KernSmoothIRT:项响应理论中核平滑的R包

A. Mazza, A. Punzo, Brian McGuire
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引用次数: 48

摘要

项目反应理论(IRT)模型是一类用于描述个体对具有一定数量选项的一组项目的反应行为的统计模型。它们被社会科学的研究人员所采用,特别是在分析表现或态度数据时,在心理学、教育、医学、营销和其他旨在测量潜在构念的领域。大多数IRT分析使用的参数模型依赖于通常不满足的假设。在这种情况下,非参数方法可能更可取;然而,没有多少软件应用程序允许使用它。为了解决这个问题,本文介绍了R包KernSmoothIRT。它实现了对选项特征曲线估计的核平滑,并增加了几个绘图和分析工具来评估整个测试/问卷、项目和受试者。为了展示软件包的功能,使用了两个真实的数据集,一个采用多项选择的回答,另一个采用缩放的回答。
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KernSmoothIRT: An R Package for Kernel Smoothing in Item Response Theory
Item response theory (IRT) models are a class of statistical models used to describe the response behaviors of individuals to a set of items having a certain number of options. They are adopted by researchers in social science, particularly in the analysis of performance or attitudinal data, in psychology, education, medicine, marketing and other fields where the aim is to measure latent constructs. Most IRT analyses use parametric models that rely on assumptions that often are not satisfied. In such cases, a nonparametric approach might be preferable; nevertheless, there are not many software applications allowing to use that. To address this gap, this paper presents the R package KernSmoothIRT. It implements kernel smoothing for the estimation of option characteristic curves, and adds several plotting and analytical tools to evaluate the whole test/questionnaire, the items, and the subjects. In order to show the package's capabilities, two real datasets are used, one employing multiple-choice responses, and the other scaled responses.
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