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Local representatives in weighted networks

机译:加权网络中的本地代表

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摘要

The main features of current real-world networks are their large sizes and structures, which show varying degrees of importance of the nodes in their surroundings. The topic of evaluating the importance of the nodes offers many different approaches that usually work with unweighted networks. We present a novel, simple and straightforward approach for the evaluation of the network's nodes with a focus on local properties in their surroundings. The presented approach is intended for weighted networks where the weight can be interpreted as the proximity between the nodes. Our suggested x-representativeness then takes into account the degree of the node, its nearest neighbors and one other parameter which we call the x-representativeness base. Following that, we also present experiments with three different real-world networks. The aim of these experiments is to show that the x-representativeness can be used to deterministically reduce the network to differently sized samples of representatives, while maintaining the topological properties of the original network.
机译:当前的现实世界网络的主要特征是其庞大的规模和结构,显示出其环境中节点的重要性程度各不相同。评估节点的重要性的主题提供了许多通常与未加权网络一起使用的方法。我们提出了一种新颖,简单,直接的方法来评估网络节点,重点是其周围环境中的局部属性。所提出的方法旨在用于加权网络,其中权重可以解释为节点之间的接近度。然后,我们建议的x表示性考虑了节点的程度,其最近邻居和另一个称为x表示性基数的参数。接下来,我们还将介绍使用三种不同的现实世界网络进行的实验。这些实验的目的是表明,x表示性可用于确定性地将网络简化为不同大小的代表样本,同时保持原始网络的拓扑特性。

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