Quantum and Randomised Algorithms for Non-linearity Estimation
Abstract
Non-linearity of a Boolean function indicates how far it is from any linear function. Despite there being several strong results about identifying a linear function and distinguishing one from a sufficiently non-linear function, we found a surprising lack of work on computing the non-linearity of a function. The non-linearity is related to the Walsh coefficient with the largest absolute value; however, the naive attempt of picking the maximum after constructing a Walsh spectrum requires queries to an -bit function. We improve the scenario by designing highly efficient quantum and randomised algorithms to approximate the non-linearity allowing additive error, denoted , with query complexities that depend polynomially on . We prove lower bounds to show that these are not very far from the optimal ones. The number of queries made by our randomised algorithm is linear in , already an exponential improvement, and the number of queries made by our quantum algorithm is surprisingly independent of . Our randomised algorithm uses a Goldreich-Levin style of navigating all Walsh coefficients and our quantum algorithm uses a clever combination of Deutsch-Jozsa, amplitude amplification and amplitude estimation to improve upon the existing quantum versions of the Goldreich-Levin technique.
Cite
@article{arxiv.2103.07934,
title = {Quantum and Randomised Algorithms for Non-linearity Estimation},
author = {Debajyoti Bera and Tharrmashastha Sapv},
journal= {arXiv preprint arXiv:2103.07934},
year = {2021}
}
Comments
Accepted in ACM Transactions on Quantum Computing