首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Markov-network based latent link analysis for community detection in social behavioral interactions
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Markov-network based latent link analysis for community detection in social behavioral interactions

机译:基于Markov网络社会行为互动中社区检测的基于网络潜在链路分析

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摘要

How to represent and discover social links from the perspective of implied behaviors, in particular latent links, is critical for social media analysis. In this paper, we discuss latent link analysis for community detection in social behavioral interactions. We adopt Markov network (MN) as the framework and propose the algorithm to discover latent links among social objects implied in their behavioral interactions without regard for the topological structures of social networks. First, starting from the frequent itemsets of the behavioral interactions, we propose the algorithm to construct the item-association Markov network (IAMN), which establishes the inherent relationship between frequent itemset and MN. Then, we propose the algorithm to detect communities by incorporating the concepts of k-clique and k-nearest neighbor set, as the typical application of the constructed IAMN Experimental results show the effectiveness and efficiency of the method proposed in this paper.
机译:如何从隐含行为的角度表示和发现社交链接,特别是潜在的链接,对社交媒体分析至关重要。 在本文中,我们讨论了社会行为互动中社区检测的潜在链接分析。 我们采用马尔可夫网络(MN)作为框架,并提出该算法在不考虑社交网络的拓扑结构中暗示其行为交互中暗示的社会对象之间的潜在联系。 首先,从行为交互的频繁项目开始,我们提出了算法构建项目关联Markov网络(IAMN),该网络(IAMN)建立频繁项目集和MN之间的固有关系。 然后,我们通过结合K-Clique和K最近邻集的概念来提出该算法来检测社区,因为构造的IAMN实验结果的典型应用表明了本文提出的方法的有效性和效率。

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