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Detecting Temporal Pattern and Cluster Changes in Social Networks: A Study Focusing UK Cattle Movement Database

机译:检测社交网络中的时间格局和集群变化:一项针对英国牛运动数据库的研究

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Temporal Data Mining is directed at the identification of knowledge that has some temporal dimension. This paper reports on work conducted to identify temporal frequent patterns in social network data. The focus for the work is the cattle movement database in operation in Great Britain, which can be interpreted as a social network with additional spatial and temporal information. The paper firstly proposes a trend mining framework for identifying frequent pattern trends. Experiments using this framework demonstrate that in many cases a large number of patterns may be produced, and consequently the analysis of the end result is inhibited. To assist in the analysis of the identified trends this paper secondly proposes a trend clustering approach, founded on the concept of Self Organizing Maps (SOMs), to group similar trends and to compare such groups. A distance function is used to compare and analyze the changes in clusters with respect to time.
机译:时间数据挖掘旨在识别具有某些时间维度的知识。本文报告了为识别社交网络数据中的时间频繁模式而进行的工作。这项工作的重点是在英国运营的牲畜运输数据库,该数据库可以解释为具有附加时空信息的社交网络。本文首先提出了一种趋势挖掘框架,用于识别频繁模式趋势。使用该框架的实验表明,在许多情况下,可能会生成大量模式,因此最终结果的分析受到了抑制。为了帮助分析已确定的趋势,本文第二次提出了一种基于自组织图(SOM)概念的趋势聚类方法,以对相似趋势进行分组并进行比较。距离函数用于比较和分析聚类相对于时间的变化。

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