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Efficient Estimation of Dynamic Density Functions with an Application to Outlier Detection

机译:动态密度函数的有效估计及其在离群值检测中的应用

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In this paper, we propose a new method to estimate the dynamic density over data streams, named KDE-Track as it is based on a conventional and widely used Kernel Density Estimation (KDE) method. KDE-Track can efficiently estimate the density with linear complexity by using interpolation on a kernel model, which is incrementally updated upon the arrival of streaming data. Both theoretical analysis and experimental validation show that KDE-Track outperforms traditional KDE and a baseline method Cluster-Kernels on estimation accuracy of the complex density structures in data streams, computing time and memory usage. KDE-Track is also demonstrated on timely catching the dynamic density of synthetic and real-world data. In addition, KDE-Track is used to accurately detect outliers in sensor data and compared with two existing methods developed for detecting outliers and cleaning sensor data.
机译:在本文中,我们提出了一种新的估计数据流动态密度的方法,称为KDE-Track,因为它是基于常规且广泛使用的内核密度估计(KDE)方法的。通过在内核模型上使用插值,KDE-Track可以有效地估计线性复杂度的密度,并在流数据到达时对其进行增量更新。理论分析和实验验证均表明,在数据流中复杂密度结构的估计准确性,计算时间和内存使用率方面,KDE-Track优于传统的KDE和基线方法Cluster-Kernels。还演示了KDE-Track可以及时捕获合成数据和实际数据的动态密度。此外,KDE-Track用于精确检测传感器数据中的异常值,并与开发的用于检测异常值和清理传感器数据的两种现有方法进行了比较。

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