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A single-directional influence topic model using call and proximity logs simultaneously

机译:单向影响主题模型同时使用呼叫和接近日志

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摘要

Understanding social interactions is one of the key factors in the development of context-aware ubiquitous applications. Identifying interaction patterns sensed by a mobile device is one possible way for understanding social interactions. Most previous studies on this problem have employed call and proximity logs to represent social interactions. Because these interactions can be characterized by topics, the studies have applied topic models based on latent Dirichlet allocation (LDA) to identifying interaction patterns from social interactions. However, these previous studies regarded calls and proximities as independent interaction types. As a result, they lost the information obtainable when calls and proximities were analyzed simultaneously. This paper proposes a topic-based method that simultaneously considers calls and proximities, allowing interaction patterns to be identified 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. From the observation that the number of proximities in a mobile log usually overwhelms that of calls and the proximities are observed regularly, the proposed method models a single-directional influence from proximities to calls, where both call and proximity are modeled by LDA. The experiments with three different data sets from the Massachusetts Institute of Technology's Reality Mining project show that the proposed method outperforms the method that considers calls and proximities independently; this proves the plausibility of the proposed method.
机译:了解社交互动是发展中情境感染无处不在的应用程序的关键因素之一。识别移动设备所感测的交互模式是理解社交交互的一种可能方法。对此问题的最先前的研究已经采用了呼叫和接近日志来代表社交交互。因为这些交互可以通过主题来表征,所以研究基于潜在的Dirichlet分配(LDA)应用了主题模型,以识别来自社交交互的交互模式。但是,这些以前的研究将呼叫和邻近视为独立的交互类型。结果,当同时分析呼叫和近距离时,它们丢失了可获得的信息。本文提出了一种基于主题的方法,其同时考虑呼叫和近距离,允许从移动日志中识别交互模式。为此目的,所提出的方法将呼叫和邻近视为均匀的信息类型,该类型从相同分布表示的相同时间空间绘制,而是具有不同的参数。从观察到移动日志中的近距离数通常压倒地位,定期观察到呼叫和近距离,所提出的方法模拟了从近距离呼叫的单向影响,其中呼叫和接近都是由LDA建模的。来自马萨诸塞州理工学院的三种不同数据集的实验现实挖掘项目表明,所提出的方法优于独立考虑呼叫和近距离的方法;这证明了所提出的方法的合理性。

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