104
4

Robust quantum minimum finding with an application to hypothesis selection

Abstract

We consider the problem of finding the minimum element in a list of length NN using a noisy comparator. The noise is modelled as follows: given two elements to compare, if the values of the elements differ by at least α\alpha by some metric defined on the elements, then the comparison will be made correctly; if the values of the elements are closer than α\alpha, the outcome of the comparison is not subject to any guarantees. We demonstrate a quantum algorithm for noisy quantum minimum-finding that preserves the quadratic speedup of the noiseless case: our algorithm runs in time O~(N(1+Δ))\tilde O(\sqrt{N (1+\Delta)}), where Δ\Delta is an upper-bound on the number of elements within the interval α\alpha, and outputs a good approximation of the true minimum with high probability. Our noisy comparator model is motivated by the problem of hypothesis selection, where given a set of NN known candidate probability distributions and samples from an unknown target distribution, one seeks to output some candidate distribution O(ε)O(\varepsilon)-close to the unknown target. Much work on the classical front has been devoted to speeding up the run time of classical hypothesis selection from O(N2)O(N^2) to O(N)O(N), in part by using statistical primitives such as the Scheff\'{e} test. Assuming a quantum oracle generalization of the classical data access and applying our noisy quantum minimum-finding algorithm, we take this run time into the sublinear regime. The final expected run time is O~(N(1+Δ))\tilde O( \sqrt{N(1+\Delta)}), with the same O(logN)O(\log N) sample complexity from the unknown distribution as the classical algorithm. We expect robust quantum minimum-finding to be a useful building block for algorithms in situations where the comparator (which may be another quantum or classical algorithm) is resolution-limited or subject to some uncertainty.

View on arXiv
Comments on this paper