Parity vs. AC0 with simple quantum preprocessing
Abstract
A recent line of work has shown the unconditional advantage of constant-depth quantum computation, or , over , , and related models of classical computation. Problems exhibiting this advantage include search and sampling tasks related to the parity function, and it is natural to ask whether can be used to help compute parity itself. We study -- a hybrid circuit model where operates on measurement outcomes of a circuit, and conjecture cannot achieve correlation with parity. As evidence for this conjecture, we prove: When the circuit is ancilla-free, this model achieves only negligible correlation with parity. For the general (non-ancilla-free) case, we show via a connection to nonlocal games that the conjecture holds for any class of postprocessing functions that has approximate degree and is closed under restrictions, even when the circuit is given arbitrary quantum advice. By known results this confirms the conjecture for linear-size circuits. Towards a switching lemma for , we study the effect of quantum preprocessing on the decision tree complexity of Boolean functions. We find that from this perspective, nonlocal channels are no better than randomness: a Boolean function precomposed with an -party nonlocal channel is together equal to a randomized decision tree with worst-case depth at most . Our results suggest that while is surprisingly powerful for search and sampling tasks, that power is "locked away" in the global correlations of its output, inaccessible to simple classical computation for solving decision problems.
Cite
@article{arxiv.2311.13679,
title = {Parity vs. AC0 with simple quantum preprocessing},
author = {Joseph Slote},
journal= {arXiv preprint arXiv:2311.13679},
year = {2023}
}
Comments
26 pages. To appear in ITCS 2024. This revision: many typos fixed, some statements clarified