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Spreading in scale-free computer networks with improved clustering

机译:使用改进的聚类在无规模的计算机网络中传播

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摘要

In this study, we investigated data spreading in computer networks with scale-free topology under various levels of improved clustering. Starting from a pure Barabasi-Albert (BA) network topology, we applied a Poisson-based rewiring procedure with increasing rewiring probability, which promotes local connections. We then performed wired computer network simulations in NS2 simulator for these topologies. We found that for pure BA network, data transfer (throughput) is maximum, where time required for establishing routing scheme, end-to-end delays in data transmission and number of nodes acting in data transfer are at their minimum levels. Improving clustering increases these parameters those are at their minima. A noteworthy finding of this study is that, for moderate levels of clustering, total throughput remains close to its maximum yielding stable transfer rates, although number of infected nodes and end-to-end delay increase. This indicates that clustering promotes spreading phenomena in networks, although it increases average separation. As a result, clustering property emerges as a catalyzer in data spreading with minimal effects on the total amount of transmission.
机译:在这项研究中,我们在各种改进的聚类下,在计算机网络中调查了计算机网络中的数据传播。从纯粹的Barabasi-Albert(BA)网络拓扑开始,我们应用了基于泊松的重新灌注程序,随着重新加热的概率增加,促进了局部连接。然后,我们在NS2模拟器中执行了有线计算机网络模拟,用于这些拓扑。我们发现,对于纯BA网络,数据传输(吞吐量)最大,其中建立路由方案所需的时间,数据传输中的数据传输的端到端延迟和在数据传输中作用的节点的数量处于其最小级别。改善聚类增加了这些参数,这些参数在其最小值时。值得注意的发现本研究是,对于中等程度的聚类,总吞吐量仍然接近其最大产量稳定的转移率,尽管受感染节点的数量和端到端的延迟增加。这表明聚类促进了网络中的扩散现象,尽管它增加了平均分离。因此,群集属性作为催化剂,在数据扩展中,对总传输总量的影响最小。

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