Accurately Simulating the Time Evolution of an Ising Model with Echo Verified Clifford Data Regression on a Superconducting Quantum Computer
We present an error mitigation strategy composed of Echo Verification (EV) and Clifford Data Regression (CDR), the combination of which allows one to learn the effect of the quantum noise channel to extract error mitigated estimates for the expectation value of Pauli observables. We analyse the beha...
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Zusammenfassung: | We present an error mitigation strategy composed of Echo Verification (EV)
and Clifford Data Regression (CDR), the combination of which allows one to
learn the effect of the quantum noise channel to extract error mitigated
estimates for the expectation value of Pauli observables. We analyse the
behaviour of the method under the depolarizing channel and derive an estimator
for the depolarization rate in terms of the ancilla purity and postselection
probability. We also highlight the sensitivity of this probability to noise, a
potential bottleneck for the technique. We subsequently consider a more general
noise channel consisting of arbitrary Pauli errors, which reveals a linear
relationship between the error rates and the estimation of expectation values,
suggesting the learnability of noise in EV by regression techniques. Finally,
we present a practical demonstration of Echo Verified Clifford Data Regression
(EVCDR) on a superconducting quantum computer and observe accurate results for
the time evolution of an Ising model over a spin-lattice consisting of up to 35
sites and circuit depths in excess of 1,000. |
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DOI: | 10.48550/arxiv.2408.07439 |