ECE 313/MATH 362
PROBABILITY WITH ENGINEERING APPLICATIONS
Fall 2019 - Sections A,C, D, and E
EE and CompE students must complete
one of the two courses
ECE 313 or Stat 410.
Prerequisite : Math 286 or Math 415
Exam times : See Exam information.
Optional Reading:
More Information
Text :
ECE 313 Course Notes (hardcopy sold through ECE Stores,
pdf file available.)
Times/locations for guided study sessions and regular office hours (beginning second week -- i.e. Sept. 3).
Hours
Monday
Tuesday
Wednesday
Thursday
Friday
1-2 pm
5034 ECEB
Guided study
sessions
Reserve here.
5034 ECEB
Guided study
sessions
Reserve here.
2-3 pm
3-4 pm
4-5 pm
4034 ECEB
4034 ECEB
4034 ECEB
4034 ECEB
4034 ECEB
5-6 pm
Section
Meeting time and place
Instructor
A 9 MWF
3081 ECE Building
Dr. Donghwan Lee
e-mail: donghwan AT illinois dot edu
Office Hours: Thursdays 2-3 pm, 5034 ECEB
C 11 MWF
3017 ECE BuildingProfessor Idoia Ochoa
e-mail:idoia AT illinois dot edu
Office Hours: Wednesdays 4-5 pm, 4034 ECEB
D 1 MWF
3017 ECE Building
Professor Dimitrios Katselis
e-mail: katselis AT illinois dot edu
Office Hours: Mondays 4-5 pm, 4034 ECEB
E 2 MWF
3017 ECE Building
Professor Minh Do
e-mail: minh do AT illinois dot edu
Office Hours: Fridays 3-4 pm, 5034 ECEB
Graduate Teaching Assistants
Anu Gamarallage
gamaral2 AT illinois dot edu Office Hours:
Thursdays 1pm (guided study)
Fridays 4-5pm (regular) and 5-6pm (guided study)
Liming Wang
lwang114 AT illinois dot edu Office Hours:
Fridays 4-5pm (guided study)
Ningkai Wu
nwu10 AT illinois dot edu Office Hours:
Ali Yekkehkhany
yekkehk2 AT illinois dot edu Office Hours:
Fridays 1-3pm (guided study)
Mona Zehni
mzehni2 AT illinois dot edu Office Hours:
Tuesdays 4-5pm (regular)
Yichi Zhang
yichi3 AT illinois dot edu Office Hours:
Thursdays 4-6pm (guided study)
Zeyu Zhou
zzhou51 AT illinois dot edu Office Hours:
Thursdays 3-4pm (guided study) and 4-5pm (regular)
Concept constellation
Course schedule (subject to change)
Quiz #
Deadline Lecture
dates Concepts and assigned reading)[ Short videos]
Homework problems (not to hand in but similar to quiz questions)
0
Tue, 9/3
-
Quiz 0 covers two topics that come up later in the course:
* the sum of a geometric series
and power series for exp(x)
* basic calculus:
the chain rule for differentiation and use of logarithms
Quiz 0 is a practice quiz and carries no course credit.
1
Mon, 9/9
8/26-9/6
*
How to specify a set of outcomes, events, and probabilities for a given experiment (Ch 1.2)
* set theory (e.g. de Morgan's law, Karnaugh maps for two sets) (Ch 1.2)
* using principles of counting and over counting; binomial coefficients (Ch 1.3-1.4) [ILLINI, SAQ 1.3, SAQ 1.4, PokerIntro, PokerFH2P]
* using Karnaugh maps for three sets (Ch 1.4) [Karnaughpuzzle, SAQ1.2]
SAQs (on p. 20) for Sections 1.2, 1.3, 1.4.
Problems (pp. 21-24) 1.2, 1.4, 1.6, 1.8, 1.10, 1.12.
Optional: [SAQ 1.5]
Tip for quiz 1: Make sure you can compute the numerical values of binomial coefficients. See p. 13 of the course notes.
2
Mon, 9/16
9/9-9/13
* random variables, probability mass functions, and mean of a function of a random variable (LOTUS) (Ch 2.1, first two pages of Ch 2.2) [pmfmean]
* scaling of expectation, variance, and standard deviation (Ch 2.2) [SAQ 2.2]
* conditional probability (Ch 2.3) [team selection] [SAQ 2.3]
* independence of events and random variables (Ch 2.4.1-2.4.2) [SimdocIntro] [Simdoc-Minhash1]
SAQs (pp. 74-75) for Sections 2.2-2.4
Problems (pp. 77-82) 2.2, 2.4, 2.6, 2.8, 2.10, 2.12, 2.16.
