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Local Gaussian Autocorrelation and Tests for Serial Independence

机译:局部高斯自相关和序列独立性检验

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摘要

The traditional and most used measure for serial dependence in a time series is the autocorrelation function. This measure gives a complete characterization of dependence for a Gaussian time series, but it often fails for nonlinear time series models as, for instance, the generalized autoregressive conditional heteroskedasticity model (GARCH), where it is zero for all lags. The autocorrelation function is an example of a global measure of dependence. The purpose of this article is to apply to time series a well-defined local measure of serial dependence called the local Gaussian autocorrelation. It generally works well also for nonlinear models, and it can distinguish between positive and negative dependence. We use this measure to construct a test of independence based on the bootstrap technique. This procedure requires the choice of a bandwidth parameter that is calculated using a cross validation algorithm. To ensure the validity of the test, asymptotic properties are derived for the test functional and for the bootstrap procedure, together with a study of its power for different models. We compare the proposed test with one based on the ordinary autocorrelation and with one based on the Brownian distance correlation. The new test performs well. Finally, there are also two empirical examples.
机译:自相关函数是时间序列中有关序列依赖性的传统且使用最多的度量。该度量完全描述了高斯时间序列的相关性,但对于非线性时间序列模型,例如广义自回归条件异方差模型(GARCH),对于所有滞后均为零,它通常会失败。自相关函数是全局依赖性度量的一个示例。本文的目的是将定义良好的串行相关性本地度量应用于时间序列,称为本地高斯自相关。通常,它也适用于非线性模型,并且可以区分正相关性和负相关性。我们使用此度量基于引导技术构建独立性测试。此过程需要选择使用交叉验证算法计算的带宽参数。为了确保测试的有效性,导出了测试功能和自举程序的渐近性质,以及对不同模型的功效的研究。我们将提出的测试与基于普通自相关的测试和基于布朗距离相关的测试进行比较。新测试效果良好。最后,还有两个经验示例。

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