| Literature DB >> 25940350 |
Hannah E M Oosterhuis1, L Andries van der Ark2, Klaas Sijtsma3.
Abstract
Test norms enable determining the position of an individual test taker in the group. The most frequently used approach to obtain test norms is traditional norming. Regression-based norming may be more efficient than traditional norming and is rapidly growing in popularity, but little is known about its technical properties. A simulation study was conducted to compare the sample size requirements for traditional and regression-based norming by examining the 95% interpercentile ranges for percentile estimates as a function of sample size, norming method, size of covariate effects on the test score, test length, and number of answer categories in an item. Provided the assumptions of the linear regression model hold in the data, for a subdivision of the total group into eight equal-size subgroups, we found that regression-based norming requires samples 2.5 to 5.5 times smaller than traditional norming. Sample size requirements are presented for each norming method, test length, and number of answer categories. We emphasize that additional research is needed to establish sample size requirements when the assumptions of the linear regression model are violated.Keywords: minimum sample size requirements for norms; norm distribution of test scores; precise test norms; regression-based norming; traditional norming
Mesh:
Year: 2015 PMID: 25940350 DOI: 10.1177/1073191115580638
Source DB: PubMed Journal: Assessment ISSN: 1073-1911