Current undergraduate students

Friday, September 22, 2006 11:30 am - 11:30 am EDT (GMT -04:00)

AI seminar: Maximum entropy modeling with feature reduction for text categorization

Speaker: Fei Song (University of Guelph)

Text categorization is the process of assigning predefined categories to textual documents. As the exponential growth of web pages and online documents continues, there is an increasing need for systems that automatically classify text into proper categories.

Friday, August 11, 2006 11:30 am - 11:30 am EDT (GMT -04:00)

AI seminar: A comparative study of sequential and simultaneous auctions

Speaker: Shaheen Fatima

Sequential and simultaneous auctions are two important mechanisms for buying and selling multiple objects. These two mechanisms yield different outcomes (i.e., different surpluses, different revenues, and also different profits to the winning bidders). Given this, we compare the outcomes for the sequential and simultaneous mechanisms for the following scenario.

Speaker: Mattt Enns

For my Masters thesis I researched the effects of word sense disambiguation on lexical chains. A lexical chain is a sequence of words in a document that are semantically related (i.e., related in meaning).

Tuesday, July 11, 2006 2:00 pm - 2:00 pm EDT (GMT -04:00)

AI seminar: Uncertainty with logical, procedural and relational languages

Speaker: David Poole (University of British Columbia)

This tutorial gives an overview of rich representations for probabilistic reasoning. The first third of the tutorial gives the basics of logic, knowledge representation and probability.

Friday, June 23, 2006 11:30 am - 11:30 am EDT (GMT -04:00)

AI seminar: Performing incremental Bayesian inference by dynamic model counting

Speaker: Wei Li

The ability to update the structure of a Bayesian network when new data becomes available is crucial for building adaptive systems. Recent work demonstrates that the well-known Davis-Putnam procedure combined with a dynamic decomposition and caching technique is an effective method for exact inference in Bayesian networks with high density and width.

Friday, June 9, 2006 11:30 am - 11:30 am EDT (GMT -04:00)

AI seminar: Clustering using belief propagation and linear programming

Speaker: Delbert Dueck

While many clustering methods assume clusters are described by parameters or points in a vector space, an alternative approach is to identify a set of training cases as 'exemplars' and then assign every other training case to an exemplar.

Speaker: Alex Lopez-Ortiz

Consider the scenario of routing of a Fedex delivery van. The packages to be delivered are received by midnight and delivery starts at 7:00am. This means we have seven hours to compute the best possible approximation to the optimum Travelling Salesman Path computable in that time.

Friday, May 19, 2006 11:30 am - 11:30 am EDT (GMT -04:00)

AI seminar: Trajectory capture in frontal plane geometry for visually impaired

Speaker: Martin Talbot

Users who are blind, or whose visual attention is otherwise occupied, can benefit from an auditory representation of their immediate environment. To create it a video camera senses the environment, which is converted into synthetic audio streams that represent objects in the environment. What aspects of the audio signal best encode this information?