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On Non-Gaussian AR(1) Inflation Modeling

机译:非高斯AR(1)通货膨胀模型

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A severe limitation of the original autoregressive process of order one or AR(1) process is the Gaussian nature of the assumed residual error distribution while the observed sample residual errors tend to be much more skewed and have a much higher kurtosis than is allowed by a normal distribution. Four non-Gaussian noise specifications are considered, namely the normal inverse Gaussian, the skew Student t, the normal Laplace and the reshaped Hermite-Gauss distributions. Besides predictive distributional properties of some of these AR(1) processes, an in-depth analysis of the fitting capabilities of these models is undertaken. For the Swiss consumer price index, it is shown that the AR(1) with normal Laplace (NL) noise has the best goodness-of-fit in a dual sense for four types of estimators. On the one hand the moment estimators of the NL residual error distribution yield the smallest Anderson-Darling, Cramér-von Mises and chi-square statistics, and on the other hand the minimum of these three statistics is also reached by the NL distribution.
机译:一阶或AR(1)过程的原始自回归过程的严重局限性是假定残留误差分布的高斯性质,而观察到的样本残留误差往往比a所允许的更偏斜并且具有更高的峰度。正态分布。考虑了四个非高斯噪声规范,即正态反高斯,偏斜学生t,正态拉普拉斯和重塑的厄米-高斯分布。除了某些AR(1)过程的预测分布特性外,还对这些模型的拟合能力进行了深入分析。对于瑞士的消费者价格指数,结果表明,对于四种类型的估计量,具有正常拉普拉斯(NL)噪声的AR(1)在双重意义上具有最佳拟合优度。一方面,NL残差分布的矩估计量产生最小的Anderson-Darling,Cramér-vonMises和卡方统计量,另一方面,NL分布也达到这三个统计量中的最小值。

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