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Mining the Temporal Dimension of the Information Propagation

机译:挖掘信息传播的时间维度

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In the last decade, Social Network Analysis has been a field in which the effort devoted from several researchers in the Data Mining area has increased very fast. Among the possible related topics, the study of the information propagation in a network attracted the interest of many researchers, also from the industrial world. However, only a few answers to the questions "How does the information propagates over a network, why and how fast?" have been discovered so far. On the other hand, these answers are of large interest, since they help in the tasks of finding experts in a network, assessing viral marketing strategies, identifying fast or slow paths of the information inside a collaborative network. In this paper we study the problem of finding frequent patterns in a network with the help of two different techniques: TAS (Temporally Annotated Sequences) mining, aimed at extracting sequential patterns where each transition between two events is annotated with a typical transition time that emerges from input data, and Graph Mining, which is helpful for locally analyzing the nodes of the networks with their properties. Finally we show preliminary results done in the direction of mining the information propagation over a network, performed on two well known email datasets, that show the power of the combination of these two approaches.
机译:在过去的十年中,社会网络分析一直是一个领域,其中来自数据挖掘区域的几个研究人员的努力非常快。在可能的相关主题中,网络中信息传播的研究吸引了许多研究人员的兴趣,也来自工业世界。但是,只有几个问题的答案“信息如何通过网络传播,为什么和速度?”到目前为止已被发现。另一方面,这些答案具有很大的兴趣,因为它们有助于在网络中找到专家的任务,评估病毒营销策略,识别协作网络内信息的快速或慢速路径。在本文中,我们在两种不同技术的帮助下研究了在网络中找到频繁模式的问题:TAS(暂时注释的序列)挖掘,旨在提取连续模式,其中两个事件之间的每个转变都以出现的典型转变时间注释从输入数据和图形挖掘,这有助于在本地分析网络的节点及其属性。最后,我们显示了在挖掘网络上的信息传播方向上完成的初步结果,在两个众所周知的电子邮件数据集上执行,显示这两种方法的组合的功率。

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