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On variable ordination of modified Cholesky decomposition for estimating time-varying covariance matrices

机译:估计时变协方差矩阵改进尖孔分解的可变秩序

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Estimating time-varying covariance matrices of the vector of interest is challenging both computationally and statistically due to a large number of constrained parameters. In this work, we consider an order-averaged Cholesky-log-GARCH (OA-CLGARCH) model for estimating time-varying covariance matrices through the orthogonal transformations of the vector based on the modified Cholesky decomposition. The proposed method is to transform the vector at each time as a linear transformation of uncorrelated latent variables and then to use simple univariate GARCH models to model them separately. But the modified Cholesky decomposition relies on a given order of variables, which is often not available, to sequentially orthogonalize the variables. The proposed method develops an order-averaged strategy for the Cholesky-GARCH method to alleviate the effect of order of variables. The merits of the proposed method are illustrated through simulations and real-data studies.
机译:由于大量约束参数,估计感兴趣的向量的时变协方差矩阵在计算地和统计上挑战。在这项工作中,我们考虑通过基于修改的Cholesky分解的向量估计时变协方差矩阵来估计时变协方差矩阵的订购平均挑剔 - log-garch(oa-clgarch)模型。所提出的方法是将载体同时转换为不相关的潜变变量的线性变换,然后使用简单的单变量GADCH模型来单独模拟它们。但是修改的Cholesky分解依赖于给定的变量顺序,该变量通常不可用,以顺序地正交地正交。该方法为Cholesky-GARCH方法开发了订单平均策略,以减轻变量顺序的效果。通过仿真和实数据研究说明了所提出的方法的优点。

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