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A two-step, test-guided Mokken scale analysis, for nonclustered and clustered data
- Source :
- Quality of Life Research, Quality of Life Research, 31(1), 25-36. Springer
- Publication Year :
- 2022
- Publisher :
- Springer, 2022.
-
Abstract
- Purpose Mokken scale analysis (MSA) is an attractive scaling procedure for ordinal data. MSA is frequently used in health-related quality of life research. Two of MSA's prime features are the scalability coefficients and the automated item selection procedure (AISP). The AISP partitions a (large) set of items into scales based on the observed item scores; the resulting scales can be used as measurement instruments. There exist two issues in MSA: First, point estimates, standard errors, and test statistics for scalability coefficients are inappropriate for clustered item scores, which are omnipresent in quality of life research data. Second, the AISP insufficiently takes sampling fluctuation of Mokken’s scalability coefficients into account. Methods We solved both issues by providing point estimates and standard errors for the scalability coefficients for clustered data and by implementing a Wald-based significance test in the AISP algorithm, resulting in a test-guided AISP (T-AISP), that is available for both nonclustered and clustered test scores. Results We integrated the T-AISP into a two-step, test-guided MSA for scale construction, to guide the analysis for nonclustered and clustered data. The first step is performing a T-AISP and select the final scale( s ). For clustered data, within-group dependency is investigated on the final scale(s). In the second step, the strength of the scale(s) is determined and further analyses are performed. The procedure was demonstrated on clustered item scores obtained from administering a questionnaire on quality of life in schools to 639 students nested in 30 classrooms. Conclusions We developed a two-step, test-guided MSA for scale construction that takes into account sample fluctuation of all scalability coefficients and that can be applied to item scores obtained by a nonclustered or clustered sampling design.
- Subjects :
- Ordinal data
Automated item selection procedure
Psychometrics
Scale (ratio)
Computer science
Mokken scale
computer.software_genre
Mokken scale analysis
01 natural sciences
Test-guided automated item selection procedure
010104 statistics & probability
0504 sociology
Surveys and Questionnaires
Humans
Point estimation
0101 mathematics
Statistical hypothesis testing
05 social sciences
Public Health, Environmental and Occupational Health
Reproducibility of Results
050401 social sciences methods
Sampling (statistics)
Research Design
Special Section: Non-parametric IRT
Scalability
Quality of Life
Clustered data analysis
Cluster sampling
Data mining
computer
Algorithms
Subjects
Details
- Language :
- English
- ISSN :
- 15732649 and 09629343
- Volume :
- 31
- Issue :
- 1
- Database :
- OpenAIRE
- Journal :
- Quality of Life Research
- Accession number :
- edsair.doi.dedup.....ab0c44357bdfd883be398941da689790