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A practical comparison of single and multiple imputation methods to handle complex missing data in air quality datasets

机译:一次和多次插补方法处理空气质量数据集中复杂缺失数据的实用比较

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摘要

Datasets with missing data ratios ranging from 24% to 4%, corresponding to three air quality monitoring studies, were used to ascertain whether major differences occur when five currently used imputation methods are applied (four single imputation methods and a multiple imputation one). Unrotated and Varimax-rotated factor analyses performed on the imputed datasets were compared. All methods performed similarly, although multiple imputation yielded more disperse imputed values. Main differences occurred when a variable with missing values correlated poorly to the other features and when a variable had relevant loadings in several unrotated factors, which sometimes changed the order of the rotated factors.
机译:数据集缺失率在24%至4%之间的数据集(对应于三项空气质量监测研究)用于确定当采用五种当前使用的插补方法(四种单插补方法和多插补方法)时是否出现重大差异。比较了在估算数据集上进行的未旋转因子分析和Varimax旋转因子分析。尽管多次插补产生的分散估算值更多,但所有方法的执行方式相似。当具有缺失值的变量与其他特征的相关性不佳,以及变量在多个未旋转的因子中具有相关的载荷时,会发生主要差异,这有时会更改旋转因子的顺序。

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