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一篇关于测量与因子不变性的文章。

An essay on measurement and factorial invariance.

作者信息

Meredith William, Teresi Jeanne A

机构信息

University of California, Berkeley, California, USA.

出版信息

Med Care. 2006 Nov;44(11 Suppl 3):S69-77. doi: 10.1097/01.mlr.0000245438.73837.89.

Abstract

BACKGROUND

Analysis of subgroups such as different ethnic, language, or education groups selected from among a parent population is common in health disparities research. One goal of such analyses is to examine measurement equivalence, which includes both qualitative review of the meaning of items as well as quantitative examination of different levels of factorial invariance and differential item functioning.

OBJECTIVES

The purpose of this essay is to review the definitions and assumptions associated with factorial invariance, placing this formulation in the context of bias, fairness, and equity. The connection between the concepts of factorial invariance and item bias (differential item functioning) using a variant of item response theory is discussed. The situations under which different forms of invariance (weak, strong, and strict) are required are discussed.

METHODS

Establishing factorial invariance involves a hierarchy of levels that include tests of weak, strong, and strict invariance. Pattern (metric or weak) factorial invariance implies that the regression slopes are invariant across groups. Pattern invariance requires only invariant factor loadings. Strong factorial invariance implies that the conditional expectation of the response, given the common and specific factors, is invariant across groups. Strong factorial invariance requires that specific factor means (represented as invariant intercepts) also be identical across groups. Strict factorial invariance implies that, in addition, the conditional variance of the response, given the common and specific factors, is invariant across groups. Strict factorial invariance requires that, in addition to equal factor loadings and intercepts, the residual (specific factor plus error variable) variances are equivalent across groups. The concept of measurement invariance that is most closely aligned to that of item response theory considers the latent variable as a common factor measured by manifest variables; the specific factors can be characterized as nuisance variables.

CONCLUSIONS

Invariance of factor loadings across studied groups is required for valid comparisons of scale score or latent variable means. Strong and strict invariance may be less important in the context of basic research in which group differences in specific factors are indicative of individual differences that are important for scientific exploration. However, for most applications in which the aim is to ensure fairness and equity, strict factorial invariance is required. Health disparities research often focuses on self-reported clinical outcomes such as quality of life that are not observed directly. Latent variable models such as factor analyses are central to establishing valid assessment of such outcomes.

摘要

背景

在健康差异研究中,对从总体人群中选取的不同种族、语言或教育程度等亚组进行分析很常见。此类分析的一个目标是检验测量等价性,这既包括对项目含义的定性审查,也包括对不同水平的因子不变性和项目功能差异的定量检验。

目的

本文旨在回顾与因子不变性相关的定义和假设,将此表述置于偏差、公平和公正的背景下。讨论了使用项目反应理论的一个变体,因子不变性概念与项目偏差(项目功能差异)之间的联系。讨论了需要不同形式不变性(弱、强和严格)的情况。

方法

建立因子不变性涉及一个层次结构,包括弱、强和严格不变性的检验。模式(度量或弱)因子不变性意味着回归斜率在不同组间是不变的。模式不变性仅要求因子载荷不变。强因子不变性意味着在给定公共因子和特定因子的情况下,反应的条件期望在不同组间是不变的。强因子不变性要求特定因子均值(表示为不变截距)在不同组间也相同。严格因子不变性意味着,此外,在给定公共因子和特定因子的情况下,反应的条件方差在不同组间是不变的。严格因子不变性要求除了因子载荷和截距相等外,残差(特定因子加误差变量)方差在不同组间是等价的。与项目反应理论最紧密相关的测量不变性概念将潜在变量视为由显性变量测量的公共因子;特定因子可被表征为干扰变量。

结论

为了对量表分数或潜在变量均值进行有效比较,需要研究组间因子载荷的不变性。在基础研究中,特定因子的组间差异表明对科学探索很重要的个体差异,此时强不变性和严格不变性可能不太重要。然而,对于大多数旨在确保公平和公正的应用,需要严格因子不变性。健康差异研究通常关注自我报告的临床结局,如生活质量,这些结局并非直接观察到的。诸如因子分析等潜在变量模型对于建立对此类结局的有效评估至关重要。

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