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A new algorithm for estimating the parameters and their asymptotic covariance in correlation and association models

机译:相关和关联模型中参数及其渐近协方差估计的新算法

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摘要

An algorithm providing maximum likelihood estimates and their asymptotic covariance matrix for the parameters in correlation models and association models is proposed. It is based on a Fisher's scoring type algorithm using the asymptotic covariance matrix of maximum likelihood estimates whose expression is clarified. The convergence of the proposed algorithm is generally quickly obtained, even for large contingency tables, as illustrated through examples.
机译:提出了一种为相关模型和关联模型中的参数提供最大似然估计及其渐近协方差矩阵的算法。它基于Fisher评分类型算法,该算法使用最大似然估计的渐近协方差矩阵,其表达明确了。如示例所示,即使对于较大的列联表,通常也可以快速获得所提出算法的收敛性。

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