评估固定效应标准误差的两种小样本校正,以及具有异方差、不平衡、聚类数据的多层次模型中的推论。

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2024-09-01 Epub Date: 2024-02-06 DOI:10.3758/s13428-023-02325-9
Yichi Zhang, Mark H C Lai
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引用次数: 0

摘要

多层次建模(MLM)常用于心理学研究中的聚类数据建模。然而,应用研究中的数据通常会违反多层次建模的一个基本假设--方差同质性。虽然最大似然法得出的固定效应估计值仍然无偏,但固定效应的标准误差却被误估,从而导致推论不准确,I 类错误率上升或下降。为了纠正固定效应标准误差的偏差并提供有效的推论,人们使用了小样本校正方法,如 Kenward-Roger(KR)调整和调整后的聚类标准误差(CR-SEs),并使用 Satterthwaite 近似方法进行 t 检验。本研究将 KR 与随机斜率(RS)模型进行了比较,并将调整后的 CR-SE 与普通最小二乘法(OLS)、随机截距(RI)和 RS 模型进行了比较,以使用蒙特卡罗模拟分析小型异方差聚类数据。结果表明,在存在二级异方差的情况下,采用 RS 模型的 KR 程序在聚类间效应方面存在较大偏差和 I 类错误率。与此相反,调整后的 CR-SE 通常会产生可接受的偏差,并在所有考察模型中保持接近名义水平的 I 类误差率。因此,如果只关注集群内效应,任何具有调整后 CR-SE 的模型都可以使用。然而,当研究人员希望准确推断聚类间效应时,则应使用带 RS 的调整 CR-SE,以获得更高的功率并防止未建模的异质性。我们重新分析了 Snijders & Bosker(2012 年)中的一个例子,以演示如何使用不同模型的调整后 CR-SE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Evaluating two small-sample corrections for fixed-effects standard errors and inferences in multilevel models with heteroscedastic, unbalanced, clustered data.

Multilevel modeling (MLM) is commonly used in psychological research to model clustered data. However, data in applied research usually violate one of the essential assumptions of MLM-homogeneity of variance. While the fixed-effect estimates produced by the maximum likelihood method remain unbiased, the standard errors for the fixed effects are misestimated, resulting in inaccurate inferences and inflated or deflated type I error rates. To correct the bias in fixed effects standard errors and provide valid inferences, small-sample corrections such as the Kenward-Roger (KR) adjustment and the adjusted cluster-robust standard errors (CR-SEs) with the Satterthwaite approximation for t tests have been used. The current study compares KR with random slope (RS) models and the adjusted CR-SEs with ordinary least squares (OLS), random intercept (RI) and RS models to analyze small, heteroscedastic, clustered data using a Monte Carlo simulation. Results show the KR procedure with RS models has large biases and inflated type I error rates for between-cluster effects in the presence of level 2 heteroscedasticity. In contrast, the adjusted CR-SEs generally yield results with acceptable biases and maintain type I error rates close to the nominal level for all examined models. Thus, when the interest is only in within-cluster effect, any model with the adjusted CR-SEs could be used. However, when the interest is to make accurate inferences of the between-cluster effect, researchers should use the adjusted CR-SEs with RS to have higher power and guard against unmodeled heterogeneity. We reanalyzed an example in Snijders & Bosker (2012) to demonstrate the use of the adjusted CR-SEs with different models.

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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
期刊最新文献
Publisher Correction: Dimensionality and optimal combination of autonomic fear-conditioning measures in humans. Author Correction: Discovering trends of social interaction behavior over time: An introduction to relational event modeling. Author Correction: r2mlm: An R package calculating R-squared measures for multilevel models. Correction: Development and validation of the Emotional Climate Change Stories (ECCS) stimuli set. Geofencing in location-based behavioral research: Methodology, challenges, and implementation.
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