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Adaptive Exact Learning of Decision Trees from Membership Queries

Published 23 Jan 2019 in cs.LG and stat.ML | (1901.07750v1)

Abstract: In this paper we study the adaptive learnability of decision trees of depth at most $d$ from membership queries. This has many applications in automated scientific discovery such as drugs development and software update problem. Feldman solves the problem in a randomized polynomial time algorithm that asks $\tilde O(2{2d})\log n$ queries and Kushilevitz-Mansour in a deterministic polynomial time algorithm that asks $ 2{18d+o(d)}\log n$ queries. We improve the query complexity of both algorithms. We give a randomized polynomial time algorithm that asks $\tilde O(2{2d}) + 2{d}\log n$ queries and a deterministic polynomial time algorithm that asks $2{5.83d}+2{2d+o(d)}\log n$ queries.

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