CSI5388: Topics in Machine Learning


Instructor

Nathalie Japkowicz

Office: STE 5029
E-mail: nat@site.uottawa.ca
Telephone: 562-5800 ext. 6693 (Note: e-mail is more reliable)

Meeting Times and Locations

Office Hours and Locations

Calendar Description

Machine Learning or data Mining are the areas of Artificial Intelligence concerned with the problem of building computer programs that automatically improve with experience. This course will focus on advanced issues from these fields. Issues such as Feature Selection, Class Imbalances, Cost-sensitivity, One-class learning, Classifier Combination, Performance Evaluation and Visualization (and other topics) will be discussed in depth. Students will be expected to read and criticize articles from the recent literature, complete practical assignments, and proposeand complete a research project.

Pre-requesites

csi5387, although the two courses can be taken at the same time with permission of the instructor.

Overview

Machine Learning is the area of Artificial Intelligence concerned with the problem of building computer programs that automatically improve with experience. This course will cover, in depth, some advanced topics in the field.

The course will consist of a mixture of regular lectures and student presentations. The regular lectures will cover broad introductions to some of the major areas of research currently under investigation. The student presentations will be based on recent research papers that describe new results in these areas.

Students will be evaluated on short written commentaries of research papers (20%), on oral presentations of research papers (20%), and on a final class project of the student's choice (60%). For the class project, students can propose their own topic or choose from a list of suggested topics which will be made available at the begining of the term. Project proposals will be due in mid-semester. Group discussions are highly encouraged for the research paper commentaries and students will be allowed to submit their reviews in teams of 3 or 4. However, projects must be submitted individually.

Topics Covered

Readings

Required

A compilation of selected research papers from the recent literature.

References

Course Support:

Machine Learning Ressources on the Web: