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Near-exact Distributions for the Likelihood Ratio Statistic used to Test the Reality of a Covariance Matrix

机译:用于测试协方差矩阵的现实的临时精确分布

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In a first stage the authors show how the exact distribution of the likelihood ratio statistic used to test the reality of a covariance matrix may be expressed as the distribution of the sum of two independent random variables, one with a Generalized Integer Gamma distribution and the other with the distribution of a sum of independent Logbeta random variables. From this form of the exact distribution the authors develop then a family of near-exact distributions, based on finite mixtures of Generalized Near-Integer Gamma distributions. These near-exact distributions match, by construction, some of the first exact moments and they have very manageable cumulative distribution functions, which allow for an easy computation of sharp near-exact quantiles and p-values.
机译:在第一阶段,作者展示了用于测试协方差矩阵的现实的似然比统计的精确分布可以表示为两个独立随机变量之和的分布,一个具有广义整数伽马分布和另一个随着独立日志的分布的分布。根据这种形式的确切分配,作者的发展当时是一系列近乎精确的分布,基于广义近整数伽马分布的有限混合物。通过施工,这些近乎精确的分布符合第一个确切的时刻和它们具有非常可管理的累积分布函数,这允许容易地计算锐度近精确量级和p值。

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