Academic Standards
At least a grade of C– in each course in the Minor and a GPA ≥2.0 in all courses in the Minor.
Notes
a. Other course options approved by petition in advance. The student should be aware that some of these courses require others as prerequisites. All these courses are cross-listed under the Department of Statistical Science.
A student may not receive credit for more than one Minor offered by the School of Operations Research and Information Engineering.
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