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Wednesday, September 27, 2000 - 3:00pm

Robert Schapire

AT&T Labs

Location

The Wharton School

SH-DH 351

Refreshments will be served.

Boosting is a general method for producing a very accurate classification rule by combining rough and moderately inaccurate "rules of thumb." While rooted in a theoretical framework of machine learning, boosting has been found to perform quite well empirically. In this talk, I will introduce the boosting algorithm AdaBoost, and explain the underlying theory of boosting, including an explanation of why boosting often does not suffer from overfitting. I also will describe some recent applications of boosting