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The uncertainty of storm season changes:quantifying the uncertainty of autocovariance changepoints

机译:风暴季节变化的不确定性:量化自协方差变化点的不确定性

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摘要

In oceanography, there is interest in determining storm season changes for logistical reasons such as equipment maintenance scheduling. In particular, there is interest in capturing the uncertainty associated with these changes in terms of the number and location of them. Such changes are associated with autocovariance changes. This paper proposes a framework to quantify the uncertainty of autocovariance changepoints in time series motivated by this oceanographic application. More specifically, the framework considers time series under the Locally Stationary Wavelet framework, deriving a joint density for scale processes in the raw wavelet periodogram. By embedding this density within a Hidden Markov Model framework, we consider changepoint characteristics under this multiscale setting. Such a methodology allows us to model changepoints and their uncertainty for a wide range of models, including piecewise second-order stationary processes, for example piecewise Moving Average processes.
机译:在海洋学中,出于后勤原因(例如设备维护计划)来确定风暴季节的变化是有兴趣的。特别是,有兴趣捕捉与这些变化有关的不确定性,其数量和位置。这种变化与自协方差变化相关。本文提出了一个框架来量化由该海洋学应用引起的时间序列中自协方差变化点的不确定性。更具体地说,该框架考虑了“局部平稳小波”框架下的时间序列,从而得出原始小波周期图中比例过程的联合密度。通过将此密度嵌入“隐马尔可夫模型”框架中,我们考虑了这种多尺度设置下的变化点特征。这种方法学使我们能够为各种模型(包括分段二阶平稳过程,例如分段移动平均过程)建模变化点及其不确定性。

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