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Inference properties of QIC in the selection of covariates for generalized estimating equations

机译:广义估计方程协变量选择中QIC的推论性质

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The Quasi-likelihood information criterion (QIC)which results from utilizing Kullbacks I-divergence as the targeted discrepancy is widely used in the GEE framework to select the best correlation structure and the best subset of predictors. We investigated the inference properties of QIC in variable selection with focus on its consistency, sensitivity and sparsity. We established through numerical simulations that QIC had high sensitivity but low sparsity. Its type I error rate was approximately 30% which implied fairly high chances of selecting over-fit models. On the other side,it had low under-fitting probabilities. The statistical power of QIC was established to be high hence rejecting any given false null hypothesis is essentially guaranteed for sufficiently large N even if the effect size is small.
机译:利用Kullbacks I散度作为目标差异而产生的拟似然信息标准(QIC)被广泛用于GEE框架中,以选择最佳的相关结构和最佳的预测变量子集。我们研究了QIC在变量选择中的推论性质,重点是其一致性,敏感性和稀疏性。通过数值模拟,我们确定QIC具有高灵敏度但稀疏性低。 I型错误率大约为30%,这意味着选择过度拟合模型的机会很高。另一方面,它的低拟合概率较低。 QIC的统计能力被确定为很高,因此即使影响量很小,对于足够大的N,基本上也可以拒绝任何给定的虚假假设。

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