The proposed research is in the area of ``machine learning,` with an emphasis on the development of efficient algorithms of both practical and theoretical interest. The problems investigated include: (a) learning in the presence of noise (searching for learning linear-threshold and parity functions in the presence of classification noise, and `hypothesis boosting` is possible in the presence of classification noise); (b) exploration with obstacles (developing efficient algorithms for exploring planar regions with obstacles and/or planar graphs, with a view towards integrating these algorithms in larger navigation systems); (c) coordinating experts/feature selection (developing effective methods of combining the advice of a variety of experts/features for a given problem); (d) autonomous learning of causal structures (exploring how active learning can effectively learn a complex environment, such as a Macintosh window system); (e) new models of active learning (refining the understanding of the power and limitations of `membership queries` for learning); (f) learning and biology (looking at a variety of inference problems motivated by problems in molecular biology); and (g) teaching in different learning models (focusing on algorithms for `effective teaching`).

Agency
National Science Foundation (NSF)
Institute
Division of Computer and Communication Foundations (CCF)
Application #
9310888
Program Officer
Yechezkel Zalcstein
Project Start
Project End
Budget Start
1993-09-01
Budget End
1997-02-28
Support Year
Fiscal Year
1993
Total Cost
$217,545
Indirect Cost
Name
Massachusetts Institute of Technology
Department
Type
DUNS #
City
Cambridge
State
MA
Country
United States
Zip Code
02139