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Variable Selection in the Presence of Missing Data: Imputation-based Methods

机译:存在缺失数据时的变量选择:基于归因的方法

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摘要

Variable selection plays an essential role in regression analysis as it identifies important variables that associated with outcomes and is known to improve predictive accuracy of resulting models. Variable selection methods have been widely investigated for fully observed data. However, in the presence of missing data, methods for variable selection need to be carefully designed to account for missing data mechanisms and statistical techniques used for handling missing data. Since imputation is arguably the most popular method for handling missing data due to its ease of use, statistical methods for variable selection that are combined with imputation are of particular interest. These methods, valid used under the assumptions of missing at random (MAR) and missing completely at random (MCAR), largely fall into three general strategies. The first strategy applies existing variable selection methods to each imputed dataset and then combine variable selection results across all imputed datasets. The second strategy applies existing variable selection methods to stacked imputed datasets. The third variable selection strategy combines resampling techniques such as bootstrap with imputation. Despite recent advances, this area remains under-developed and offers fertile ground for further research.
机译:变量选择在回归分析中起着至关重要的作用,因为它可以识别与结果相关的重要变量,并且可以提高结果模型的预测准确性。变量选择方法已被广泛研究为完全观察到的数据。但是,在缺少数据的情况下,需要仔细设计变量选择的方法,以解决数据丢失的机制和用于处理数据丢失的统计技术。由于归因于易用性,归因法可以说是处理丢失数据的最流行方法,因此与归因法结合使用的用于变量选择的统计方法尤为重要。这些方法在随机缺失(MAR)和完全随机缺失(MCAR)的假设下有效使用,主要分为三种通用策略。第一种策略将现有的变量选择方法应用于每个估算数据集,然后将所有估算数据集的变量选择结果组合在一起。第二种策略将现有的变量选择方法应用于堆叠的估算数据集。第三种变量选择策略将重采样技术(例如引导程序和插补)结合在一起。尽管最近取得了一些进展,但该领域仍不发达,为进一步研究提供了沃土。

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