English

$k$-Forrelation Optimally Separates Quantum and Classical Query Complexity

Quantum Physics 2020-11-18 v3 Computational Complexity

Abstract

Aaronson and Ambainis (SICOMP `18) showed that any partial function on NN bits that can be computed with an advantage δ\delta over a random guess by making qq quantum queries, can also be computed classically with an advantage δ/2\delta/2 by a randomized decision tree making Oq(N112qδ2){O}_q(N^{1-\frac{1}{2q}}\delta^{-2}) queries. Moreover, they conjectured the kk-Forrelation problem -- a partial function that can be computed with q=k/2q = \lceil k/2 \rceil quantum queries -- to be a suitable candidate for exhibiting such an extremal separation. We prove their conjecture by showing a tight lower bound of Ω~(N11/k)\widetilde{\Omega}(N^{1-1/k}) for the randomized query complexity of kk-Forrelation, where the advantage δ=2O(k)\delta = 2^{-O(k)}. By standard amplification arguments, this gives an explicit partial function that exhibits an Oϵ(1)O_\epsilon(1) vs Ω(N1ϵ)\Omega(N^{1-\epsilon}) separation between bounded-error quantum and randomized query complexities, where ϵ>0\epsilon>0 can be made arbitrarily small. Our proof also gives the same bound for the closely related but non-explicit kk-Rorrelation function introduced by Tal (FOCS `20). Our techniques rely on classical Gaussian tools, in particular, Gaussian interpolation and Gaussian integration by parts, and in fact, give a more general statement. We show that to prove lower bounds for kk-Forrelation against a family of functions, it suffices to bound the 1\ell_1-weight of the Fourier coefficients between levels kk and (k1)k(k-1)k. We also prove new interpolation and integration by parts identities that might be of independent interest in the context of rounding high-dimensional Gaussian vectors.

Keywords

Cite

@article{arxiv.2008.07003,
  title  = {$k$-Forrelation Optimally Separates Quantum and Classical Query Complexity},
  author = {Nikhil Bansal and Makrand Sinha},
  journal= {arXiv preprint arXiv:2008.07003},
  year   = {2020}
}

Comments

40 pages, 2 figures. Change from v1 to v2: Updated figures to fix an Adobe Acrobat specific issue. Change from v0 to v1: Improved the advantage $\delta$ to $2^{-O(k)}$ strengthening the main conclusions. Added a reference to the independent work of Sherstov, Storozhenko and Wu (arxiv:2008.10223) who obtained a similar lower bound for the randomized query complexity of $k$-Rorrelation