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Proposal of Online Outlier Detection in Sensor Data Using Kernel Density Estimation

机译:利用核密度估计在线检测传感器数据中的异常值的建议

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Sensors in different locations can generate streaming data, which can be analyzed in real-time to identify events of interest. Continuous outlier detection in data streams has important applications in fraud detection, network security, environmental monitoring and public health. In this paper, we propose a framework that computes in a distributed manner an approximation of multi-dimensional data distributions in order to enable complex applications in resource-constrained sensor networks. Here we are targeting the problem of outlier detection. We demonstrate how our technique can be used to identify either distance based or density based outliers in a single pass over the data. Our approach takes into consideration various characteristics and features of streaming sensor data.
机译:不同位置的传感器可以生成流数据,可以对流数据进行实时分析以识别感兴趣的事件。数据流中的连续异常值检测在欺诈检测,网络安全,环境监视和公共卫生中具有重要的应用。在本文中,我们提出了一种框架,该框架以分布式方式计算多维数据分布的近似值,以便在资源受限的传感器网络中实现复杂的应用程序。在这里,我们针对异常值检测的问题。我们演示了如何在单次通过数据时将我们的技术用于识别基于距离或基于密度的离群值。我们的方法考虑了流式传感器数据的各种特性和特征。

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