The Trade-Off Between Factor Score Determinacy and the Preservation of Inter-Factor Correlations.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
ACS Applied Bio Materials Pub Date : 2024-04-01 Epub Date: 2023-04-29 DOI:10.1177/00131644231171137
André Beauducel, Norbert Hilger, Tobias Kuhl
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引用次数: 0

Abstract

Regression factor score predictors have the maximum factor score determinacy, that is, the maximum correlation with the corresponding factor, but they do not have the same inter-correlations as the factors. As it might be useful to compute factor score predictors that have the same inter-correlations as the factors, correlation-preserving factor score predictors have been proposed. However, correlation-preserving factor score predictors have smaller correlations with the corresponding factors (factor score determinacy) than regression factor score predictors. Thus, higher factor score determinacy goes along with bias of the inter-correlations and unbiased inter-correlations go along with lower factor score determinacy. The aim of the present study was therefore to investigate the size and conditions of the trade-off between factor score determinacy and bias of inter-correlations by means of algebraic considerations and a simulation study. It turns out that under several conditions very small gains of factor score determinacy of the regression factor score predictor go along with a large bias of inter-correlations. Instead of using the regression factor score predictor by default, it is proposed to check whether substantial bias of inter-correlations can be avoided without substantial loss of factor score determinacy using a correlation-preserving factor score predictor. A syntax that allows to compute correlation-preserving factor score predictors from regression factor score predictors, and to compare factor score determinacy and inter-correlations of the factor score predictors is given in the Appendix.

因子得分确定性与因子间相关性保持之间的权衡
回归因子得分预测因子具有最大因子得分确定性,即与相应因子的最大相关性,但它们与因子不具有相同的相关性。由于计算与因子具有相同相互相关性的因子得分预测因子可能是有用的,因此提出了保留相关性的因子分数预测因子。然而,保持相关性的因子得分预测因子与相应因子的相关性(因子得分的确定性)小于回归因子得分预测函数。因此,因子得分的确定性越高,相互关联的偏倚就越大,而无偏倚的相互关联就越低。因此,本研究的目的是通过代数考虑和模拟研究,研究因子得分确定性和相关性偏差之间的权衡大小和条件。结果表明,在几种条件下,回归因子得分预测因子的因子得分确定性的非常小的增益伴随着相关性的大偏差。建议使用保留相关性的因子得分预测器来检查是否可以在不显著损失因子得分确定性的情况下避免相互相关性的显著偏差,而不是默认使用回归因子得分预测因子。附录中给出了一种语法,该语法允许从回归因子得分预测因子中计算保持相关性的因子得分预测函数,并比较因子得分的确定性和因子得分预测的相互相关性。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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