CS 7641 & 4641
Machine Learning
Schedule

Remember: there is no excuse for ignorance of the assigned reading material. Visit this page frequently. Bring a friend. Start an alternative hip-hop / bluegrass group.

Date

Topic

Reading

Out

In

Jan 6 Introduction and Overview Chapter 1 7641 Group Project
Jan 8 Supervised Learning Review:
Neural Networks & Decision Trees
Chapters 3 & 4
Jan 13 Instance Based Learning Chapter 8 Assignment 1
Jan 15 Boosting
Support Vector Machines
handouts Team Formation (1/16)
Jan 20 Support Vector Machines
Boosting
handouts
Jan 22 Bayesian Learning Chapter 6
Jan 27 Bayesian Learning Informal Proposal (1/25)
Jan 29 Bayesian Learning
Feb 3 Computational Learning Theory Chapter 7
Feb 5 Computational Learning Theory Formal Proposal (2/8)
Keywords (2/8)
Assignment 1 (2/8)
Feb 10 Addressing Overfitting
Information Theory
Chapter 5
handouts
Feb 12 Randomized Optimization Chapter 9 Assignment 2
Feb 17 Randomized Optimization handouts
Feb 19 Overflow
Feb 24
Midterm Exam
Feb 26
Drop Day is 2/27
Exam Review Suggestions re: Formal Proposals (2/27)
March 3 Clustering handouts
March 5 Expectation Maximization
impossibility results (clustering and NFL)
Chapter 6 (again)
handouts
Assignment 3 Assignment 2 (3/8)
March 10 Feature Selection handouts
March 12 Feature Transformation
March 17
March 19
Spring Break
March 24 Markov Decision Processes Progress Report
March 26 POMDPs Assignment 4
March 31 Reinforcement Learning Chapter 13 Assignment 3 (4/3)
April 2 Reinforcement Learning handouts Submitted Papers (4/5)
April 7 Reinforcement Learning
April 9 Game Theory Review of Final Papers (4/12)
April 14 Game Theory
April 16 Game Theory Final Project Material (4/19)
April 21
April 23
Final Presentations
Review of Final Presentations (4/24)
Assignment 4
April 27-May 1
Final Exam