Convexification of the Quantum Network Utility Maximization Problem

Sounak Kar;Stephanie Wehner
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Abstract

Network utility maximization (NUM) addresses the problem of allocating resources fairly within a network and explores the ways to achieve optimal allocation in real-world networks. Although extensively studied in classical networks, NUM is an emerging area of research in the context of quantum networks. In this work, we consider the quantum network utility maximization (QNUM) problem in a static setting, where a user's utility takes into account the assigned quantum quality (fidelity) via a generic entanglement measure, as well as the corresponding rate of entanglement generation. Under certain assumptions, we demonstrate that the QNUM problem can be formulated as an optimization problem with the rate allocation vector as the only decision variable. Using a change-of-variable technique known in the field of geometric programming, we then establish sufficient conditions under which this formulation can be reduced to a convex problem: a class of optimization problems that can be solved efficiently and with certainty even in high dimensions. We further show that this technique preserves convexity, enabling us to formulate convex QNUM problems in networks where some routes have certain entanglement measures that do not readily admit convex formulation while others do. This allows us to compute the optimal resource allocation in networks where heterogeneous applications run over different routes.
量子网络效用最大化问题的凸化
网络效用最大化(Network utility maximization, NUM)解决了网络中资源公平分配的问题,并探索了在现实网络中实现最优分配的方法。虽然在经典网络中进行了广泛的研究,但NUM是量子网络背景下的一个新兴研究领域。在这项工作中,我们考虑了静态设置中的量子网络效用最大化(QNUM)问题,其中用户的效用考虑了通过通用纠缠度量分配的量子质量(保真度)以及相应的纠缠生成率。在一定的假设条件下,我们证明了QNUM问题可以表述为一个以速率分配向量为唯一决策变量的优化问题。利用几何规划领域中已知的变量变换技术,我们建立了充分条件,在此条件下,该公式可以简化为凸问题:一类即使在高维中也可以有效且确定地解决的优化问题。我们进一步证明了这种技术保留了凸性,使我们能够在网络中制定凸QNUM问题,其中一些路线具有某些纠缠措施,这些措施不易接受凸公式,而其他路线则不易接受凸公式。这允许我们在异构应用程序在不同路由上运行的网络中计算最佳资源分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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