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用于计算因子得分的回归权重与载荷权重的比较。

A Comparison of Regression and Loading Weights for the Computation of Factor Scores.

作者信息

Grice J W, Harris R J

出版信息

Multivariate Behav Res. 1998 Apr 1;33(2):221-47. doi: 10.1207/s15327906mbr3302_2.

Abstract

An alternative strategy for computing factor scores was introduced and compared to a popular contemporary scoring procedure. The new strategy involved unit-weighted composites of the standardized items that possessed salient factor score coefficients. Within the context of a sampling model, this strategy was shown to be superior to the common method of computing factor scores by unit-weighting and summing the standardized items with salient factor structure coefficients. Specifically, the new strategy produced factor scores that (a) captured a greater proportion of the true score variance of the factors, (b) were less confounded by true scores from factors other than those they were supposed to be estimates of, and (c) were less correlated with one another when the underlying factor structure was truly orthogonal. The implications of these findings were discussed within the context of two general applications of factor analysis, and practical recommendations were offered.

摘要

引入了一种计算因子得分的替代策略,并将其与一种流行的当代计分程序进行比较。新策略涉及具有显著因子得分系数的标准化项目的单位加权合成。在抽样模型的背景下,该策略被证明优于通过对具有显著因子结构系数的标准化项目进行单位加权和求和来计算因子得分的常用方法。具体而言,新策略产生的因子得分具有以下特点:(a) 捕获了因子真实得分方差的更大比例;(b) 较少受到它们本应估计的因子之外的其他因子真实得分的混淆;(c) 当潜在因子结构真正正交时,它们之间的相关性较小。在因子分析的两个一般应用背景下讨论了这些发现的含义,并提供了实际建议。

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