寻找二元问卷的原型模式

Ismael Cabero, I. Epifanio
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引用次数: 8

摘要

原型分析是一种探索性工具,它将一组观察结果解释为纯(极端)模式的混合物。如果图案是对样品的实际观察,我们称它们为原型。我们首次提出对二元观测使用类原型分析。此工具有助于理解二进制数据集,如在多变量情况下。我们在模拟研究和两个应用中说明了所提出方法的优点,一个探索对象(行),另一个探索项目(列)。一个与确定学生技能集概况有关,另一个与描述项目响应函数有关。
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Finding archetypal patterns for binary questionnaires
Archetypal analysis is an exploratory tool that explains a set of observations as mixtures of pure (extreme) patterns. If the patterns are actual observations of the sample, we refer to them as archetypoids. For the first time, we propose to use archetypoid analysis for binary observations. This tool can contribute to the understanding of a binary data set, as in the multivariate case. We illustrate the advantages of the proposed methodology in a simulation study and two applications, one exploring objects (rows) and the other exploring items (columns). One is related to determining student skill set profiles and the other to describing item response functions.
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