Random quantum circuits transform local noise into global white noise
- URL: http://arxiv.org/abs/2111.14907v1
- Date: Mon, 29 Nov 2021 19:26:28 GMT
- Title: Random quantum circuits transform local noise into global white noise
- Authors: Alexander M. Dalzell, Nicholas Hunter-Jones, Fernando G. S. L.
Brand\~ao
- Abstract summary: We study the distribution over measurement outcomes of noisy random quantum circuits in the low-fidelity regime.
For local noise that is sufficiently weak and unital, correlations (measured by the linear cross-entropy benchmark) between the output distribution $p_textnoisy$ of a generic noisy circuit instance shrink exponentially.
If the noise is incoherent, the output distribution approaches the uniform distribution $p_textunif$ at precisely the same rate.
- Score: 118.18170052022323
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We study the distribution over measurement outcomes of noisy random quantum
circuits in the low-fidelity regime. We show that, for local noise that is
sufficiently weak and unital, correlations (measured by the linear
cross-entropy benchmark) between the output distribution $p_{\text{noisy}}$ of
a generic noisy circuit instance and the output distribution $p_{\text{ideal}}$
of the corresponding noiseless instance shrink exponentially with the expected
number of gate-level errors, as $F=\text{exp}(-2s\epsilon \pm O(s\epsilon^2))$,
where $\epsilon$ is the probability of error per circuit location and $s$ is
the number of two-qubit gates. Furthermore, if the noise is incoherent, the
output distribution approaches the uniform distribution $p_{\text{unif}}$ at
precisely the same rate and can be approximated as $p_{\text{noisy}} \approx
Fp_{\text{ideal}} + (1-F)p_{\text{unif}}$, that is, local errors are scrambled
by the random quantum circuit and contribute only white noise (uniform output).
Importantly, we upper bound the total variation error (averaged over random
circuit instance) in this approximation as $O(F\epsilon \sqrt{s})$, so the
"white-noise approximation" is meaningful when $\epsilon \sqrt{s} \ll 1$, a
quadratically weaker condition than the $\epsilon s\ll 1$ requirement to
maintain high fidelity. The bound applies when the circuit size satisfies $s
\geq \Omega(n\log(n))$ and the inverse error rate satisfies $\epsilon^{-1} \geq
\tilde{\Omega}(n)$. The white-noise approximation is useful for salvaging the
signal from a noisy quantum computation; it was an underlying assumption in
complexity-theoretic arguments that low-fidelity random quantum circuits cannot
be efficiently sampled classically. Our method is based on a map from
second-moment quantities in random quantum circuits to expectation values of
certain stochastic processes for which we compute upper and lower bounds.
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