Measurement invariance or measurement equivalence is a statistical property of measurement that indicates that the same
construct is being measured across some specified groups.
For example, measurement invariance can be used to study whether a given measure is interpreted in a conceptually similar manner by respondents representing different genders or cultural backgrounds. Violations of measurement invariance may preclude meaningful interpretation of measurement data. Tests of measurement invariance are increasingly used in fields such as psychology to supplement evaluation of measurement quality rooted in
classical test theory
Classical test theory (CTT) is a body of related psychometric theory that predicts outcomes of psychological Test (assessment), testing such as the difficulty of items or the ability of test-takers. It is a theory of testing based on the idea that ...
.
Measurement invariance is often tested in the framework of multiple-group
confirmatory factor analysis
In statistics, confirmatory factor analysis (CFA) is a special form of factor analysis, most commonly used in social science research.Kline, R. B. (2010). ''Principles and practice of structural equation modeling (3rd ed.).'' New York, New York: Gu ...
(CFA). In the context of
structural equation models
Structural equation modeling (SEM) is a diverse set of methods used by scientists for both observational and experimental research. SEM is used mostly in the social and behavioral science fields, but it is also used in epidemiology, business, ...
, including CFA, measurement invariance is often termed ''factorial invariance''.
Definition
In the
common factor model, measurement invariance may be defined as the following equality:
:
where
is a distribution function,
is an observed score,
is a factor score, and ''s'' denotes group membership (e.g., Caucasian=0, African American=1). Therefore, measurement invariance entails that given a subject's factor score, his or her observed score is not dependent on his or her group membership.
Types of invariance
Several different types of measurement invariance can be distinguished in the common factor model for continuous outcomes:
: 1) ''Equal form'': The number of factors and the pattern of factor-indicator relationships are identical across groups.
: 2) ''Equal loadings'': Factor loadings are equal across groups.
: 3) ''Equal intercepts'': When observed scores are regressed on each factor, the intercepts are equal across groups.
: 4) ''Equal residual variances'': The residual variances of the observed scores not accounted for by the factors are equal across groups.
The same typology can be generalized to the discrete outcomes case:
: 1) ''Equal form'': The number of factors and the pattern of factor-indicator relationships are identical across groups.
: 2) ''Equal loadings'': Factor loadings are equal across groups.
: 3) ''Equal thresholds'': When observed scores are regressed on each factor, the thresholds are equal across groups.
: 4) ''Equal residual variances'': The residual variances of the observed scores not accounted for by the factors are equal across groups.
Each of these conditions corresponds to a multiple-group confirmatory factor model with specific constraints. The tenability of each model can be tested statistically by using a
likelihood ratio test or other
indices of fit. Meaningful comparisons between groups usually require that all four conditions are met, which is known as ''strict measurement invariance''. However, strict measurement invariance rarely holds in applied context. Usually, this is tested by sequentially introducing additional constraints starting from the equal form condition and eventually proceeding to the equal residuals condition if the fit of the model does not deteriorate in the meantime.
Tests for invariance
Although further research is necessary on the application of various invariance tests and their respective criteria across diverse testing conditions, two approaches are common among applied researchers. For each model being compared (e.g., Equal form, Equal Intercepts) a ''χ
2'' fit statistic is iteratively estimated from the minimization of the difference between the model implied mean and covariance matrices and the observed mean and covariance matrices.
As long as the models under comparison are nested, the difference between the ''χ
2'' values and their respective degrees of freedom of any two CFA models of varying levels of invariance follows a ''χ
2'' distribution (diff ''χ
2'') and as such, can be inspected for significance as an indication of whether increasingly restrictive models produce appreciable changes in model-data fit.
However, there is some evidence the diff ''χ
2'' is sensitive to factors unrelated to changes in invariance targeted constraints (e.g., sample size).
Consequently it is recommended that researchers also use the difference between the
comparative fit index (ΔCFI) of two models specified to investigate measurement invariance. When the difference between the CFIs of two models of varying levels of measurement invariance (e.g., equal forms versus equal loadings) is below −0.01 (that is, it drops by more than 0.01), then invariance in likely untenable.
The CFI values being subtracted are expected to come from nested models as in the case of diff ''χ
2'' testing; however, it seems that applied researchers rarely take this into consideration when applying the CFI test.
Levels of Equivalence
Equivalence can also be categorized according to three hierarchical levels of measurement equivalence.
# Configural equivalence: The factor structure is the same across groups in a multi-group confirmatory factor analysis.
# Metric equivalence: Factor loadings are similar across groups.
# Scalar equivalence: Values/Means are also equivalent across groups.
Implementation
Tests of measurement invariance are available in the
R programming language
R is a programming language for statistical computing and data visualization. It has been widely adopted in the fields of data mining, bioinformatics, data analysis, and data science.
The core R language is extended by a large number of so ...
.
Criticism
The well-known political scientist
Christian Welzel
Christian Welzel (born 1964) is a German political scientist at the Leuphana University Lueneburg and director of research at the World Values Survey Association. He is known for the model of cultural dimensions which measures emancipative va ...
and his colleagues criticize the excessive reliance on invariance tests as criteria for the
validity of cultural and psychological constructs in
cross-cultural
Cross-cultural may refer to:
*cross-cultural studies, a comparative tendency in various fields of cultural analysis
*cross-cultural communication, a field of study that looks at how people from differing culture, cultural backgrounds communicate
* ...
statistics. They have demonstrated that the invariance criteria favor constructs with low between-group
variance
In probability theory and statistics, variance is the expected value of the squared deviation from the mean of a random variable. The standard deviation (SD) is obtained as the square root of the variance. Variance is a measure of dispersion ...
, while constructs with high between-group variance fail these tests. A high between-group variance is indeed necessary for a construct to be useful in cross-cultural comparisons. The between-group variance is highest if some group
mean
A mean is a quantity representing the "center" of a collection of numbers and is intermediate to the extreme values of the set of numbers. There are several kinds of means (or "measures of central tendency") in mathematics, especially in statist ...
s are near the extreme ends of the closed-ended scales, where the intra-group variance is necessarily low. Low intra-group variance yields low
correlation
In statistics, correlation or dependence is any statistical relationship, whether causal or not, between two random variables or bivariate data. Although in the broadest sense, "correlation" may indicate any type of association, in statistics ...
s and low
factor loadings which scholars routinely interpret as an indication of inconsistency. Welzel and colleagues recommend instead to rely on
nomological criteria of construct validity based on whether the construct correlates in expected ways with other measures of between-group differences. They offer several examples of cultural constructs that have high
explanatory power and
predictive power in cross-cultural comparisons, yet fail the tests for invariance.
Proponents of invariance testing counter-argue that the reliance on nomological linkage ignores that such external validation hinges on the assumption of comparability.
[{{cite journal , last1=Meuleman , first1=Bart , last2=Żółtak , first2=Tomasz , title=Why Measurement Invariance is Important in Comparative Research. A Response to Welzel et al. (2021) , journal=Sociological Methods & Research , date=2022 , volume=52 , issue=3 , page=00491241221091755 , doi=10.1177/00491241221091755, url=https://www.zora.uzh.ch/id/eprint/219351/1/Meuleman_et_al_2022_SMR.pdf ]
See also
*
Differential item functioning
References
Psychometrics
Latent variable models