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Think globally, act locally: On the reshaping of information landscapes

机译:放眼全球,在本地采取行动:关于重塑信息格局

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In large-scale resource-constrained systems, such as wireless sensor networks, global objectives should be ideally achieved through inexpensive local interactions. A technique satisfying these requirements is information potentials, in which distributed functions disseminate information about the process monitored by the network. Information potentials are usually computed through local aggregation or gossiping. These methods however, do not consider the topological properties of the network, such as node density, which could be exploited to enhance the performance of the system. This paper proposes a novel aggregation method with which a potential becomes sensitive to the network topology. Our method introduces the notion of affinity spaces, which allow us to uncover the deep connections between the aggregation scope (the radius of the extended neighborhood whose information is aggregated) and the network's Laplacian (which captures the topology of the connectivity graph). Our study provides two additional contributions: (i) It characterizes the convergence of information potentials for static and dynamic networks. Our analysis captures the impact of key parameters, such as node density, time-varying information, as well as of the addition (or removal) of links and nodes. (ii) It shows that information potentials are decomposed into wave-like eigenfunctions that depend on the aggregation scope. This result has important implications, for example it prevents greedy routing techniques from getting stuck by eliminating local-maxima. Simulations and experimental evaluation show that our main findings hold under realistic conditions, with unstable links and message loss.
机译:在大规模资源受限的系统(例如无线传感器网络)中,应该通过廉价的本地交互来理想地实现全局目标。满足这些要求的技术是信息潜力,其中分布式功能散布有关网络监控过程的信息。信息潜力通常通过本地聚集或闲聊来计算。但是,这些方法没有考虑网络的拓扑属性,例如节点密度,可以利用这些拓扑属性来增强系统的性能。本文提出了一种新的聚合方法,利用该方法,电位对网络拓扑变得敏感。我们的方法引入了亲和力空间的概念,这使我们能够发现聚合作用域(已聚合信息的扩展邻域的半径)与网络的拉普拉斯算子(捕获连接图的拓扑)之间的深层联系。我们的研究提供了两个额外的贡献:(i)它描述了静态和动态网络的信息潜力的融合。我们的分析捕获了关键参数的影响,例如节点密度,时变信息以及链接和节点的添加(或删除)。 (ii)表明信息势被分解为取决于聚集范围的波状本征函数。此结果具有重要意义,例如,它通过消除局部最大值来防止贪婪路由技术卡住。仿真和实验评估表明,我们的主要发现在现实条件下成立,链接不稳定且消息丢失。

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