A demonstration and evaluation of the use of cross-classified random-effects models for meta-analysis

被引:0
作者
Belén Fernández-Castilla
Marlies Maes
Lies Declercq
Laleh Jamshidi
S. Natasha Beretvas
Patrick Onghena
Wim Van den Noortgate
机构
[1] KU Leuven,Faculty of Psychology and Educational Sciences
[2] University of Leuven,undefined
[3] Imec-ITEC,undefined
[4] KU Leuven,undefined
[5] University of Leuven,undefined
[6] Research Foundation Flanders (FWO),undefined
[7] University of Texas at Austin,undefined
来源
Behavior Research Methods | 2019年 / 51卷
关键词
Meta-analysis; Multiple effect sizes; Cross-classified random-effects model;
D O I
暂无
中图分类号
学科分类号
摘要
It is common for the primary studies in meta-analyses to report multiple effect sizes, generating dependence among them. Hierarchical three-level models have been proposed as a means to deal with this dependency. Sometimes, however, dependency may be due to multiple random factors, and random factors are not necessarily nested, but rather may be crossed. For instance, effect sizes may belong to different studies, and, at the same time, effect sizes might represent the effects on different outcomes. Cross-classified random-effects models (CCREMs) can be used to model this nonhierarchical dependent structure. In this article, we explore by means of a simulation study the performance of CCREMs in comparison with the use of other meta-analytic models and estimation procedures, including the use of three- and two-level models and robust variance estimation. We also evaluated the performance of CCREMs when the underlying data were generated using a multivariate model. The results indicated that, whereas the quality of fixed-effect estimates is unaffected by any misspecification in the model, the standard error estimates of the mean effect size and of the moderator variables’ effects, as well as the variance component estimates, are biased under some conditions. Applying CCREMs led to unbiased fixed-effect and variance component estimates, outperforming the other models. Even when a CCREM was not used to generate the data, applying the CCREM yielded sound parameter estimates and inferences.
引用
收藏
页码:1286 / 1304
页数:18
相关论文
共 49 条
[1]  
Becker BJ(1992)Using results from replicated studies to estimate linear models Journal of Educational and Behavioral Statistics 17 341-362
[2]  
Berkhof J(2004)Asymptotic effect of misspecification in the random part of the multilevel model Journal of Educational and Behavioral Statistics 29 201-218
[3]  
Kampen JK(2014)Modeling dependent effect sizes with three-level meta-analyses: A structural equation modeling approach Psychological Methods 19 211-229
[4]  
Cheung MW-L(2012)The paradox of intragroup conflict: A meta-analysis Journal of Applied Psychology 97 360-390
[5]  
De Wit FR(2004)The effects of early prevention programs for families with young children at risk for physical child abuse and neglect: A meta-analysis Child Maltreatment 9 277-291
[6]  
Greer LL(2008)A meta-analysis of work demand stressors and job performance: Examining main and moderating effects Personnel Psychology 61 227-271
[7]  
Jehn KA(1994)Multilevel cross-classified models Sociological Methods and Research 22 364-375
[8]  
Geeraert L(2010)Robust variance estimation in meta-regression with dependent effect size estimates Research Synthesis Methods 1 39-65
[9]  
Van den Noortgate W(1998)Robustness studies in covariance structure modeling An overview and a meta-analysis Sociological Methods and Research 26 329-367
[10]  
Grietens H(1996)A multivariate mixed linear model for meta-analysis Psychological Methods 1 227-235