Discriminant Validity (divergent validity) (original) (raw)

Discriminant validity, also known as divergent validity, is the extent to which a measure does not correlate strongly with measures of different, unrelated constructs.

Here, a construct is a behavior, attitude, or concept, particularly one that is not directly observable.

Key Takeaways

The primary method for assessing discriminant validity is examining the correlation coefficients between the measure in question and measures of different constructs.

Weak or low correlations, typically closer to 0, suggest good discriminant validity. These correlations are sometimes called discriminant validity coefficients.

For example, a test measuring introversion (target construct) should have low correlations with a test measuring mathematical ability (comparison construct), because these are distinct constructs.

If the correlation is high, it suggests the introversion test lacks discriminant validity and may actually be measuring something else, like general intelligence.

Examples of discriminant validity

Here are a few examples:

Discriminant vs. Convergent Validity

Discriminant validity and convergent validity are both crucial aspects of construct validity, which aims to determine the extent to which a test or measure accurately assesses the underlying construct it is designed to measure.

They provide complementary information about the extent to which a measure is assessing the intended construct and differentiating it from other constructs:

Focus:

Expected Correlations:

Purpose:

How is discriminant validity measured?

Discriminant validity is a crucial aspect of construct validity that helps ensure a test is truly measuring its intended construct and not being influenced by other, unrelated constructs.

Discriminant validity is not an all-or-none property. It is a matter of degree, and the strength of the evidence can vary.

Multiple sources of evidence should be considered to develop a strong argument for the discriminant validity of a measure.

1. Define the Target and Comparison Constructs:

Here is an example to illustrate this:

Imagine researchers are developing a new measure of job satisfaction. To assess its discriminant validity, they might choose to compare it with a measure of organizational commitment.

While these constructs are related, they are also distinct. Someone might be very committed to their organization but dissatisfied with their specific job due to factors like lack of autonomy or challenging work tasks.

2. Select Valid Measures:

3. Administer Measures and Collect Data:

4. Analyze Correlations:

5. Consider Theoretical Implications:

6. Examine Response Processes (If Feasible):

7. Beyond Correlations: The Evolving Landscape of Discriminant Validity

While correlations remain a key tool, the sources also highlight a shift in thinking about discriminant validity:

By embracing these evolving perspectives and employing a combination of statistical and theoretical reasoning, researchers can more effectively assess discriminant validity and enhance the quality and meaningfulness of their research findings.

What are the limitations of discriminant validity?

Reliance on Correlations

The primary method for assessing discriminant validity involves examining correlations between measures. However, correlations can be influenced by various factors, including:

Beyond Correlations: The Need for Theoretical Justification

Low correlations alone are not sufficient evidence for discriminant validity. Interpretation must always be grounded in a strong theoretical framework.

Addressing the Limitations of Discriminant Validity

By adopting a multifaceted approach to validity assessment, researchers can move beyond the limitations of relying solely on correlations and gain a more comprehensive understanding of the distinctiveness and meaningfulness of their constructs.

1. Go Beyond Simple Correlations: Embrace a Multifaceted Approach

2. Ground Interpretation in Strong Theory: Correlations Are Not Enough

3. Investigate Response Processes: Unveiling the “Black Box”

4. Address Construct Underrepresentation and Irrelevant Variance

5. Embrace the Evolving Nature of Constructs

Additional Considerations:

Reading List

Henseler, J., Ringle, C. M., & Sarstedt, M. (2015). A new criterion for assessing discriminant validity in
variance-based structural equation modeling. Journal of the Academy of Marketing Science, 43(1),
115-135. https://doi.org/10.1007/s11747-014-0403-8

Lucas, R. E., Diener, E., & Suh, E. (1996). Discriminant validity of well-being measures. Journal of Personality and Social Psychology, 71(3), 616-628. https://doi.org/10.1037/0022-3514.71.3.616

Mathieu, J. E., & Farr, J. L. (1991). Further evidence for the discriminant validity of measures of organizational commitment, job involvement, and job satisfaction. Journal of Applied Psychology, 76(1), 127-133. https://doi.org/10.1037/0021-9010.76.1.127

Reichardt, C. S., & Coleman, S. C. (1995). The criteria for convergent and discriminant validity in a multitraitmultimethod matrix. Multivariate Behavioral Research, 30(4), 513-538. https://doi.org/10.1207/s15327906mbr3004_3

Rönkkö, M., & Cho, E. (2022). An updated guideline for assessing discriminant validity. Organizational Research Methods, 25(1), 6-14.

Shaffer, J. A., DeGeest, D., & Li, A. (2016). Tackling the problem of construct proliferation: A guide to
assessing the discriminant validity of conceptually related constructs. Organizational Research Methods, 19(1), 80-110. https://doi.org/10.1177/1094428115598239