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Multi-channel detection for abrupt change based on the Ternary Search Tree and Kolmogorov statistic method

机译:基于三元搜索树和Kolmogorov统计方法的突变突变多通道检测

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To fast detect abrupt change from large-scale time series, we propose an improved method based on the Ternary Search Tree and modified Kolmogorov statistic method (TSTKS, for short). First, two ternary search trees are built by adding a virtual middle branch into existing binary trees; and then the multi-channel detection is implemented from the root to leaf nodes in terms of two search criteria. Simulations show that TSTKS has an encouraging improvement on our previous HWKS method, because of better sensitivity and efficiency than HWKS, especially higher hit rate and accuracy near the middle boundary. Meanwhile, the results of abrupt change analyses on the real Electromyography (EMG) signals in the CAP sleep datasets suggest that the proposed TSTKS is very helpful for distinguishing the different states of sleep disorders, and it is a quite encouraging method for useful information detection from all kinds of large-scale time series.
机译:为了从大规模时间序列中快速检测突变,我们提出了一种基于三元搜索树和改进的Kolmogorov统计方法(简称TSTKS)的改进方法。首先,通过将虚拟中间分支添加到现有的二叉树中来构建两个三叉树。然后根据两个搜索条件从根节点到叶节点进行多通道检测。仿真结果表明,TSTKS在灵敏度和效率方面均优于HWKS,特别是在中边界附近具有更高的命中率和准确性,因此对我们以前的HWKS方法进行了令人鼓舞的改进。同时,对CAP睡眠数据集中的真实肌电图(EMG)信号进行突然变化分析的结果表明,所提出的TSTKS对于区分睡眠障碍的不同状态非常有帮助,这对于从中获取有用信息进行检测是一种非常令人鼓舞的方法。各种大型时间序列。

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