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Stochastic Network Motif Detection in Social Media

机译:社交媒体中的随机网络主题检测

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Network motifs refer to recurrent patterns of interconnections which are found to be over-represented in real networks when compared with random ones. Such basic building blocks can well characterize the structure of complex networks. Extending the building blocks to stochastic ones allows for more robust motif detection networks which are stochastic in nature. Network motif analysis, commonly adopted in bioinformatics, has recently been applied to also online social media. In this paper, we propose to detect stochastic network motifs in social media with the conjecture that social interactions are of stochastic nature. In particular, we apply a stochastic motif detection algorithm based on the finite mixture model to both synthesized datasets and real on-line datasets to evaluate the effectiveness. Also, we discuss how the obtained stochastic motifs could be interpreted and compared qualitatively with some of the results obtained from others which are recently reported in the literature.
机译:网络主题是指互连的循环模式,与随机网络相比,互连网络在实际网络中被过度代表。这样的基本构建块可以很好地表征复杂网络的结构。将构建基块扩展到随机的基块可以实现更强大的本质上随机的基序检测网络。通常在生物信息学中采用的网络主题分析最近也已应用于在线社交媒体。在本文中,我们建议以社交互动具有随机性的猜测来检测社交媒体中的随机网络主题。特别是,我们将基于有限混合模型的随机主题检测算法应用于合成数据集和实际在线数据集,以评估有效性。另外,我们讨论了如何解释获得的随机基序,并将其与从文献中最近报道的其他结果中得到的定性比较。

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