为什么以及何时应该避免在显示概要文件或组差异的图表中使用z分数。

Q2 Psychology
Journal for Person-Oriented Research Pub Date : 2025-06-28 eCollection Date: 2025-01-01 DOI:10.17505/jpor.2025.28091
Julia Moeller
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引用次数: 0

摘要

许多以人为本的研究在进行聚类分析和/或显示群体差异之前使用z-标准化分数。这篇文章总结了为什么z标准分数在以人为本的方法中经常是有问题和误导的原因。这篇文章展示了一些例子,说明为什么以及如何在群体分类和比较中使用z分数可能会产生误导,并提出了一些问题较少的方法。在分类或显示聚类、概况和其他组之间的差异时应避免使用z标准化分数的原因是:两组之间的差异比例在z分数中被扭曲了。两个变量之差的比率在z分数中是扭曲的。关于项目背书和项目拒绝的信息丢失。给定z分数的心理意义不能在样本和变量之间进行比较。如果使用z分数将个人分配给群体,则群体分配可能会产生误导。如果使用z分数而不是原始分数来将个人分配给组,则可能会影响组的大小和组的频率。如果使用z分数而不是原始分数来将个体分配到组中,则进一步结果变量的组差异可能会发生变化。在聚类分析中,可选的标准化技术比z标准化性能更好。z标准化依赖于同质性假设,包括单模性,但在以人为本的研究中分析的分布通常是多模态的。以人为本的方法通常检查人与人之间的模式,以回答关于人与人之间现象的研究问题,而z标准化通常指的是人与人之间的差异,这在理论和方法之间造成了逻辑上的不匹配。在显示概要和组差异的图中使用z分数的替代方法是使用原始分数或使用归一化中使用范围而不是标准偏差的比例转换。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Why and When You Should Avoid Using z-scores in Graphs Displaying Profile or Group Differences.

Many person-oriented studies use z-standardized scores before conducting cluster analyses and/or before displaying group differences. This article summarizes reasons why z- standardized scores can often be problematic and misleading in person-oriented methods. The article shows examples illustrating why and how the use of z-scores in group classification and comparisons can be misleading, and proposes less problematic methods. Reasons why z-standardized scores should be avoided when classifying or displaying differences between clusters, profiles, and other groups are: The ratio of the difference between two groups is distorted in z-scores.The ratio of the difference between two variables is distorted in z-scores.Information about item endorsement and item rejection is lost.The psychological meaning of a given z-score does not compare across samples and variables.Group assignments can be misleading if z-scores are used to assign individuals to groups.The group size and group frequency may be affected if z-scores instead of raw scores are used to assign individuals to groups.Group differences in further outcome variables can change if z-scores instead of raw scores are used to assign individuals to groups.Alternative normalization techniques perform better than z-standardization in cluster analyses.z-standardization relies on homogeneity assumptions, including unimodality, but distributions analysed in person-oriented research are often multimodal.Person-oriented methods typically examine within-person patterns to answer research questions about within-person phenomena, whereas z-standardization typically refers to between-person variation, which creates a logical mismatch between theory and method. Alternatives to using z-scores in graphs displaying profiles and group differences are using raw scores or using scale transformations that use the range, not the standard deviation in the normalization.

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来源期刊
Journal for Person-Oriented Research
Journal for Person-Oriented Research Psychology-Psychology (miscellaneous)
CiteScore
2.90
自引率
0.00%
发文量
9
审稿时长
23 weeks
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