Alexander M Schoemann, E Whitney G Moore, Gokhan Yagiz
{"title":"How and why to follow best practices for testing mediation models with missing data.","authors":"Alexander M Schoemann, E Whitney G Moore, Gokhan Yagiz","doi":"10.1002/ijop.13257","DOIUrl":null,"url":null,"abstract":"<p><p>Mediation models are often conducted in psychology to understand mechanisms and processes of change. However, current best practices for handling missing data in mediation models are not always used by researchers. Missing data methods, such as full information maximum likelihood (FIML) and multiple imputation (MI), are best practice methods of handling missing data. However, FIML or MI are rarely used to handle missing data when testing mediation models, instead analyses used listwise deletion methods, the default in popular software. Compared to listwise deletion, the implementation of FIML or MI to handle missing data reduces parameter estimate bias, while maintaining the sample collected to maximise power and generalizability of results. In this tutorial, we review how to implement full-information maximum likelihood and MI using best practice methods of testing the indirect effect. We demonstrate how to implement these methods using both R and JASP, which are both free, open-source software programmes and provide online supplemental materials for these demonstrations. These methods are demonstrated using two example analyses, one using a cross-sectional mediation model and one using a longitudinal mediation model examining how student-athletes reported worry about COVID predicts their perceived stress, which in turn predicts satisfaction with life.</p>","PeriodicalId":48146,"journal":{"name":"International Journal of Psychology","volume":" ","pages":""},"PeriodicalIF":3.3000,"publicationDate":"2024-10-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal of Psychology","FirstCategoryId":"102","ListUrlMain":"https://doi.org/10.1002/ijop.13257","RegionNum":3,"RegionCategory":"心理学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"PSYCHOLOGY, MULTIDISCIPLINARY","Score":null,"Total":0}
引用次数: 0
Abstract
Mediation models are often conducted in psychology to understand mechanisms and processes of change. However, current best practices for handling missing data in mediation models are not always used by researchers. Missing data methods, such as full information maximum likelihood (FIML) and multiple imputation (MI), are best practice methods of handling missing data. However, FIML or MI are rarely used to handle missing data when testing mediation models, instead analyses used listwise deletion methods, the default in popular software. Compared to listwise deletion, the implementation of FIML or MI to handle missing data reduces parameter estimate bias, while maintaining the sample collected to maximise power and generalizability of results. In this tutorial, we review how to implement full-information maximum likelihood and MI using best practice methods of testing the indirect effect. We demonstrate how to implement these methods using both R and JASP, which are both free, open-source software programmes and provide online supplemental materials for these demonstrations. These methods are demonstrated using two example analyses, one using a cross-sectional mediation model and one using a longitudinal mediation model examining how student-athletes reported worry about COVID predicts their perceived stress, which in turn predicts satisfaction with life.
心理学界经常使用中介模型来了解变化的机制和过程。然而,研究人员并不总是使用当前处理中介模型中缺失数据的最佳方法。缺失数据处理方法,如全信息最大似然法(FIML)和多重估算法(MI),是处理缺失数据的最佳实践方法。然而,在测试中介模型时,FIML 或 MI 很少被用来处理缺失数据,相反,分析使用了列表删除法,这是流行软件的默认方法。与列表删除法相比,使用 FIML 或 MI 处理缺失数据可减少参数估计偏差,同时保持所收集的样本以最大限度地提高结果的功率和普适性。在本教程中,我们将回顾如何使用测试间接效应的最佳实践方法来实施全信息极大似然法和多元回归法。我们演示了如何使用 R 和 JASP(均为免费开源软件程序)实施这些方法,并为这些演示提供了在线补充材料。我们使用两个示例分析来演示这些方法,一个是横截面中介模型,另一个是纵向中介模型,研究学生运动员报告的对 COVID 的担忧如何预测他们的感知压力,而感知压力又如何预测生活满意度。
期刊介绍:
The International Journal of Psychology (IJP) is the journal of the International Union of Psychological Science (IUPsyS) and is published under the auspices of the Union. IJP seeks to support the IUPsyS in fostering the development of international psychological science. It aims to strengthen the dialog within psychology around the world and to facilitate communication among different areas of psychology and among psychologists from different cultural backgrounds. IJP is the outlet for empirical basic and applied studies and for reviews that either (a) incorporate perspectives from different areas or domains within psychology or across different disciplines, (b) test the culture-dependent validity of psychological theories, or (c) integrate literature from different regions in the world.