利用分布式缓存存储器发现社会网络中的社会结构

Saeideh Fattahi, R. Yazdani, S. M. Vahidipour
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引用次数: 1

摘要

社交网络中的社区结构检测已经成为一个巨大的挑战。文献中提出了各种方法来解决这一挑战。最近,人们提出了几种基于映射约简模型的方法来解决这一挑战,该模型将数据和算法划分到不同的过程节点,从而降低了大型社交网络中社区检测的时间和内存复杂性。本文首先提出了一种映射约简模型来检测群落结构。然后根据分布式缓存机制对所提出的框架进行重写;分布式缓存存储器可以存储与不同键相关联的不同值,如果有必要,可以将它们放在不同的计算节点上。最后,提出的重写框架已经使用SPARK工具实现,其实现结果已经在几个主要的社交网络上报告。实验表明,通过改变各参数的取值,所提出的框架是有效的。
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Discovery of Society Structure in A Social Network Using Distributed Cache Memory
Community structure detection in social networks has become a big challenge. Various methods in the literature have been presented to solve this challenge. Recently, several methods have also been proposed to solve this challenge based on a mapping-reduction model, in which data and algorithms are divided between different process nodes so that the complexity of time and memory of community detection in large social networks is reduced. In this paper, a mapping-reduction model is first proposed to detect the structure of communities. Then the proposed framework is rewritten according to a new mechanism called distributed cache memory; distributed cache memory can store different values associated with different keys and, if necessary, put them at different computational nodes. Finally, the proposed rewritten framework has been implemented using SPARK tools and its implementation results have been reported on several major social networks. The performed experiments show the effectiveness of the proposed framework by varying the values of various parameters.
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