3
Mon, 9/23
9/16-9/20
* binomial distribution (how it arises, mean, variance, mode) (Ch 2.4.3-2.4.4) [SAQ 2.4] [bestofseven]
* geometric distribution (how it arises, mean, variance, memoryless property) (Ch. 2.5) [SAQ 2.5]
* Bernoulli process (definition, connection to binomial and geometric distributions) (Ch 2.6) [SAQ 2.6]
* Poisson distribution (how it arises, mean, variance) (Ch 2.7) [SAQ 2.7]
SAQs (p. 75) for Sections 2.4-2.7
Problems (pp. 81-84) 2.14, 2.18, 2.20, 2.22, 2.24
4
Mon, 9/30
9/23-9/27
* Maximum likelihood parameter estimation (definition, how to calculate for continuous and discrete parameters) (Ch 2.8) [SAQ 2.8]
* Markov and Chebychev inequalities (Ch 2.9)
* confidence intervals (definitions, meaning of confidence level) (Ch 2.9) [SAQ 2.9,Simdoc-Minhash2]
* law of total probability (Ch 2.10) [deuce] [SAQ 2.10]
* Bayes formula (Ch. 2.10)
SAQs (pp. 75-76) for Sections 2.8-2.10
Problems (pp. 85-88) 2.26, 2.28, 2.30, 2.32, 2.34
5
Mon, 10/7
9/30-10/4
* Hypothesis testing -- probability of false alarm and probability of miss (Ch. 2.11)
* ML decision rule and likelihood ratio tests (Ch 2.11) [SAQ 2.11]
* MAP decision rules (Ch 2.11)
* union bound and its application (Ch 2.12.1) [SAQ 2.12]
* network outage probability and distribution of capacity, and more applications of the union bound (Ch 2.12.2-2.12.4)
SAQs (p. 76) for Sections 2.11 & 2.12
Problems (pp. 88-93) 2.36, 2.38, 2.40, 2.42, 2.44, 2.46
6
Mon, 10/14
10/7-10/11
* cumulative distribution functions (Ch 3.1) [SAQ 3.1]
* probability density functions (Ch 3.2) [SAQ 3.2] [simplepdf]
* uniform distribution (Ch 3.3) [SAQ 3.3]
* exponential distribution (Ch 3.4) [SAQ 3.4]
SAQs (p. 146-147) for Sections 3.1-3.4.
Problems (pp.149-151) 3.2, 3.4, 3.6, 3.8, 3.10.
7
Mon, 10/21
10/14-10/18
* Poisson processes (Ch 3.5) [SAQ 3.5]
* Erlang distribution (Ch 3.5.3)
* scaling rule for pdfs (Ch. 3.6.1) [SAQ 3.6]
* Gaussian (normal) distribution (e.g. using Q and Phi functions) (Ch. 3.6.2) [SAQ 3.6] [matlab help including Qfunction.m]
* the central limit theorem and Gaussian approximation (Ch. 3.6.3) [SAQ 3.6]
SAQs (p 147) for Sections 3.5 & 3.6 .
Problems (p. 152-154) 3.12, 3.14, 3.16, 3.18, 3.20
8
Mon, 10/28
10/21-10/25
* ML parameter estimation for continuous type random variables (Ch. 3.7) [SAQ 3.7]
* the distribution of a function of a random variable (Ch 3.8.1) [SAQ 3.8]
* generating random variables with a specified distribution (Ch 3.8.2)
* failure rate functions (Ch 3.9) [SAQ 3.9]
* binary hypothesis testing for continuous type random variables (Ch 3.10) [SAQ 3.10]
SAQs (pp. 147-148) for Sections 3.7-3.10.
Problems (pp. 154-159) 3.22, 3.24, 3.26, 3.28, 3.30, 3.32, 3.34, 3.38
p
9
Mon, 11/4
10/28-11/1
* joint CDFs (Ch 4.1) [SAQ 4.1]
* joint pmfs (Ch 4.2) [SAQ 4.2]
* joint pdfs (Ch 4.3) [SAQ 4.3]
SAQs (pp. 223-224) for Sections 4.1-4.3.
Problems (pp. 226-228) 4.2, 4.6, 4.10.
10
Mon, 11/18
(skip 11/11)
11/4-11/15
* joint pdfs of independent random variables (Ch 4.4) [SAQ 4.4]
* distribution of sums of random variables (Ch 4.5) [SAQ 4.5]
* more problems involving joint densities (Ch 4.6) [SAQ 4.6]
* joint pdfs of functions of random variables (Ch 4.7) [SAQ 4.7] (Section 4.7.2 and 4.7.3 will not be tested in the exams)
SAQs (p. 224) for Sections 4.4-4.7.
Problems (p. 226-230) 4.4, 4.8, 4.12, 4.14, 4.16.
11
Tue, 12/3
11/18-11/22
* correlation and covariance: scaling properties and covariances of sums (Ch 4.8) [SAQ 4.8]
* sample mean and variance of a data set, unbiased estimators (Ch 4.8, Example 4.8.7)
* minimum mean square error unconstrained estimators (Ch 4.9.2)
* minimum mean square error linear estimator (Ch 4.9.3) [SAQ 4.9]
SAQs (p. 224) for Sections 4.8-4.9.
Problems (p. 230-233) 4.18, 4.20, 4.22, 4.24, 4.26, 4.28
11/25-11/29
Thanksgiving vacation
12
Mon, 12/9
12/2-12/6
* law of large numbers (Ch 4.10.1)
* central limit theorem (Ch 4.10.2) [SAQ 4.10]
* joint Gaussian distribution (Ch 4.11) (e.g. five dimensional characterizations) [SAQ 4.11]
SAQs (p.225) for Sections 4.10-4.11
Problems (pp.233-237) 4.30, 4.32, 4.34, 4.36, 4.38, 4.40, 4.42.
-
12/10-12/12
wrap up and review
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