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JCSS
2007

A general dimension for query learning

13 years 4 months ago
A general dimension for query learning
We introduce a combinatorial dimension that characterizes the number of queries needed to exactly (or approximately) learn concept classes in various models. Our general dimension provides tight upper and lower bounds on the query complexity for all sorts of queries, not only for example-based queries as in previous works. As an application we show that for learning DNF formulas, unspecified attribute value membership and equivalence queries are not more powerful than standard membership and equivalence queries. Further, in the approximate learning setting, we use the general dimension to characterize the query complexity in the statistical query as well as the learning by distances model. Moreover, we derive close bounds on the number of statistical queries needed to approximately learn DNF formulas. Key words: query learning, UAV queries, learning by distances, statistical queries, learning DNF formulas
José L. Balcázar, Jorge Castro, Davi
Added 15 Dec 2010
Updated 15 Dec 2010
Type Journal
Year 2007
Where JCSS
Authors José L. Balcázar, Jorge Castro, David Guijarro, Johannes Köbler, Wolfgang Lindner
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