Multilevel modeling myths.

Francis L Huang
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引用次数: 95

Abstract

The use of multilevel modeling (MLM) to analyze nested data has grown in popularity over the years in the study of school psychology. However, with the increase in use, several statistical misconceptions about the technique have also proliferated. We discuss some commonly cited myths and golden rules related to the use of MLM, explain their origin, and suggest approaches to dealing with certain issues. Misunderstandings related to the use of the intraclass correlation, design effects, minimum sample size, multilevel factor structures, model R², and the misestimation of standard errors are reviewed. Many of the cited myths have much truth in them-though at times, researchers may not be aware of the exceptions to the rules that prevent their overall generalization. Although nesting should be accounted for, researchers should realize that MLM, which is a powerful and flexible technique, is not the only method that can be used to account for the clustering effect. (PsycINFO Database Record

多层建模神话。
近年来,使用多层次模型(MLM)来分析嵌套数据在学校心理学研究中越来越受欢迎。然而,随着使用的增加,一些关于该技术的统计错误观念也激增。我们讨论了一些常用的神话和黄金法则有关使用传销,解释他们的起源,并建议处理某些问题的方法。本文回顾了与使用类内相关、设计效应、最小样本量、多水平因素结构、模型r2和标准误差的错误估计有关的误解。许多被引用的神话都有很多道理——尽管有时,研究人员可能没有意识到阻止他们全面推广的规则的例外。虽然应该考虑嵌套,但研究人员应该意识到,MLM是一种强大而灵活的技术,并不是唯一可以用来解释聚类效应的方法。(PsycINFO数据库记录
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