tina_gary.jpg

Home
About ADUni
Courses
People
Colloquia

FAQ  ||  transcripts  ||  alumni

Applied Probability

Tina Kapur and Rajeev Surati

Lectures  |  Problem Sets

Course Description

Focuses on modeling, quantification, and analysis of uncertainty by teaching random variables, simple random processes and their probability distributions, Markov processes, limit theorems, elements of statistical inference, and decision making under uncertainty. This course extends the discrete probability learned in the discrete math class. It focuses on actual applications, and places little emphasis on proofs. A problem set based on identifying tumors using MRI (Magnetic Resonance Imaging) is done using Matlab.

Text: Fundamentals of Applied Probability Theory, Al Drake.

Requirements: One exam, three assignments, two problem sets.


 

Lectures
[stream | download] 07-02-01: Lecture
[stream | download] 07-03-01: Lecture
[stream | download] 07-05-01: Lecture
[stream | download] 07-06-01: Lecture
[stream | download] 07-09-01: Lecture
Lecture Notes
Lecture 05.pdf
Lecture 05.ppt
lecture1.ppt
lecture2.ppt
lecture3.ppt
lecture4.ppt
Handouts
tutorial-problems.txt
Problem Sets
MRI.tar
MRI Link
Problem Set 04.txt
Problem Set 05.txt
SEG.tar
SEG Link
ground truth test img
mri read.m
mri test img
pset01.txt
pset04.txt


Site last updated: 10 August 2001
Comments: webmaster@aduni.org