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Cholesky Decompositions and Estimation of A Covariance Matrix: Orthogonality of Variance–Correlation Parameters

机译:Cholesky分解和协方差矩阵的估计:方差相关参数的正交性

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摘要

Chen & Dunson ([3]) have proposed a modified Cholesky decomposition of the form σ = D L L′D for a covariance matrix where D is a diagonal matrix with entries proportional to the square roots of the diagonal entries of Σ and L is a unit lower-triangular matrix solely determining its correlation matrix. This total separation of variance and correlation is definitely a major advantage over the more traditional modified Cholesky decomposition of the form LD2L′, (Pourahmadi, [13]). We show that, though the variance and correlation parameters of the former decomposition are separate, they are not asymptotically orthogonal and that the estimation of the new parameters could be more demanding computationally. We also provide statistical interpretation for the entries of L and D as certain moving average parameters and innovation variances and indicate how the existing likelihood procedures can be employed to estimate the new parameters.
机译:Chen&Dunson([3])提出了针对协方差矩阵的形式为σ= DLL'D的改进的Cholesky分解,其中D为对角矩阵,其项与Σ对角项的平方根成比例,L为单位下三角矩阵仅确定其相关矩阵。这种方差和相关性的完全分离绝对是相对更传统的形式为LD 2 L'的改进的Cholesky分解的主要优势(Pourahmadi,[13])。我们表明,尽管前一个分解的方差和相关参数是分开的,但它们不是渐近正交的,并且新参数的估计可能在计算上更加苛刻。我们还为L和D的条目作为某些移动平均参数和创新方差提供统计解释,并指出如何利用现有的似然性程序来估计新参数。

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  • 来源
    《Biometrika》 |2007年第4期|1006-1013|共8页
  • 作者

    Mohsen Pourahmadi;

  • 作者单位

    Division of Statistics Northern Illinois University DeKalb Illinois 60115-2854 U.S.A. pourahm{at}math.niu.edu;

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  • 正文语种 eng
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