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Hub search method based on sampling

机译:基于采样的集线器搜索方法

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摘要

Hubs play important roles in scale-free networks. Existing hub search algorithms mostly assume the availability of the global network structure and use a variety of centrality metrics to search the hubs in the network. However, when it is very difficult to obtain the network topology in large-scale networks, how we can search the hubs? In this paper, a hub search method based on sampling with biased algorithms is proposed and further four algorithms are compared, including improved MHRW (Metropolis-Hasting Random Walk), MDF (Maximum-Degree First), BFS (Breadth-First Search) and RW (Random Walk). The experiments on several datasets show that both MDF and improved MHRW algorithm can reach a higher HDR (Hub Detection Rate) than BFS and RW, and when the sampling rate goes above 10%, MDF and improved MHRW can find an average of more than 70% of hubs in scale-free network.
机译:集线器在无规模网络中扮演重要角色。现有的集线器搜索算法大多假设全球网络结构的可用性,并使用各种集中度指标来搜索网络中的集线器。但是,当在大型网络中很难获得网络拓扑时,如何搜索集线器?本文提出了一种基于偏倚算法采样的集线器搜索方法,并对四种算法进行了比较,包括改进的MHRW(Metropolis-Hasting随机游走),MDF(最大程度优先),BFS(广度优先搜索)和RW(随机游走)。在多个数据集上的实验表明,MDF和改进的MHRW算法都可以达到比BFS和RW更高的HDR(集线检测率),并且当采样率超过10%时,MDF和改进的MHRW可以发现平均值超过70无规模网络中集线器的百分比。

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