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Bayesian Binary Segmentation Procedure for a Poisson Process With Multiple Changepoints

机译:贝叶斯二进制分割程序,具有多种转换点的泊松过程

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摘要

We observe n events occurring in (0, T] taken from a Poisson process. The intensity function of the process is assumed to be a step function with multiple changepoints. This article proposes a Bayesian binary segmentation procedure for locating the changepoints and the associated heights of the intensity function. We conduct a sequence of nested hypothesis tests using the Bayes factor or the BIC approximation to the Bayes factor. At each comparison in the binary segmentation steps, we need only to compare a single-changepoint model to a no-changepoint model. Therefore, this method circumvents the computational complexity we would normally face in problems with an unknown (large) number of dimensions. A simulation study and an analysis on a real dataset are given to illustrate our methods.
机译:我们观察到从泊松过程中采取的(0,T]发生的事件。假设该过程的强度函数是具有多个Cranslpoints的阶梯函数。本文提出了一种用于定位变换点和相关高度的贝叶斯二进制分段程序。 强度函数。我们使用贝叶斯因子或BIC近似进行一系列嵌套假设测试。在二进制分段步骤的每个比较中,我们只需要将单个ChangePoint模型进行比较到No-ChangePoint 模型。因此,这种方法避免了计算复杂性,我们通常会面临未知(大)维度的问题。给出了对真实数据集的仿真研究和分析来说明我们的方法。

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