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首页> 外文期刊>Journal of Statistical Planning and Inference >Pearson residual and efficiency of parameter estimates in generalized linear model
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Pearson residual and efficiency of parameter estimates in generalized linear model

机译:广义线性模型中Pearson残差和参数估计效率

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We demonstrate that the efficiency of regression parameter estimates in the generalized linear model can be expressed as a function of Pearson residuals and likelihood based information. The relationship provides an easy way to derive sandwich variance estimators on β for a specific distribution within the exponential family. In generalized linear models, the correlation between Pearson residual and Fisher information can be used to predict the error ratio of quasi-likelihood variance versus sandwich variance when the sample size is sufficiently large. The derived theory can help to determine which conventional approach to use in the generalized linear model for certain types of data analysis, such as analyzing heteroscedastic data in linear regression; or to analyze over-dispersed data for single parameter families of distributions. The results from re-analysis of a clinical trial data set are used to illustrate issues explored in the paper.
机译:我们证明了广义线性模型中回归参数估计的效率可以表示为Pearson残差和基于似然的信息的函数。这种关系提供了一种简便的方法,可以针对指数族内的特定分布在β上得出三明治方差估计量。在广义线性模型中,当样本量足够大时,Pearson残差和Fisher信息之间的相关性可用于预测准似然方差与三明治方差的误差比。派生的理论可以帮助确定针对某些类型的数据分析在广义线性模型中使用哪种常规方法,例如在线性回归中分析异方差数据;或分析单参数分布族的过度分散数据。重新分析临床试验数据集的结果用于说明本文探讨的问题。

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