Quantum algorithms and approximating polynomials for composed functions with shared inputs

09/06/2018
by   Mark Bun, et al.
0

We give new quantum algorithms for evaluating composed functions whose inputs may be shared between bottom-level gates. Let f be a Boolean function and consider a function F obtained by applying f to conjunctions of possibly overlapping subsets of n variables. If f has quantum query complexity Q(f), we give an algorithm for evaluating F using Õ(√(Q(f) · n)) quantum queries. This improves on the bound of O(Q(f) ·√(n)) that follows by treating each conjunction independently, and is tight for worst-case choices of f. Using completely different techniques, we prove a similar tight composition theorem for the approximate degree of f. By recursively applying our composition theorems, we obtain a nearly optimal Õ(n^1-2^-d) upper bound on the quantum query complexity and approximate degree of linear-size depth-d AC^0 circuits. As a consequence, such circuits can be PAC learned in subexponential time, even in the challenging agnostic setting. Prior to our work, a subexponential-time algorithm was not known even for linear-size depth-3 AC^0 circuits. We also show that any substantially faster learning algorithm will require fundamentally new techniques.

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