样本量小时预测均值匹配的多重脉冲

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2018-04-23 DOI:10.1027/1614-2241/a000141
Kristian Kleinke
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引用次数: 34

摘要

预测均值匹配(PMM)是一种最先进的热甲板多重插值(MI)方法。其结果的质量,除其他外,取决于是否有合适的捐赠病例。在心理学或医学研究中经常发现的小样本场景中应用PMM可能会有问题,因为数据集中可能没有很多(或任何)合适的供体病例。到目前为止,还没有系统的研究在样本量较小的情况下检验PMM的性能。本研究在不同的多元回归情景下评估了PMM,其中样本量、缺失数据百分比、回归系数大小和PMM的供体选择策略是系统变化的。结果表明,PMM可以在大多数情况下使用,但结果取决于供体选择策略:总体而言,PMM使用自动距离辅助选择供体(Gaffert, Meinfelder, & Bosch, 2016)或使用最近的邻居产生最佳结果。
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Multiple Imputation by Predictive Mean Matching When Sample Size Is Small
Predictive mean matching (PMM) is a state-of-the-art hot deck multiple imputation (MI) procedure. The quality of its results depends, inter alia, on the availability of suitable donor cases. Applying PMM in small sample scenarios often found in psychological or medical research could be problematic, as there might not be many (or any) suitable donor cases in the data set. So far, there has not been any systematic research that examined the performance of PMM, when sample size is small. The present study evaluated PMM in various multiple regression scenarios, where sample size, missing data percentages, the size of the regression coefficients, and PMM’s donor selection strategy were systematically varied. Results show that PMM could be used in most scenarios, however results depended on the donor selection strategy: overall, PMM using either automatic distance-aided selection of donors (Gaffert, Meinfelder, & Bosch, 2016) or using the nearest neighbor produced the best results.
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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