Working in the framework of PAC-learning theory, we present special statistics for accomplishing in polynomial time proper learning of DNF boolean formulas having a ΓΏxed number of monomials. Our statistics turn out to be near su cient for a large family of distribution laws -that we call butter y di
Fast Learning of k-Term DNF Formulas with Queries
β Scribed by A. Blum; S. Rudich
- Publisher
- Elsevier Science
- Year
- 1995
- Tongue
- English
- Weight
- 649 KB
- Volume
- 51
- Category
- Article
- ISSN
- 0022-0000
No coin nor oath required. For personal study only.
β¦ Synopsis
This paper presents an algorithm that uses equivalence and membership queries to learn the class of (k)-term DNF formulas in time (n \cdot 2^{o(k)}), where (n) is the number of input variables. This improves upon previous (O\left(n^{k}\right)) bounds and allows one to learn DNF formulas of (O(\log n)) terms in polynomial time. We present the algorithm in its most natural form as a randomized algorithm and then show how recent derandomization techniques can be used to make it deterministic. The algorithm is an exact learning algorithm, but one where the equivalence query hypotheses and the final output are general (not necessarily (k)-term) DNF formulas. For the special case of two-term DNF formulas, we give a simpler version of our algorithm that uses at most (4 n+2) total membership and equivalence queries. c 1995 Academic Press, Inc.
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