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An Information Analysis of Iterative Algorithms for Network Utility Maximization and Strategic Games

机译:网络效用最大化和策略博弈的迭代算法的信息分析

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摘要

A variety of resource allocation problems on networked systems, for example, those in cyber-physical systems or Internet-of-things applications, require distributed solution methods. Modern distributed algorithms usually require bandwidth-limited digital communication between the system and its users, who are often modeled as independent decision makers with individual preferences. This paper presents a quantitative information flow and knowledge gain analysis of decentralized iterative algorithms with bounded trajectories in the context of convex network utility maximization problems and strategic games with a unique Nash equilibrium solution. First, a novel generic framework is introduced to quantify knowledge gain in network resource allocation problems using entropy by taking into account priors in the solution space. Second, a general result is presented on the interplay between quantization of information and distributed algorithm performance both for linear and sublinear convergence. Third, information flow in distributed algorithms is studied and a lower bound is derived on the total amount of information exchanged for convergence under uniform quantization. The well-known primal-dual decomposition algorithm is used as an example to illustrate the results. Finally, convergence guarantees for distributed algorithms with estimation are investigated. This paper establishes specific links between information concepts and iterative algorithms in addition to building a foundation for integrating learning schemes into distributed optimization.
机译:联网系统上的各种资源分配问题(例如,网络物理系统或物联网应用程序中的资源分配问题)都需要分布式解决方案方法。现代的分布式算法通常需要系统与其用户之间的带宽受限的数字通信,这些用户通常被建模为具有个人偏好的独立决策者。本文在凸网络效用最大化问题和具有独特Nash平衡解的战略博弈的背景下,给出了有界轨迹的分散式迭代算法的定量信息流和知识增益分析。首先,引入一种新颖的通用框架,通过考虑解决方案空间中的先验条件,使用熵来量化网络资源分配问题中的知识获取。其次,给出了关于线性和亚线性收敛的信息量化与分布式算法性能之间相互作用的总体结果。第三,研究了分布式算法中的信息流,并得出了在统一量化条件下为收敛而交换的信息总量的下界。以众所周知的原始对偶分解算法为例来说明结果。最后,研究了带估计的分布式算法的收敛性保证。除了为将学习方案集成到分布式优化中奠定基础之外,本文还建立了信息概念与迭代算法之间的特定链接。

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