多元评估研究的历史数据整合分析

IF 0.6 Q3 SOCIAL SCIENCES, INTERDISCIPLINARY Measurement-Interdisciplinary Research and Perspectives Pub Date : 2023-07-03 DOI:10.1080/15366367.2022.2115250
Katerina M. Marcoulides
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引用次数: 0

摘要

综合数据分析最近被证明是研究人员对从多个研究中综合数据集以得出统计或实质性结论感兴趣的有效工具。整合不同数据集的实际过程取决于反映相同研究结构的一些通用度量或项目的可用性。然而,要有效地整合多个数据集,究竟需要多少共同的项目至今还没有确定。本研究评估了在综合数据分析应用中使用不同数量的常见项目的效果。该研究使用了基于现实数据集成设置的模拟,其中常见项目集的数量是不同的。结果提供了关于维护估计精度的公共项目集的最佳数量的见解。鉴于过去心理测量学文献中关于共同项目集必要数量的研究,本文还讨论了这些发现的实际意义。
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Integration of Historical Data for the Analysis of Multiple Assessment Studies
ABSTRACT Integrative data analyses have recently been shown to be an effective tool for researchers interested in synthesizing datasets from multiple studies in order to draw statistical or substantive conclusions. The actual process of integrating the different datasets depends on the availability of some common measures or items reflecting the same studied constructs. However, exactly how many common items are needed to effectively integrate multiple datasets has to date not been determined. This study evaluated the effect of using different numbers of common items in integrative data analysis applications. The study used simulations based on realistic data integration settings in which the number of common item sets was varied. The results provided insight concerning the optimal numbers of common items sets to safeguard estimation precision. The practical implications of these findings in view of past research in the psychometric literature concerning the necessary number of common item sets are also discussed.
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来源期刊
Measurement-Interdisciplinary Research and Perspectives
Measurement-Interdisciplinary Research and Perspectives SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
1.80
自引率
0.00%
发文量
23
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