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ALT
2002
Springer

The Complexity of Learning Concept Classes with Polynomial General Dimension

14 years 8 months ago
The Complexity of Learning Concept Classes with Polynomial General Dimension
The general dimension is a combinatorial measure that characterizes the number of queries needed to learn a concept class. We use this notion to show that any p-evaluatable concept class with polynomial query complexity can be learned in polynomial time with the help of an oracle in the polynomial hierarchy, where the complexity of the required oracle depends on the query-types used by the learning algorithm. In particular, we show that for subset and superset queries an oracle in ΣP 3 suffices. Since the concept class of DNF formulas has polynomial query complexity with respect to subset and superset queries with DNF formulas as hypotheses, it follows that DNF formulas are properly learnable in polynomial time with subset and superset queries and the help of an oracle in ΣP 3 . We also show that the required oracle in our main theorem cannot be replaced by an oracle in a lower level of the polynomial-time hierarchy, unless the hierarchy collapses. Key words: query learning, learnin...
Johannes Köbler, Wolfgang Lindner
Added 15 Mar 2010
Updated 15 Mar 2010
Type Conference
Year 2002
Where ALT
Authors Johannes Köbler, Wolfgang Lindner
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