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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Semiparametric Bayesian multiple imputation for regression models with missing mixed continuous-discrete covariates
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Semiparametric Bayesian multiple imputation for regression models with missing mixed continuous-discrete covariates

机译:Semiparametric Bayesian对回归模型的多重估算与缺失混合连续离散协变量

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Issues regarding missing data are critical in observational and experimental research. Recently, for datasets with mixed continuous-discrete variables, multiple imputation by chained equation (MICE) has been widely used, although MICE may yield severely biased estimates. We propose a new semiparametric Bayes multiple imputation approach that can deal with continuous and discrete variables. This enables us to overcome the shortcomings of MICE; they must satisfy strong conditions (known as compatibility) to guarantee obtained estimators are consistent. Our simulation studies show the coverage probability of 95% interval calculated using MICE can be less than 1%, while the MSE of the proposed can be less than one-fiftieth. We applied our method to the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset, and the results are consistent with those of the previous works that used panel data other than ADNI database, whereas the existing methods, such as MICE, resulted in inconsistent results.
机译:关于缺失数据的问题对于观察和实验研究至关重要。最近,对于具有混合连续离散变量的数据集,已经广泛使用了通过链式方程(小鼠)的多重归发,但小鼠可能会​​产生严重偏见的估计。我们提出了一种新的Semiparametric Bayes多重估算方法,可以处理连续和离散的变量。这使我们能够克服老鼠的缺点;他们必须满足强大的条件(称为兼容性),以保证获得的估计是一致的。我们的仿真研究表明,使用小鼠计算的95%间隔的覆盖率可能小于1%,而提出的MSE可以小于一九十五。我们将我们的方法应用于Alzheimer的疾病的神经影像概念(ADNI)数据集,结果与上一个工作的结果一致,这些作品的使用除ADNI数据库之外的面板数据,而现有方法(如小鼠)导致结果不一致。

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