Exact learning via the Monotone theory
Bshouty, N.H.
Foundations of Computer Science, 1993. Proceedings., 34th Annual Symposium on
Volume , Issue , 3-5 Nov 1993 Page(s):302 - 311
Digital Object Identifier 10.1109/SFCS.1993.366857
Summary:We study the learnability of concept classes from membership and
equivalence queries. We develop the Monotone theory that proves (1) Any
boolean function is learnable as decision tree. (2) Any boolean function
is either learnable as DNF or as CNF (or both). The first result solves
the open problem of the learnability of decision trees and the second
result gives more evidence that DNFs are not “very hard” to
learn
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