Tight Bounds on Pauli Channel Learning without Entanglement

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Quantum entanglement is a crucial resource for learning properties from nature, but a precise characterization of its advantage can be challenging. In this Letter, we consider learning algorithms without entanglement to be those that only utilize states, measurements, and operations that are separable between the main system of interest and an ancillary system. Interestingly, we show that these algorithms are equivalent to those that apply quantum circuits on the main system interleaved with mid-circuit measurements and classical feedforward. Within this setting, we prove a tight lower bound for Pauli channel learning without entanglement that closes the gap between the best-known upper and lower bound. In particular, we show that Theta(2n epsilon-2) rounds of measurements are required to estimate each eigenvalue of an n-qubit Pauli channel to epsilon error with high probability when learning without entanglement. In contrast, a learning algorithm with entanglement only needs Theta(epsilon-2) copies of the Pauli channel. The tight lower bound strengthens the foundation for an experimental demonstration of entanglement-enhanced advantages for
Publisher
AMER PHYSICAL SOC
Issue Date
2024-05
Language
English
Article Type
Review
Citation

PHYSICAL REVIEW LETTERS, v.132, no.18

ISSN
0031-9007
DOI
10.1103/PhysRevLett.132.180805
URI
http://hdl.handle.net/10203/319268
Appears in Collection
PH-Journal Papers(저널논문)
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