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Goodness of fit statistics for mixed effect logistic regression models.

机译:混合效应逻辑回归模型的拟合统计量。

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摘要

Mixed effects logistic regression models have become widely used statistical models to model clustered binary responses. However, assessing the goodness of fit (GOF) in these models, when the cluster sizes and the number of clusters are small, is not clear. In this research, three GOF statistics are proposed, and their performance in terms of Type I error rate and power is examined via simulation study. The proposed GOF statistics are the logit residual, log-transformed residual and the absolute residual GOF statistics. The simulation study was applied on different cases of number of clusters, cluster sizes and types of predictors. The simulation results showed the performance of the logit residual and the log-transformed residual GOF statistics to be poor. The absolute residual GOF statistic performed well over most cases of the simulation. It gave proper Type I error rates and high power for most cases and it is recommended to use for mixed effects logistic regression models as long as the number of clusters is at least 10 and the cluster sizes are 10 or more. However, the absolute residual GOF statistic can be affected by extremely small or large estimated probabilities and further research is recommended to avoid or reduce this restriction.
机译:混合效应逻辑回归模型已成为广泛使用的统计模型来建模聚类的二进制响应。但是,当簇大小和簇数较小时,评估这些模型的拟合优度(GOF)尚不清楚。在这项研究中,提出了三个GOF统计数据,并通过仿真研究检查了它们在I型错误率和功率方面的性能。提出的GOF统计信息包括对数残差,对数转换后的残差和绝对残差GOF统计信息。将模拟研究应用于不同数量的簇,簇大小和预测变量类型的案例。仿真结果表明,logit残差和对数转换后的残差GOF统计数据的性能较差。在大多数模拟情况下,绝对残留GOF统计量表现良好。在大多数情况下,它可以提供适当的I型错误率和较高的功效,并且建议将其用于混合效应逻辑回归模型,只要聚类的数量至少为10,并且聚类的大小为10或更大。但是,绝对剩余的GOF统计量可能会受极小或很大的估计概率的影响,建议进一步研究以避免或减少此限制。

著录项

  • 作者

    Saaid, Jalal Abdalla.;

  • 作者单位

    University of Northern Colorado.;

  • 授予单位 University of Northern Colorado.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 105 p.
  • 总页数 105
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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