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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Prediction of random effects in linear and generalized linear models under model misspecification.
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Prediction of random effects in linear and generalized linear models under model misspecification.

机译:在模型错误指定下对线性和广义线性模型中随机效应的预测。

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摘要

Statistical models that include random effects are commonly used to analyze longitudinal and correlated data, often with the assumption that the random effects follow a Gaussian distribution. Via theoretical and numerical calculations and simulation, we investigate the impact of misspecification of this distribution on both how well the predicted values recover the true underlying distribution and the accuracy of prediction of the realized values of the random effects. We show that, although the predicted values can vary with the assumed distribution, the prediction accuracy, as measured by mean square error, is little affected for mild-to-moderate violations of the assumptions. Thus, standard approaches, readily available in statistical software, will often suffice. The results are illustrated using data from the Heart and Estrogen/Progestin Replacement Study using models to predict future blood pressure values.
机译:包括随机效应的统计模型通常用于分析纵向数据和相关数据,通常假设随机效应遵循高斯分布。通过理论和数值计算以及模拟,我们研究了这种分布的错误指定对预测值恢复真实基础分布的效果以及对随机效应实现值的预测准确性的影响。我们表明,尽管预测值可以随假设的分布而变化,但以均方误差衡量的预测准确性几乎不受假设的轻度到中度影响。因此,在统计软件中容易获得的标准方法通常就足够了。使用“心脏和雌激素/孕激素替代研究”中的数据预测未来血压值来说明结果。

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