EE596B - Submodular Functions, Optimization, and Applications to Machine Learning, Spring Quarter, 2016

Last updated: $Id: index.html 2028 2016-06-03 17:13:54Z bilmes $

This page is located at http://www.ee.washington.edu/people/faculty/bilmes/classes/ee596b_spring_2016/.

A version of this class was taught previously, and its contents and slides can be found at http://j.ee.washington.edu/~bilmes/classes/ee596b_spring_2014/

Instructor:

Prof. Jeff A. Bilmes --- Email me
Office: 418 EE/CS Bldg., +1 206 221 5236
Office hours: TBD, EEB-418 (+ online)

TA

Kai Wei (kaiwei@uw.edu)
Office: EEB-417
Office hours: TBD

Time/Location

Class is held: Mon/Wed 1:30-3:30, Loew Hall, Room 116.

Announcements


Submodular Functions, Optimization, and Applications to Machine Learning

Description: This class will be a thorough introduction to submodular functions.

This class will be a thorough introduction to submodular functions. Applications of submodularity are vast, and include areas in in computer vision, constraint satisfaction, game theory, social networks, economics, information theory, structured convex norms, natural language processing, sensor networks, graphical models and probabilistic inference, and other areas of machine learning. Submodularity is a good model for cooperation, complexity, and attractiveness as well as for diversity, coverage, and information.

In this class, we will learn about a variety of properties of submodularity and supermodularity. Motivated by applications, we'll cover submodularity's definitions, its properties, the many operations that preserve submodularity, variants and extensions of submodularity, and certain special submodular functions, and computational properties. The goal of this section will be to develop a deep intuitive understanding of both submodular and supermodular functions.

Other topics we will overview include: the theory of matroids and lattices, polyhedral properties of submodular functions, subdifferentials and superdifferentials, the Lovasz extension (i.e., the Choquet integral) of submodular functions and convex and concave extensions in general.

As for submodular optimization, we'll discuss submodular maximization algorithms in the unconstrained and constrained (i.e., knapsack, matroid, combinatorial, etc.) cases, the ever important greedy algorithm and its uses. For submodular minimization, we'll give a history of submodular minimization, including both numerical and combinatorial algorithms, computational properties of these algorithms, and descriptions of both known results and currently open problems in this area (as well as discuss both unconstrained and constrained cases).

Other problems we'll discuss include submodular cover problems, submodular flow problems, the principle partition of a submodular function and its variants. We'll see, for example, how submodularity can be used to solve non-submodular problems, for example difference of submodular programs, and submodular relaxation strategies.


Homework

Homework must be done and submitted electronically via the following link https://canvas.uw.edu/courses/1039754/assignments.
  1. Homework 1
  2. Homework 2
  3. Homework 3
  4. Homework 4
  5. Final Project

Lecture Slides

Lecture slides will be made available as they are being prepared --- they will probably appear soon before a given lecture, and they will be in PDF format (original source is latex). Note, that these slides are corrected after the lecture (and might also include some additional discussion we had during lecture). If you find bugs/typos in these slides, please email me. The slides are available as "presentation slides" and also in (mostly the same content) 2-up form for printing. After lecture, the marked up slides will appear under the "presented slides" column (and might include typo fixes, ink corrections, and other little notes/discussions/drawings that occured during class).
Lec. # Slides 2-Up Slides Lecture Date Last Updated Contents Presented Slides Video
1 pdf pdf 3/28/2016 3/28/2016 Logistics, Motivation, Applications. pdf
2 pdf pdf 3/30/2016 3/30/2016 Machine Learning Apps (diversity, complexity, parameter, learning target, surrogate). pdf
3 pdf pdf 4/4/2016 4/4/2016 Info theory exs, more apps, definitions, graph/combinatorial examples, matrix rank example, visualization pdf
4 pdf pdf 4/6/2016 4/6/2016 Graph and combinatorial examples, matrix rank, Venn diagrams, examples of proofs of submodularity, some useful properties pdf
5 pdf pdf 4/11/2016 4/11/2016 Examples and Properties, Other Defs., Independence pdf
6 pdf pdf 4/18/2016 4/18/2016 Independence, Matroids, Matroid Examples, Matroid Rank is submodular pdf
7 pdf pdf 4/20/2016 4/20/2016 Matroid Rank, More on Partition Matroid, System of Distinct Reps, Transversals, Transversal Matroid, Matroid and representation, Dual Matroid pdf
8 pdf pdf 4/25/2016 4/25/2016 Transversals, Matroid and representation, Dual Matroids pdf
9 pdf pdf 4/27/2016 4/27/2016 Dual Matroids, Properties, Combinatorial Geometries, Matroid and Greedy pdf
10 pdf pdf 5/2/2016 5/2/2016 Matroid and Greedy, Polyhedra, Matroid Polytopes, Polymatroid pdf
11 pdf pdf 5/9/2016 5/9/2016 From Matroids to Polymatroids, Polymatroids pdf
12 pdf pdf 5/11/2016 5/11/2016 Polymatroids, Polymatroids and Greedy pdf
13 pdf pdf 5/16/2016 5/16/2016 Polymatroids and Greedy; Possible Polytopes; Extreme Points; Polymatroids, Greedy, and Cardinality Constrained Maximization pdf
14 pdf pdf 5/18/2016 5/18/2016 Cardinality Constrained Maximization; Curvature; Submodular Max w. Other Constraints pdf
15 pdf pdf 5/23/2016 5/23/2016 Submodular Max w.\ Other Constraints, Most Violated $\leq$, Matroids cont., Closure/Sat, pdf
16 pdf pdf 5/25/2016 5/25/2016 Closure/Sat, Fund.\ Circuit/Dep, pdf
17 pdf pdf 5/25/2016 5/25/2016 Min-Norm Point and SFM, Min-Norm Point Algorithm, Proof that min-norm gives optimal. pdf
18 pdf pdf 6/3/2016 6/3/2016 Proof that min-norm gives optimal, Lovasz extension. pdf
Lec. # Slides 2-Up Slides Lecture Date Last Updated Contents Presented Slides Video

Discussion Board

You can post questions, discussion topics, or general information at this link.


Relevant Books

There are many books available that discuss some the material that we are covering in this course. Some good books are listed below, but see the end of the lecture slides for books/papers that are relevant to each specific lecture. There are many books available that discuss some the material that we are covering in this course. See the end of the lecture slides for books and papers that are relevant to that specific lecture, and see lecture1.pdf for a list of general texts that are relevant to this class. Other books are below, but note that for some of the material, the best reference is the slides themselves.

Important Dates/Exceptions (also see this academic calendar).


Alternative Contact

If you must, you can send me or the TA anonymous email