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Some weighted mixed portmanteau tests for diagnostic checking in linear time series models

机译:用于线性时间序列模型的诊断检查的一些加权混合portmanteau检验

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摘要

The popular diagnostic checking methods in linear time series models are portmanteau tests based on either residual autocorrelation functions (acf) or partial autocorrelation functions (pacf). In this paper, we device some new weighted mixed portmanteau tests by appropriately combining individual tests based on both acf and pacf. We derive the asymptotic distribution of such weighted mixed portmanteau statistics and study their size and power. It is found that the weighted mixed tests outperform when higher order ARMA models are fitted and diagnostic checks are performed via testing lack of residual autocorrelations. Simulation results suggest to use the proposed tests as complementary to those classical tests found in literature. An illustrative application is given to demonstrate the usefulness of the mixed test.
机译:线性时间序列模型中流行的诊断检查方法是基于残差自相关函数(acf)或部分自相关函数(pacf)的portmanteau测试。在本文中,我们通过适当地组合基于acf和pacf的单个测试来配置一些新的加权混合portmanteau测试。我们推导了这种加权混合波特曼酒统计数据的渐近分布,并研究了它们的大小和功效。结果发现,当拟合更高阶的ARMA模型并通过测试是否缺乏剩余自相关性进行诊断检查时,加权混合测试的性能要好。仿真结果建议使用建议的测试作为文献中发现的经典测试的补充。给出了一个说明性的应用程序来证明混合测试的有效性。

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