Kristin P. Bennett
Professor
Department of Mathematical Sciences
Rensselaer Polytechnic Institute
Troy, New York 12180-3590

E-mail: bennek at rpi dot edu
Telephone: (518) 276-6899
Fax: (518) 276-4824

Ph.D., University of Wisconsin, Madison, 1993
Interests: mathematical programming, machine learning, support vector machines, neural networks, artificial intelligence, parallel optimization, tabu search, automated drug discovery, data mining, bioinformatics

Table of Contents

Research Interests

Combining operations research and artificial intelligence problem solving methods. Mathematical programming approaches to problems in artificial intelligence such as machine learning, neural networks, pattern recognition, and planning. Application of these techniques to medical, financial and scientific problems. Adaptation of these algorithms for parallel machines. Mathematical programming approaches to other areas in computer sciences such as genetic algorithms and database query optimization. Recent developments appear in the papers referenced on this page. See Olvi Mangasarian's Mathematical Programming in Machine Learning for related work. Here's the slides from the some older SVM overview talk in powerpoint, Support Vector Machines: Hype or Hallelujah?. For more info on Support Vector Machines see the GMD Support Vector Machine page. For a great book and related information on SVM check out the Support Vector Net .

See also the home page of my former and current graduate students:

Interested in learning more about Support Vector Machines, Here are the slides from an SVM overview talk in powerpoint, Support Vector Machines: Hype or Hallelujah? and the article from SIGKDD explorations

If you would like to learn about our feature selection and visualization methodology for SVM see the talk "Dimensionality Reduction via Sparse Support Vector Machines given at the NIPS 2001 Workshop on Feature Selection.

Here is more info on our project on automated drug discovery via data mining .

Selected Recent Publications (a bit behind)--

Note that this research was based partially upon work supported by the National Science Foundation under Grant No. 970923 and No. 9979860.

Courses Taught


RPI Math
Last Changed: December 2004