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Multiple imputation in principal component analysis

机译:主成分分析中的多重插补

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The available methods to handle missing values in principal component analysis only provide point estimates of the parameters (axes and components) and estimates of the missing values. To take into account the variability due to missing values a multiple imputation method is proposed. First a method to generate multiple imputed data sets from a principal component analysis model is defined. Then, two ways to visualize the uncertainty due to missing values onto the principal component analysis results are described. The first one consists in projecting the imputed data sets onto a reference configuration as supplementary elements to assess the stability of the individuals (respectively of the variables). The second one consists in performing a principal component analysis on each imputed data set and fitting each obtained configuration onto the reference one with Procrustes rotation. The latter strategy allows to assess the variability of the principal component analysis parameters induced by the missing values. The methodology is then evaluated from a real data set.
机译:在主成分分析中处理缺失值的可用方法仅提供参数(轴和成分)的点估计以及缺失值的估计。为了考虑由于缺失值引起的可变性,提出了一种多重插补方法。首先,定义了一种从主成分分析模型生成多个估算数据集的方法。然后,描述了两种将因缺少值而导致的不确定性可视化到主成分分析结果上的方法。第一个步骤是将估算的数据集投影到参考配置上作为补充元素,以评估个体的稳定性(与变量无关)。第二个步骤是对每个估算的数据集执行主成分分析,并通过Procrustes旋转将每个获得的配置拟合到参考数据上。后一种策略允许评估由缺失值引起的主成分分析参数的可变性。然后从真实数据集中评估该方法。

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