Convexity and Operational Interpretation of the Quantum Information Bottleneck Function
Nilanjana Datta, Christoph Hirche, Andreas Winter

TL;DR
This paper proves the convexity of the quantum information bottleneck function and provides a clear operational interpretation as the optimal rate for quantum source coding with side information, advancing understanding in quantum information theory.
Contribution
It establishes the convexity of the quantum IB function and offers a new operational interpretation as the rate of quantum source coding with side information.
Findings
Proves the convexity of the quantum IB function.
Provides an operational interpretation as quantum source coding rate.
Shows the convexity of the quantum privacy funnel function.
Abstract
In classical information theory, the information bottleneck method (IBM) can be regarded as a method of lossy data compression which focusses on preserving meaningful (or relevant) information. As such it has recently gained a lot of attention, primarily for its applications in machine learning and neural networks. A quantum analogue of the IBM has recently been defined, and an attempt at providing an operational interpretation of the so-called quantum IB function as an optimal rate of an information-theoretic task, has recently been made by Salek et al. However, the interpretation given in that paper has a couple of drawbacks; firstly its proof is based on a conjecture that the quantum IB function is convex, and secondly, the expression for the rate function involves certain entropic quantities which occur explicitly in the very definition of the underlying information-theoretic task,…
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