Faster exact learning of k-term DNFs with membership and equivalence queries
Abstract
In 1992 Blum and Rudich [BR92] gave an algorithm that uses membership and equivalence queries to learn k-term DNF formulas over \0,1\n in time poly(n,2k), improving on the naive O(nk) running time that can be achieved without membership queries [Val84]. Since then, many alternative algorithms [Bsh95, Kus97, Bsh97, BBB+00] have been given which also achieve runtime poly(n,2k). We give an algorithm that uses membership and equivalence queries to learn k-term DNF formulas in time poly(n) · 2O(k). This is the first improvement for this problem since the original work of Blum and Rudich [BR92]. Our approach employs the Winnow2 algorithm for learning linear threshold functions over an enhanced feature space which is adaptively constructed using membership queries. It combines a strengthened version of a technique that effectively reduces the length of DNF terms from the original work of [BR92] with a range of additional algorithmic tools (attribute-efficient learning algorithms for low-weight linear threshold functions and techniques for finding relevant variables from junta testing) and analytic ingredients (extremal polynomials and noise operators) that are novel in the context of query-based DNF learning.
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