Announcements:
First lecture Wed Mar 31, 2:30-3:50 SIG 229
Instructors:Marina Meila and Jeff Bilmes
Brief description
The course starts with an introduction to graphical probability models
(or belief networks) focusing on the rules of inference in graphs. We
then introduce the classic exact belief propagation algorithms (i.e
the junction tree algorithm). For the second part of the course we
focus on modern approximate algorithms, used for belief propagation
in large or dense graphs. We will discuss application in speech and
language, image processing, computational biology, and other areas.
We will also show that probabilistic reasoning algorithms are a
subclass of a much larger class of algorithms, which could be loosely
termed "local propagation on AND-OR graphs". The connections to, for
instance dynamic programming and constraint propagation will be
discussed.
Lectures:
Wednesday 2:30 - 4:20
Office hours:TBA
Prerequisites: basic
notions of probability (at the level of STAT 390/391/394), basics of
algorithms and complexity.
Format: One two hour
lecture/discussion weekly. Typically, the instructors will start
by presenting each topic, then we will progress towards an open
discussion. The reading materials will be course notes plus original
research and tutorial papers.
Graded: 3 credits based on mini-projects/homework and participation in class.
Course home page: http://www.stat.washington.edu/mmp/stat593A/spring05
(this page)