Department of Psychology, The Ohio State University.
Vector Psychometric Group, LLC.
Psychol Methods. 2018 Mar;23(1):138-149. doi: 10.1037/met0000121. Epub 2017 Apr 3.
Item response theory (IRT) is a widely used measurement model. When considering its use in education, health outcomes, and psychology, it is likely to be one of the most impactful psychometric models in existence. IRT has many advantages over classical test theory-based measurement models. For these advantages to hold in practice, strong assumptions must be satisfied. One of these assumptions, local independence, is the focus of the work described here. Local independence is the assumption that, conditional on the latent variable(s), item responses are unrelated to one another (i.e., independent). Stated another way, local independence implies that the only thing causing items to covary is the modeled latent variable(s). Violations of this assumption, quite aptly titled local dependence, can have serious consequences for the estimated parameters. A new diagnostic is proposed, based on parameter stability in an item-level jackknife resampling procedure. We review the ideas underlying the new diagnostic and how it is computed before covering some simulated and real examples demonstrating its effectiveness. (PsycINFO Database Record
项目反应理论 (IRT) 是一种广泛使用的测量模型。在考虑将其应用于教育、健康结果和心理学领域时,它很可能是目前最具影响力的心理测量模型之一。IRT 相对于基于经典测试理论的测量模型具有许多优势。为了在实践中保持这些优势,必须满足强有力的假设。这些假设之一是局部独立性,这是本文描述的工作的重点。局部独立性是指,在潜在变量的条件下,项目反应彼此之间没有关系(即独立)。换句话说,局部独立性意味着导致项目共变的唯一因素是所建模的潜在变量。违反这个假设,即所谓的局部依赖,可以对估计参数产生严重后果。我们提出了一种新的诊断方法,该方法基于项目级刀切重抽样过程中的参数稳定性。在介绍新诊断的基本原理和计算方法之前,我们将介绍一些模拟和真实示例,以展示其有效性。(PsycINFO 数据库记录