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Model-Averaged Confidence Intervals

机译:模型平均置信区间

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We develop an approach to evaluating frequentist model averaging procedures by considering them in a simple situation in which there are two-nested linear regression models over which we average. We introduce a general class of model averaged confidence intervals, obtain exact expressions for the coverage and the scaled expected length of the intervals, and use these to compute these quantities for the model averaged profile likelihood (MPI) and model-averaged tail area confidence intervals proposed by D. Fletcher and D. Turek. We show that the MPI confidence intervals can perform more poorly than the standard confidence interval used after model selection but ignoring the model selection process. The model-averaged tail area confidence intervals perform better than the MPI and postmodel-selection confidence intervals but, for the examples that we consider, offer little over simply using the standard confidence interval for under the full model, with the same nominal coverage.
机译:我们开发了一种评估常客模型平均程序的方法,方法是在简单的情况下对它们进行平均,将其考虑在内,这是两个嵌套的线性回归模型。我们介绍一类普通的模型平均置信区间,获取区间的精确表达式和比例区间的预期长度,并使用这些表达式为模型平均轮廓似然(MPI)和模型平均尾部区间置信区间计算这些量由D. Fletcher和D. Turek提出。我们显示,MPI置信区间的性能比模型选择后使用的标准置信区间差得多,但忽略了模型选择过程。模型平均的尾部区域置信区间的性能要优于MPI和模型选择后的置信区间,但是,对于我们考虑的示例,仅使用标准置信区间在相同模型下具有完整模型的情况下,仅提供很少的收益。

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