Table of Contents

CMPU-395: Machine Learning

Aim and Scope

The brain is arguably the most capable information processing device known and has been the source of inspiration for a number of algorithms. In this course we review models of brain function, from numerical simulations of activity in real neurons and small neural networks, via abstract artificial neural networks to machine learning algorithms for classification and prediction based on experience rather than predefined rules. Topics covered include Hodgkin-Huxley and integrate-and-fire models, central pattern generators, attractor models of associative memory, layered networks and error driven learning, competitive learning and formation of topology preserving maps, and behavior formation via reinforcement learning.

Syllabus

Instructor

Örjan Ekeberg is a STINT Fellow at Vassar during the fall 2009. He is an associate professor in Computer Science at the Royal Institute of Technology in Stockholm, Sweden, where he also works for the Stockholm Brain Institute.

Textbook

Stephen Marsland: Machine Learning, an Algorithmic Perspective; CRC Press, 2009

Schedule

Lectures are on Mondays and Wednesdays, 1:30 to 2:45, in OH 201.

Final exam will be Friday, December 11, between 6pm and 8pm, room OLB 105

Assignments

Six assignments will be given during the course.

Requirements and Grading

Participation during lectures and completion of six bi-weekly assignments are required.

Grading will be weighted like this:

60% Assignments
10% Lecture participation
30% Final exam

Students with disabilities

Academic accommodations are available for students with disabilities who are registered with the Office of Disability and Support Services. Students in need of disability accommodations should schedule an appointment with me early in the semester to discuss any accommodations for this course which have been approved by the Office of Disability and Support Services, as indicated in your DSS accommodation letter.

Students with abilities