Bart Selman
Cornell University
"Understanding Complexity: Recent Developments and Directions"
3/3/2000: [time not recorded]
[location not recorded]
Abstract: Recently, we have made considerable progress towards a better
understanding of the nature of hard computational problems. In
particular, by exploiting connections between combinatorial search
problems and models from statistical physics, we now have methods that
enable a much finer-grained characterization of computational complexity
than the standard worst-case complexity measures. These findings provide
insights into new algorithmic strategies based on randomization and
distributed algorithm portfolios. I will survey the recent progress
in this area and I will discuss implications for the design of more
robust computational systems.
About Bart Selman: Bart Selman is an Associate Professor of Computer Science at Cornell
University. He previously was a principal scientist at AT
T Bell Laboratories.
He holds a Ph.D. and M.Sc. in computer science from the University of Toronto,
and a M.Sc. in physics from Delft University of Technology. His research has
covered many areas in artificial intelligence and computer science, including
tractable inference, knowledge representation, natural language understanding,
stochastic search methods, theory approximation, knowledge compilation,
planning, default reasoning, and the connections between computer science and
physics (phase transition phenomena). He has received four best paper awards
at the American and Canadian national artificial intelligence conferences, and
at the International Conference on Knowledge Representation. He holds an
NSF CAREER Award and is an Alfred P. Sloan Research Fellow.
For more info, see http://www.cs.cornell.edu/home/selman
Last updated: Mon Jun 19 17:44:06 2006
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