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Recursive Estimation of GARCH Models

机译:GARCH模型的递归估计

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摘要

This article develops three recursive on-line algorithms, based on a two-stage least squares scheme for estimating generalized autoregressive conditionally heteroskedastic (GARCH) models. The first one, denoted by 2S-RLS, is an adaptation of the recursive least squares method for estimating autoregressive conditionally heteroskedastic (ARCH) models. The second and the third ones (denoted, respectively, by 2S-PLR and 2S-RML) are adapted versions of the pseudolinear regression (PLR) and the recursive maximum likelihood (RML) methods to the GARCH case. We show that the proposed algorithms give consistent estimators and that the 2S-RLS and the 2S-RML estimators are asymptotically Gaussian. These methods seem very adequate for modeling the sequential feature of financial time series, which are observed on a high-frequency basis. The performance of these algorithms is shown via a simulation study.
机译:本文基于两阶段最小二乘方案,开发了三种递归在线算法,用于估计广义自回归条件异方差(GARCH)模型。第一个由2S-RLS表示,是递归最小二乘方法的一种改编,用于估计自回归条件异方差(ARCH)模型。第二个和第三个(分别由2S-PLR和2S-RML表示)是伪线性回归(PLR)和递归最大似然(RML)方法对GARCH情况的适应版本。我们证明了所提出的算法给出了一致的估计量,并且2S-RLS和2S-RML估计量是渐近高斯的。这些方法似乎非常适合于建模金融时间序列的顺序特征,而这些特征是在高频基础上观察到的。通过仿真研究显示了这些算法的性能。

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