Approximate inverse measurement channel for shallow shadows
Riccardo Cioli, Elisa Ercolessi, Matteo Ippoliti, Xhek Turkeshi,, Lorenzo Piroli

TL;DR
This paper introduces an approximate inverse measurement channel for shallow shadows in quantum systems, enabling efficient fidelity and purity estimation for large systems with various circuit connectivities.
Contribution
It proposes a simple approximate post-processing scheme for shallow shadows that extends their applicability to large quantum systems and different circuit connectivities.
Findings
Estimator achieves small approximation error at depth O(log(N/δ))
Purity estimator becomes accurate at depth O(N)
Variance scaling matches that of global random unitaries
Abstract
Classical shadows are a versatile tool to probe many-body quantum systems, consisting of a combination of randomised measurements and classical post-processing computations. In a recently introduced version of the protocol, the randomization step is performed via unitary circuits of variable depth , defining the so-called shallow shadows. For sufficiently large , this approach allows one to get around the use of non-local unitaries to probe global properties such as the fidelity with respect to a target state or the purity. Still, shallow shadows involve the inversion of a many-body map, the measurement channel, which requires non-trivial computations in the post-processing step, thus limiting its applicability when the number of qubits is large. In this work, we put forward a simple approximate post-processing scheme where the infinite-depth inverse channel is applied to the…
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Taxonomy
TopicsFlow Measurement and Analysis · Target Tracking and Data Fusion in Sensor Networks · Underwater Acoustics Research
