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Planned missing-data designs in experience-sampling research: Monte Carlo simulations of efficient designs for assessing within-person constructs

机译:经验采样研究中的计划缺失数据设计:蒙特卡罗评估人内部建筑的高效设计模拟

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Experience-sampling research involves trade-offs between the number of questions asked per signal, the number of signals per day, and the number of days. By combining planned missing-data designs and multilevel latent variable modeling, we show how to reduce the items per signal without reducing the number of items. After illustrating different designs using real data, we present two Monte Carlo studies that explored the performance of planned missing-data designs across different within-person and between-person sample sizes and across different patterns of response rates. The missing-data designs yielded unbiased parameter estimates but slightly higher standard errors. With realistic sample sizes, even designs with extensive missingness performed well, so these methods are promising additions to an experience-sampler’s toolbox.
机译:体验 - 抽样研究涉及每个信号所要求的问题数量之间的权衡,每天的信号数以及天数。通过组合计划缺失 - 数据设计和多级潜在变量建模,我们展示了如何减少每个信号的项目而不减少项目数量。在使用真实数据说明不同的设计之后,我们提出了两个蒙特卡罗研究,该研究探讨了在人内部和人物样本大小和跨越不同的响应率模式之间的计划缺失数据设计的表现。缺失数据设计产生了无偏见的参数估计,但标准错误略高。具有现实的样本尺寸,甚至具有广泛缺失的设计表现良好,因此这些方法对体验 - 采样器的工具箱具有很大的添加。

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