Local certification of unitary operations
- URL: http://arxiv.org/abs/2312.17037v2
- Date: Tue, 3 Sep 2024 15:10:58 GMT
- Title: Local certification of unitary operations
- Authors: Ryszard Kukulski, Mateusz Stępniak, Kamil Hendzel, Łukasz Pawela, Bartłomiej Gardas, Zbigniew Puchała,
- Abstract summary: Local certification of unitary quantum channels is a natural extension of quantum hypothesis testing.
We show that the optimal local strategy does not need usage of auxiliary systems and requires only single round of one-way classical communication.
- Score: 1.099532646524593
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this work, we analyze the local certification of unitary quantum channels, which is a natural extension of quantum hypothesis testing. A particular case of a quantum channel operating on two systems corresponding to product states at the input, is considered. The goal is to minimize the probability of the type II error, given a specified maximum probability of the type I error, considering assistance through entanglement with auxiliary systems. Our result indicates connection of the local certification problem with a product numerical range of unitary matrices. We show that the optimal local strategy does not need usage of auxiliary systems and requires only single round of one-way classical communication. Moreover, we compare local and global certification strategies and show that typically local strategies are optimal, yet in some extremal cases, where global strategies make no errors, local ones may fail miserably. Finally, some application for local certification of von Neumann measurements are discussed as well.
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