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Finding social interaction patterns using call and proximity logs simultaneously

机译:同时使用通话记录和就近记录查找社交互动模式

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This paper proposes a topic-based method to reflect calls and proximities simultaneously into finding interaction patterns from a mobile log. For this purpose, the proposed method regards calls and proximities as a homogeneous information type that are drawn from the same temporal space expressed by the same distribution, but with different parameters. The number of proximities in a mobile log usually overwhelms that of calls and the proximities are observed regularly. Therefore, the proposed method models a single directional influence from proximities to calls, where both call and proximity are modeled by the Latent Dirichlet Allocation (LDA). According to the experiments on the data set from MIT's Reality Mining project, the proposed method outperforms the method that treats calls and proximities independently, which proves the plausibility of the proposed method.
机译:本文提出了一种基于主题的方法,可以同时反映呼叫和邻近性,从而从移动日志中查找交互模式。为此,所提出的方法将呼叫和邻近视为一种同质信息类型,该信息类型是从由相同分布表示但具有不同参数的相同时间空间得出的。移动日志中的接近数量通常会超过呼叫数量,并且会定期观察到接近程度。因此,所提出的方法模拟了从邻近到呼叫的单一方向性影响,其中呼叫和接近都由潜在狄利克雷分配(LDA)建模。根据麻省理工学院的Reality Mining项目数据集的实验,提出的方法优于独立处理呼叫和邻近性的方法,证明了该方法的合理性。

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