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Detecting Local Communities within a Large Scale Social Network Using Mapreduce

机译:使用Mapreduce在大型社交网络中检测本地社区

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Social network partitioning has become a very important function. One objective for partitioning is to identify interested communities to target for marketing and advertising activities. The bottleneck to detection of these communities is the large scalability of the social network. Previous methods did not effectively address the problem because they considered the overall network. Social networks have strong locality, so designing a local algorithm to find an interested community to address this objective is necessary. In this paper, we develop a local partition algorithm. named. Personalized Page Rank Partitioning, to identify the community. We compute the conductance of the social network with a Personalized Page Rank and Markov chain stationary distribution of the social network, and then sweep the conductance to find the smallest cut. I he efficiency of the cut can reach О(alog|S|). In order to detect a larger scale social network, we design and implement the algorithm on a MapReduce-programming framework. Finally, we execute our experiment on several actual social network data sets and compare our method to others. The experimental results show that our algorithm is feasible and very effective.
机译:社交网络分区已成为非常重要的功能。划分的目标之一是确定感兴趣的社区,以营销和广告活动为目标。检测这些社区的瓶颈是社交网络的巨大可扩展性。先前的方法无法有效解决该问题,因为它们考虑了整个网络。社交网络具有很强的本地性,因此有必要设计一种本地算法以找到感兴趣的社区来解决此目标。在本文中,我们开发了一种局部分区算法。命名。个性化页面排名分区,以识别社区。我们使用个性化页面排名和社交网络的马尔可夫链平稳分布来计算社交网络的电导,然后扫描电导以找到最小的削减。切割效率可以达到О(alog | S |)。为了检测更大范围的社交网络,我们在MapReduce编程框架上设计并实现了该算法。最后,我们在几个实际的社交网络数据集上执行我们的实验,并将我们的方法与其他方法进行比较。实验结果表明,该算法是可行且有效的。

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