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Distributed Centrality Analysis of Social Network Data Using MapReduce

机译:使用MapReduce的社交网络数据的分布式中心性分析

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Analyzing the structure of a social network helps in gaining insights into interactions and relationships among users while revealing the patterns of their online behavior. Network centrality is a metric of importance of a network node in a network, which allows revealing the structural patterns and morphology of networks. We propose a distributed computing approach for the calculation of network centrality value for each user using the MapReduce approach in the Hadoop platform, which allows faster and more efficient computation as compared to the conventional implementation. A distributed approach is scalable and helps in efficient computations of large-scale datasets, such as social network data. The proposed approach improves the calculation performance of degree centrality by 39.8%, closeness centrality by 40.7% and eigenvalue centrality by 41.1% using a Twitter dataset.
机译:分析社交网络的结构有助于洞悉用户之间的互动和关系,同时揭示其在线行为模式。网络中心性是网络中网络节点重要性的度量,它可以揭示网络的结构模式和形态。我们提出了一种分布式计算方法,用于在Hadoop平台中使用MapReduce方法为每个用户计算网络中心值,与传统实现相比,该方法可以更快,更高效地进行计算。分布式方法是可扩展的,并有助于有效地计算大规模数据集,例如社交网络数据。所提出的方法使用Twitter数据集将度中心度的计算性能提高了39.8%,紧密度中心度的计算性能提高了40.7%,特征值中心度的计算性能提高了41.1%。

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