The Adversary Bound Revisited: From Optimal Query Algorithms to Optimal
Control
- URL: http://arxiv.org/abs/2211.16293v3
- Date: Wed, 22 Feb 2023 17:29:09 GMT
- Title: The Adversary Bound Revisited: From Optimal Query Algorithms to Optimal
Control
- Authors: Duyal Yolcu
- Abstract summary: This note complements the paper "One-Way Ticket to Las Vegas and the Quantum Adversary"
I develop the ideas behind the adversary bound - universal algorithm duality therein in a different form, using the same perspective as Barnum-Saks-Szegedy.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: This note complements the paper "One-Way Ticket to Las Vegas and the Quantum
Adversary" (arxiv:2301.02003). I develop the ideas behind the adversary bound -
universal algorithm duality therein in a different form, using the same
perspective as Barnum-Saks-Szegedy in which query algorithms are defined as
sequences of feasible reduced density matrices rather than sequences of
unitaries. This form may be faster to understand for a general quantum
information audience: It avoids defining the "unidirectional relative
$\gamma_{2}$-bound" and relating it to query algorithms explicitly. This proof
is also more general because the lower bound (and universal query algorithm)
apply to a class of optimal control problems rather than just query problems.
That is in addition to the advantages to be discussed in Belovs-Yolcu, namely
the more elementary algorithm and correctness proof that avoids phase
estimation and spectral analysis, allows for limited treatment of noise, and
removes another $\Theta(\log(1/\epsilon))$ factor from the runtime compared to
the previous discrete-time algorithm.
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