惩罚最优尺度的有序变量与应用的国际分类功能核心集

IF 1.5 3区 心理学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS British Journal of Mathematical & Statistical Psychology Pub Date : 2023-01-10 DOI:10.1111/bmsp.12297
Aisouda Hoshiyar, Henk A. L. Kiers, Jan Gertheiss
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引用次数: 0

摘要

序数数据在社会科学中经常出现。然而,在应用主成分分析(PCA)时,这些数据通常被视为数字,这意味着手头的变量之间存在线性关系;或者,非线性PCA应用于有时难以解释所获得的量化。分类数据的非线性PCA,也称为最优评分/缩放,通过为类别分配数值来构建新变量,从而使这些新变量中由预定义的主成分(pc)数量解释的方差比例最大化。我们提出了一种针对有序变量的非线性主成分分析的惩罚版本,它是迄今为止在类别标签上的标准主成分分析和非线性主成分分析之间的平滑中间。新方法绝不局限于单调效应,它提供了类别标签非线性转换的更好的可解释性,并且在验证数据上比无惩罚的非线性主成分分析和/或标准线性主成分分析有更好的性能。特别地,提供了对国际功能、残疾和健康分类(ICF)给出的有序数据的惩罚最优标度的应用。
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Penalized optimal scaling for ordinal variables with an application to international classification of functioning core sets

Ordinal data occur frequently in the social sciences. When applying principal component analysis (PCA), however, those data are often treated as numeric, implying linear relationships between the variables at hand; alternatively, non-linear PCA is applied where the obtained quantifications are sometimes hard to interpret. Non-linear PCA for categorical data, also called optimal scoring/scaling, constructs new variables by assigning numerical values to categories such that the proportion of variance in those new variables that is explained by a predefined number of principal components (PCs) is maximized. We propose a penalized version of non-linear PCA for ordinal variables that is a smoothed intermediate between standard PCA on category labels and non-linear PCA as used so far. The new approach is by no means limited to monotonic effects and offers both better interpretability of the non-linear transformation of the category labels and better performance on validation data than unpenalized non-linear PCA and/or standard linear PCA. In particular, an application of penalized optimal scaling to ordinal data as given with the International Classification of Functioning, Disability and Health (ICF) is provided.

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来源期刊
CiteScore
5.00
自引率
3.80%
发文量
34
审稿时长
>12 weeks
期刊介绍: The British Journal of Mathematical and Statistical Psychology publishes articles relating to areas of psychology which have a greater mathematical or statistical aspect of their argument than is usually acceptable to other journals including: • mathematical psychology • statistics • psychometrics • decision making • psychophysics • classification • relevant areas of mathematics, computing and computer software These include articles that address substantitive psychological issues or that develop and extend techniques useful to psychologists. New models for psychological processes, new approaches to existing data, critiques of existing models and improved algorithms for estimating the parameters of a model are examples of articles which may be favoured.
期刊最新文献
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