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Detection and Exploration of Outlier Regions in Sensor Data Streams

机译:传感器数据流中离群区域的检测和探索

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Sensor networks play an important role in applications concerned with environmental monitoring, disaster management, and policy making. Effective and flexible techniques are needed to explore unusual environmental phenomena in sensor readings that are continuously streamed to applications. In this paper, we propose a framework that allows to detect outlier sensors and to efficiently construct outlier regions from respective outlier sensors. For this, we utilize the concept of degree-based outliers. Compared to the traditional binary outlier models (outlier versus non-outlier), this concept allows for a more fine-grained, context sensitive analysis of anomalous sensor readings and in particular the construction of heterogeneous outlier regions. The latter suitably reflect the heterogeneity among outlier sensors and sensor readings that determine the spatial extent of outlier regions. Such regions furthermore allow for useful data exploration tasks. We demonstrate the effectiveness and utility of our approach using real world and synthetic sensor data streams.
机译:传感器网络在与环境监控,灾难管理和政策制定有关的应用中起着重要作用。需要有效而灵活的技术来探索传感器读数中不寻常的环境现象,并将其连续不断地流向应用程序。在本文中,我们提出了一个框架,该框架允许检测异常值传感器并有效地从各个异常值传感器构建异常值区域。为此,我们利用了基于度的离群值的概念。与传统的二进制离群值模型(离群值与非离群值)相比,此概念允许对异常传感器读数进行更细粒度的上下文敏感分析,尤其是异构离群值区域的构造。后者适当地反映了异常值传感器之间的异质性以及确定异常值区域空间范围的传感器读数。这些区域还允许进行有用的数据探索任务。我们使用现实世界和合成传感器数据流展示了我们的方法的有效性和实用性。

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