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BeTracker: A System for Finding Behavioral Patterns from Contextual Sensor and Social Data

机译:BeTracker:从上下文传感器和社交数据中查找行为模式的系统

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In this work, we integrate the contextual information provided from sensor data and the social relationships collected from online social networks to construct a system, termed Be Tracker. We aim to find and track the frequent and representative behaviors for any user-input individual or social structural information. We claim combining physical contacts from sensor data and virtual online interactions can reveal real-life human behaviors. In our Be Tracker, we mine the temporal sub graph patterns as the discovered behaviors from sensor-social data transactions. The user-given information, which is the target to observe, can be (a) an individual (to find her daily behaviors), (b) a relational structure (e.g. linear, triangle, or star structure) (to find the frequent and contextual interactions between them), and (c) a relational structure with partially assigned individuals and sequential time periods (to observe their interactions that follow certain temporal order). In the experimental part, we demonstrate promising results of different queries and present the system efficiency of the proposed behavioural pattern mining.
机译:在这项工作中,我们将传感器数据提供的上下文信息与从在线社交网络收集的社交关系进行整合,以构建一个名为Be Tracker的系统。我们旨在找到并跟踪任何用户输入的个人或社会结构信息的常见和代表性行为。我们声称将来自传感器数据的物理接触与虚拟在线互动相结合,可以揭示现实生活中的人类行为。在我们的Be Tracker中,我们将时间子图模式作为传感器-社交数据交易中发现的行为进行挖掘。用户要观察的信息可以是(a)一个人(以查找其日常行为),(b)一种关系结构(例如,线性,三角形或星形结构)(以查找频繁的和它们之间的上下文交互),以及(c)具有部分分配的个体和顺序时间段的关系结构(以观察他们遵循特定时间顺序的交互)。在实验部分,我们演示了不同查询的有希望的结果,并提出了所提出的行为模式挖掘的系统效率。

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