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Offline and online weighted least squares estimation of nonstationary power ARCH processes

机译:非平稳功率ARCH过程的离线和在线加权最小二乘估计

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摘要

This paper proposes two estimation methods based on a weighted least squares criterion for non-(strictly) stationary power ARCH models. The weights are the squared volatilities evaluated at a known value in the parameter space. The first method is adapted for fixed sample size data while the second one allows for online data available in real time. It will be shown that these methods provide consistent and asymptotically Gaussian estimates having asymptotic variance equal to that of the quasi-maximum likelihood estimate (QMLE) regardless of the value of the weighting parameter. Finite-sample performances of the proposed WLS estimates are shown via a simulation study for various sub-classes of power ARCH models.
机译:针对非(严格)固定功率ARCH模型,本文提出了两种基于加权最小二乘准则的估计方法。权重是在参数空间中以已知值评估的平方波动率。第一种方法适用于固定样本大小的数据,而第二种方法则允许实时获取在线数据。将显示出,这些方法提供了一致且渐近的高斯估计,其渐近方差等于准最大似然估计(QMLE)的渐近方差,而与加权参数的值无关。通过对功率ARCH模型的各个子类进行的仿真研究,显示了提出的WLS估计的有限样本性能。

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