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Two new results about quantum exact learning

30 September 2018
Srinivasan Arunachalam
Sourav Chakraborty
Troy Lee
Manaswi Paraashar
Ronald de Wolf
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Abstract

We present two new results about exact learning by quantum computers. First, we show how to exactly learn a kkk-Fourier-sparse nnn-bit Boolean function from O(k1.5(log⁡k)2)O(k^{1.5}(\log k)^2)O(k1.5(logk)2) uniform quantum examples for that function. This improves over the bound of Θ~(kn)\widetilde{\Theta}(kn)Θ(kn) uniformly random \emph{classical} examples (Haviv and Regev, CCC'15). Additionally, we provide a possible direction to improve our O~(k1.5)\widetilde{O}(k^{1.5})O(k1.5) upper bound by proving an improvement of Chang's lemma for kkk-Fourier-sparse Boolean functions. Second, we show that if a concept class C\mathcal{C}C can be exactly learned using QQQ quantum membership queries, then it can also be learned using O(Q2log⁡Qlog⁡∣C∣)O\left(\frac{Q^2}{\log Q}\log|\mathcal{C}|\right)O(logQQ2​log∣C∣) \emph{classical} membership queries. This improves the previous-best simulation result (Servedio and Gortler, SICOMP'04) by a log⁡Q\log QlogQ-factor.

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