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Influence of the Dynamic Social Network Timeframe Type and Size on the Group Evolution Discovery

机译:动态社交网络时间框架类型和大小对群体进化发现的影响

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New technologies allow to store vast amount of data about users interaction. From those data the social network can be created. Additionally, because usually also time and dates of this activities are stored, the dynamic of such network can be analyzed by splitting it into many timeframes representing the state of the network during specific period of time. One of the most interesting issue is group evolution over time. To track group evolution the GED method can be used. However, choice of the timeframe type and length might have great influence on the method results. Therefore, in this paper, the influence of timeframe type as well as timeframe length on the GED method results is extensively analyzed.
机译:新技术允许存储有关用户交互的大量数据。从这些数据可以创建社交网络。另外,由于通常还会存储此活动的时间和日期,因此可以通过将此类网络分为代表特定时间段内网络状态的多个时间范围来分析其动态。最有趣的问题之一是随着时间的流逝的群体演化。为了跟踪组进化,可以使用GED方法。但是,时间范围类型和长度的选择可能会对方法结果产生很大影响。因此,本文广泛分析了时间框架类型和时间框架长度对GED方法结果的影响。

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