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Evaluation of analyses of univariate discrete twin data.

机译:单变量离散双胞胎数据分析的评估。

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摘要

Akiake's Information Criterion (AIC) is commonly used in univariate twin modeling of a discrete trait to prune a full model into a more parsimonious submodel. It is possible that this practice could introduce bias and inaccuracy, and we could identify no prior systematic study of these issues. Thus, we used simulation to investigate the performance of AIC-guided modeling across a broad range of parameters. Our simulations indicated that the use of the AIC to determine the "best" univariate model for a discrete trait tended to yield the incorrect model rather frequently. Moreover the parameter estimates of the "best" model by AIC were biased sharply upward as were the associated 95% confidence intervals. These results suggest that the use of AIC to guide twin modeling for univariate discrete traits should either be abandoned or used with great caution.
机译:Akiake的信息标准(AIC)通常用于离散性状的单变量孪生建模中,以将完整模型修剪为更简约的子模型。这种做法可能会引入偏见和不准确性,而且我们无法确定对这些问题的先前的系统研究。因此,我们使用仿真来研究AIC指导的建模在各种参数上的性能。我们的模拟表明,使用AIC来确定离散性状的“最佳”单变量模型往往会经常产生错误的模型。此外,AIC的“最佳”模型的参数估计值以及相关的95%置信区间也急剧上升。这些结果表明,应该放弃使用AIC指导单变量离散性状的孪生建模,或者应谨慎使用。

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