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Published December 2014 | Submitted
Journal Article Open

Identifying the Information Gain of a Quantum Measurement

Abstract

We show that quantum-to-classical channels, i.e., quantum measurements, can be asymptotically simulated by an amount of classical communication equal to the quantum mutual information of the measurement, if sufficient shared randomness is available. This result generalizes Winter's measurement compression theorem for fixed independent and identically distributed inputs to arbitrary inputs, and more importantly, it identifies the quantum mutual information of a measurement as the information gained by performing it, independent of the input state on which it is performed. Our result is a generalization of the classical reverse Shannon theorem to quantum-to-classical channels. In this sense, it can be seen as a quantum reverse Shannon theorem for quantum-to-classical channels, but with the entanglement assistance and quantum communication replaced by shared randomness and classical communication, respectively. The proof is based on a novel one-shot state merging protocol for classically coherent states as well as the postselection technique for quantum channels, and it uses techniques developed for the quantum reverse Shannon theorem.

Additional Information

© 2014 IEEE. Manuscript received January 28, 2014; revised August 9, 2014; accepted October 18, 2014. Date of publication October 31, 2014; date of current version November 18, 2014. J. M. Renes was supported in part by the Swiss National Science Foundation through the National Centre of Competence in Research Quantum Science and Technology and in part by the European Research Council under Grant 258932. M. M. Wilde was supported in part by the Centre de Recherches Mathématiques and in part by the University of Montréal, Montréal, QC, Canada. The authors acknowledge discussions with Francesco Buscemi, Matthias Christandl, Nilanjana Datta, Patrick Hayden, Renato Renner, and Marco Tomamichel.

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