Litcius/Paper detail

Parallelization of Adaptive Quantum Channel Discrimination in the Non-Asymptotic Regime

Bjarne Bergh, Nilanjana Datta, Robert Salzmann, Mark M. Wilde

2024IEEE Transactions on Information Theory10 citationsDOI

Abstract

We investigate the performance of parallel and adaptive quantum channel discrimination strategies for a finite number of channel uses. It has recently been shown that, in the asymmetric setting with asymptotically vanishing type I error probability, adaptive strategies are asymptotically not more powerful than parallel ones. We extend this result to the non-asymptotic regime with finitely many channel uses, by explicitly constructing a parallel strategy for any given adaptive strategy, and bounding the difference in their performances, measured in terms of the decay rate of the type II error probability per channel use. We further show that all parallel strategies can be optimized over in time polynomial in the number of channel uses, and hence our result can also be used to obtain a poly-time-computable asymptotically tight upper bound on the performance of general adaptive strategies.

Topics & Concepts

Computer scienceChannel (broadcasting)QuantumQuantum channelParallel computingQuantum entanglementTheoretical computer scienceAlgorithmComputer networkPhysicsQuantum mechanicsQuantum Information and CryptographyQuantum Computing Algorithms and Architecture