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Multiple-vs Non-or Single-Imputation Based Fuzzy Clustering for Incomplete Longitudinal Behavioral Intervention Data

机译:不完整纵向行为干预数据的基于多VS非或单输入的模糊聚类

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Disentangling patients' behavioral variations is a critical step for better understanding an intervention's effects on individual outcomes. Missing data commonly exist in longitudinal behavioral intervention studies. Multiple imputation (MI) has been well studied for missing data analyses in the statistical field, however, has not yet been scrutinized for clustering or unsupervised learning, which are important techniques for explaining the heterogeneity of treatment effects. Built upon previous work on MI fuzzy clustering, this paper theoretically, empirically and numerically demonstrate how MI-based approach can reduce the uncertainty of clustering accuracy in comparison to non- and single-imputation based clustering approach. This paper advances our understanding of the utility and strength of multiple-imputation (MI) based fuzzy clustering approach to processing incomplete longitudinal behavioral intervention data.
机译:区分患者的行为差异是更好地了解干预措施对个体结局的影响的关键步骤。纵向行为干预研究通常缺少数据。对于统计领域中的缺失数据分析,已经对多重插补(MI)进行了充分的研究,但是,尚未对聚类或无监督学习进行详细检查,这是解释治疗效果异质性的重要技术。在先前关于MI模糊聚类的工作的基础上,本文从理论上,经验和数值上证明了与不基于单输入的聚类方法相比,基于MI的方法如何减少聚类精度的不确定性。本文提高了我们对基于多输入(MI)的模糊聚类方法处理不完整的纵向行为干预数据的效用和强度的理解。

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