Department of Methodology and Statistics, Faculty of Social Sciences, Tilburg University, PO Box 90153, 5000 LE, Tilburg, The Netherlands.
ACTNext, Iowa City, USA.
Psychometrika. 2019 Sep;84(3):846-869. doi: 10.1007/s11336-019-09661-w. Epub 2019 Feb 21.
The assumption of latent monotonicity is made by all common parametric and nonparametric polytomous item response theory models and is crucial for establishing an ordinal level of measurement of the item score. Three forms of latent monotonicity can be distinguished: monotonicity of the cumulative probabilities, of the continuation ratios, and of the adjacent-category ratios. Observable consequences of these different forms of latent monotonicity are derived, and Bayes factor methods for testing these consequences are proposed. These methods allow for the quantification of the evidence both in favor and against the tested property. Both item-level and category-level Bayes factors are considered, and their performance is evaluated using a simulation study. The methods are applied to an empirical example consisting of a 10-item Likert scale to investigate whether a polytomous item scoring rule results in item scores that are of ordinal level measurement.
潜在单调性的假设是所有常见的参数和非参数多项项目反应理论模型所做的假设,对于建立项目得分的有序测量水平至关重要。可以区分三种形式的潜在单调性:累积概率的单调性、连续比的单调性和相邻类别比的单调性。推导出这些不同形式的潜在单调性的可观察后果,并提出了用于检验这些后果的贝叶斯因子方法。这些方法允许对支持和反对测试属性的证据进行量化。同时考虑了项目级和类别级贝叶斯因子,并使用模拟研究评估它们的性能。该方法应用于一个由 10 个项目组成的李克特量表的实证示例,以调查多项项目评分规则是否导致项目得分具有有序测量水平。