Amortized Channel Divergence for Asymptotic Quantum Channel Discrimination
August 04, 2018 Β· Declared Dead Β· π Letters in Mathematical Physics
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Authors
Mark M. Wilde, Mario Berta, Christoph Hirche, Eneet Kaur
arXiv ID
1808.01498
Category
quant-ph: Quantum Computing
Cross-listed
cs.IT
Citations
117
Venue
Letters in Mathematical Physics
Last Checked
3 months ago
Abstract
It is well known that for the discrimination of classical and quantum channels in the finite, non-asymptotic regime, adaptive strategies can give an advantage over non-adaptive strategies. However, Hayashi [IEEE Trans. Inf. Theory 55(8), 3807 (2009)] showed that in the asymptotic regime, the exponential error rate for the discrimination of classical channels is not improved in the adaptive setting. We extend this result in several ways. First, we establish the strong Stein's lemma for classical-quantum channels by showing that asymptotically the exponential error rate for classical-quantum channel discrimination is not improved by adaptive strategies. Second, we recover many other classes of channels for which adaptive strategies do not lead to an asymptotic advantage. Third, we give various converse bounds on the power of adaptive protocols for general asymptotic quantum channel discrimination. Intriguingly, it remains open whether adaptive protocols can improve the exponential error rate for quantum channel discrimination in the asymmetric Stein setting. Our proofs are based on the concept of amortized distinguishability of quantum channels, which we analyse using data-processing inequalities.
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