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Testing for the Presence of Correlation Changes in a Multivariate Time Series: A Permutation Based Approach

机译:测试多元时间序列中相关变化的存在:一种基于置换的方法

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摘要

Detecting abrupt correlation changes in multivariate time series is crucial in many application fields such as signal processing, functional neuroimaging, climate studies, and financial analysis. To detect such changes, several promising correlation change tests exist, but they may suffer from severe loss of power when there is actually more than one change point underlying the data. To deal with this drawback, we propose a permutation based significance test for Kernel Change Point (KCP) detection on the running correlations. Given a requested number of change points K, KCP divides the time series into K + 1 phases by minimizing the within-phase variance. The new permutation test looks at how the average within-phase variance decreases when K increases and compares this to the results for permuted data. The results of an extensive simulation study and applications to several real data sets show that, depending on the setting, the new test performs either at par or better than the state-of-the art significance tests for detecting the presence of correlation changes, implying that its use can be generally recommended.
机译:在许多应用领域(例如信号处理,功能神经成像,气候研究和财务分析)中,检测多元时间序列中的突然相关变化至关重要。为了检测这种变化,存在几种有希望的相关性变化测试,但是当数据背后实际存在多个变化点时,它们可能会遭受严重的功耗损失。为了解决这个缺点,我们提出了一种基于排列的显着性检验,用于对运行相关性进行内核更改点(KCP)检测。给定请求数量的变化点K,KCP通过最小化相内方差将时间序列分为K + 1个相位。新的置换测试着眼于当K增大时平均相内方差如何减小,并将其与置换数据的结果进行比较。广泛的仿真研究和对多个真实数据集的应用结果表明,根据设置,新测试在检测相关性变化的存在方面,可以达到同等水平或优于最先进的显着性测试,这表明通常可以推荐使用它。

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