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Relative efficiency of joint-model and full-conditional-specification multiple imputation when conditional models are compatible: The general location model

机译:当条件模型兼容时,联合模型和全调规范的相对效率多重归纳:一般位置模型

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Estimating the parameters of a regression model of interest is complicated by missing data on the variables in that model. Multiple imputation is commonly used to handle these missing data. Joint model multiple imputation and full-conditional specification multiple imputation are known to yield imputed data with the same asymptotic distribution when the conditional models of full-conditional specification are compatible with that joint model. We show that this asymptotic equivalence of imputation distributions does not imply that joint model multiple imputation and full-conditional specification multiple imputation will also yield asymptotically equally efficient inference about the parameters of the model of interest, nor that they will be equally robust to misspecification of the joint model. When the conditional models used by full-conditional specification multiple imputation are linear, logistic and multinomial regressions, these are compatible with a restricted general location joint model. We show that multiple imputation using the restricted general location joint model can be substantially more asymptotically efficient than full-conditional specification multiple imputation, but this typically requires very strong associations between variables. When associations are weaker, the efficiency gain is small. Moreover, full-conditional specification multiple imputation is shown to be potentially much more robust than joint model multiple imputation using the restricted general location model to mispecification of that model when there is substantial missingness in the outcome variable.
机译:估计感兴趣的回归模型的参数在该模型中的变量上缺少数据是复杂的。多种估算通常用于处理这些缺失的数据。联合模型多重归纳和全调规范多重估算是众所周知的,当完整条件规范的条件模型与该联合模型兼容时,均可屈服于具有相同渐近分布的避障数据。我们表明,这种估算分布的渐近等价并不意味着联合模型多重估算和全调规范多重估算还将产生关于感兴趣模型的参数的渐近同样有效的推断,也不会使它们相当强大地击败联合模型。当通过整个条件规范使用的条件模型多个估算是线性的,逻辑和多项式回归时,它们与受限的通用位置联合模型兼容。我们表明,使用受限制的通用位置联合模型的多个估算可以比全调规范多重估算大致渐近,但这通常需要变量之间的非常强烈的关联。当关联较弱时,效率增益很小。此外,全部条件规范多种归纳被示出比使用限制的通用位置模型与联合模型多重估算的潜在更强的稳健更加强大,因为当结果变量具有大量缺失时,该模型的错误化为。

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