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违反球对称性假设及其对重复测量方差分析和多层线性模型(MLM)中I型错误率的影响。

Violation of the Sphericity Assumption and Its Effect on Type-I Error Rates in Repeated Measures ANOVA and Multi-Level Linear Models (MLM).

作者信息

Haverkamp Nicolas, Beauducel André

机构信息

Department of Arts and Humanities, Institute of Psychology, University of Bonn, Bonn, Germany.

出版信息

Front Psychol. 2017 Oct 17;8:1841. doi: 10.3389/fpsyg.2017.01841. eCollection 2017.

Abstract

We investigated the effects of violations of the sphericity assumption on Type I error rates for different methodical approaches of repeated measures analysis using a simulation approach. In contrast to previous simulation studies on this topic, up to nine measurement occasions were considered. Effects of the level of inter-correlations between measurement occasions on Type I error rates were considered for the first time. Two populations with non-violation of the sphericity assumption, one with uncorrelated measurement occasions and one with moderately correlated measurement occasions, were generated. One population with violation of the sphericity assumption combines uncorrelated with highly correlated measurement occasions. A second population with violation of the sphericity assumption combines moderately correlated and highly correlated measurement occasions. From these four populations without any between-group effect or within-subject effect 5,000 random samples were drawn. Finally, the mean Type I error rates for Multilevel linear models (MLM) with an unstructured covariance matrix (MLM-UN), MLM with compound-symmetry (MLM-CS) and for repeated measures analysis of variance (rANOVA) models (without correction, with Greenhouse-Geisser-correction, and Huynh-Feldt-correction) were computed. To examine the effect of both the sample size and the number of measurement occasions, sample sizes of = 20, 40, 60, 80, and 100 were considered as well as measurement occasions of = 3, 6, and 9. With respect to rANOVA, the results plead for a use of rANOVA with Huynh-Feldt-correction, especially when the sphericity assumption is violated, the sample size is rather small and the number of measurement occasions is large. For MLM-UN, the results illustrate a massive progressive bias for small sample sizes ( = 20) and = 6 or more measurement occasions. This effect could not be found in previous simulation studies with a smaller number of measurement occasions. The proportionality of bias and number of measurement occasions should be considered when MLM-UN is used. The good news is that this proportionality can be compensated by means of large sample sizes. Accordingly, MLM-UN can be recommended even for small sample sizes for about three measurement occasions and for large sample sizes for about nine measurement occasions.

摘要

我们采用模拟方法,研究了违反球形假设对重复测量分析的不同方法的I型错误率的影响。与以往关于该主题的模拟研究不同,本研究考虑了多达九次测量场合。首次考虑了测量场合之间的相互关联程度对I型错误率的影响。生成了两个未违反球形假设的总体,一个总体的测量场合不相关,另一个总体的测量场合具有中等相关性。一个违反球形假设的总体将不相关的测量场合与高度相关的测量场合结合在一起。另一个违反球形假设的总体将中等相关的测量场合与高度相关的测量场合结合在一起。从这四个没有任何组间效应或受试者内效应的总体中抽取了5000个随机样本。最后,计算了具有非结构化协方差矩阵的多层线性模型(MLM-UN)、具有复合对称性的MLM(MLM-CS)以及重复测量方差分析(rANOVA)模型(无校正、采用Greenhouse-Geisser校正和Huynh-Feldt校正)的平均I型错误率。为了检验样本量和测量场合数量的影响,考虑了样本量(n = 20)、(40)、(60)、(80)和(100)以及测量场合(k = 3)、(6)和(9)。关于rANOVA,结果表明应使用采用Huynh-Feldt校正的rANOVA,尤其是当球形假设被违反、样本量较小且测量场合数量较多时。对于MLM-UN,结果表明对于小样本量((n = 20))和(k = 6)或更多测量场合存在大量渐进偏差。在以往测量场合数量较少的模拟研究中未发现这种效应。使用MLM-UN时应考虑偏差与测量场合数量的比例关系。好消息是,这种比例关系可以通过大样本量来补偿。因此,即使对于小样本量(约三次测量场合)和大样本量(约九次测量场合),也可以推荐使用MLM-UN。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b3ee/5651023/f50eb807732e/fpsyg-08-01841-g0001.jpg

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