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WILD BINARY SEGMENTATION FOR MULTIPLE CHANGE-POINT DETECTION

机译:野生二元分割,可进行多变化点检测

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摘要

We propose a new technique, called wild binary segmentation (WBS), for consistent estimation of the number and locations of multiple change-points in data. We assume that the number of change-points can increase to infinity with the sample size. Due to a certain random localisation mechanism, WBS works even for very short spacings between the change-points and/or very small jump magnitudes, unlike standard binary segmentation. On the other hand, despite its use of localisation, WBS does not require the choice of a window or span parameter, and does not lead to a significant increase in computational complexity. WBS is also easy to code. We propose two stopping criteria for WBS: one based on thresholding and the other based on what we term the 'strengthened Schwarz information criterion'. We provide default recommended values of the parameters of the procedure and show that it offers very good practical performance in comparison with the state of the art. The 'WBS methodology is implemented in the R package wbs, available on CRAN.
机译:我们提出了一种新的技术,称为野生二进制分段(WBS),用于一致估计数据中多个变化点的数量和位置。我们假设变化点的数量可以随样本大小增加到无穷大。由于某种随机定位机制,与标准二进制分段不同,WBS甚至可以在变化点之间的间隔非常短和/或跳跃幅度很小的情况下工作。另一方面,尽管使用了本地化,但WBS不需要选择window或span参数,也不会导致计算复杂性的显着增加。 WBS也很容易编码。我们为WBS提出了两种停止标准:一种基于阈值,另一种基于我们所谓的“强化Schwarz信息标准”。我们提供了该过程参数的默认推荐值,并表明与现有技术相比,它提供了很好的实用性能。 WBS方法在C包中可用的R包wbs中实现。

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