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Electrical Engineering and Computer Science

EECS 3300 - Probabilistic MethodsÌýCourse Syllabus

Credits/Contact Hours
3 credit hours & 3 contact hours.

Textbook

Alberto Leon-Garcia, Probability, Statistics, andÌýRandom Processes for Electrical Engineering, Third Edition, 2008, Pearson,

ISBN-13:978-0-13-147122-1, or ISBN-10: 0-13-147122-8.Ìý

Course Information
Techniques for modeling and analysis of random phenomena in EECS, including communication, control, and computer Systems. Distribution, density, and characteristic functions. Computer generation. Function of random variables.
Prerequisite: EECS 3210Ìý Co-Requisite: None
Required for EE majors
Specific Goals - StudentÌýLearning ObjectivesÌý(SLOs)
The student will be able to:
1. Characterize probability models using probability massÌýfunction and probability density function for discrete andÌýcontinuous random variables.
2. Describe conditional and independent events and conditionalÌýrandom variables.
3. Evaluate the mean and variance of different distributions
4. Calculate the cumulative distribution functions for bothÌýdiscrete and continuous random variables.
5. Characterize functions of random variables
6. Characterize jointly multiple discrete and continuous randomÌývariables
7. Use computer software to generate probability distributionÌýfunctions
Topics

  1. Probability models
  2. Concepts of probability theory
  3. Probability distribution
  4. Density functions
  5. One/multiple random variables
  6. Sum of random variables

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