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Logical shadow tomography: Efficient estimation of error-mitigated observables

Hong-ye Hu, Ryan Larose, Yi-Zhuang You, E. Rieffel, Zhihui Wang·March 14, 2022
Physics

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Abstract

We introduce a technique to estimate error-mitigated expectation values on noisy quantum computers. Our technique performs shadow tomography on a logical state to produce a memory-efficient classical reconstruction of the noisy density matrix. Using efficient classical post-processing, one can mitigate errors by projecting a general nonlinear function of the noisy density matrix into the codespace. The subspace expansion and virtual distillation can be viewed as special cases of the new framekwork. We show our method is favorable in the quantum and classical resources overhead. Relative to subspace expansion which requires O (cid:0) 2 N (cid:1) samples to estimate a logical Pauli observable with [[ N, k ]] error correction code, our technique requires only O (cid:0) 4 k (cid:1) samples. Relative to virtual distillation, our technique can compute powers of the density matrix without additional copies of quantum states or quantum memory. We present numerical evidence using logical states encoded with up to sixty physical qubits and show fast convergence to error-free expectation values with only 10 5 samples under 1% depolarizing noise.

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