Köhler Carmen, Pohl Steffi, Carstensen Claus H
Otto-Friedrich University Bamberg, Bamberg, Germany.
Free University of Berlin, Berlin, Germany.
Educ Psychol Meas. 2015 Oct;75(5):850-874. doi: 10.1177/0013164414561785. Epub 2014 Dec 25.
When competence tests are administered, subjects frequently omit items. These missing responses pose a threat to correctly estimating the proficiency level. Newer model-based approaches aim to take nonignorable missing data processes into account by incorporating a latent missing propensity into the measurement model. Two assumptions are typically made when using these models: (1) The missing propensity is unidimensional and (2) the missing propensity and the ability are bivariate normally distributed. These assumptions may, however, be violated in real data sets and could, thus, pose a threat to the validity of this approach. The present study focuses on modeling competencies in various domains, using data from a school sample ( = 15,396) and an adult sample ( = 7,256) from the National Educational Panel Study. Our interest was to investigate whether violations of unidimensionality and the normal distribution assumption severely affect the performance of the model-based approach in terms of differences in ability estimates. We propose a model with a competence dimension, a unidimensional missing propensity and a distributional assumption more flexible than a multivariate normal. Using this model for ability estimation results in different ability estimates compared with a model ignoring missing responses. Implications for ability estimation in large-scale assessments are discussed.
在进行能力测试时,受试者经常会遗漏题目。这些缺失的回答对正确估计熟练程度构成了威胁。较新的基于模型的方法旨在通过将潜在的缺失倾向纳入测量模型来考虑不可忽视的缺失数据过程。使用这些模型时通常会做出两个假设:(1)缺失倾向是单维的;(2)缺失倾向和能力呈二元正态分布。然而,在实际数据集中这些假设可能会被违反,因此可能会对这种方法的有效性构成威胁。本研究使用来自国家教育面板研究的一个学校样本((n = 15396))和一个成人样本((n = 7256)),专注于对各个领域的能力进行建模。我们感兴趣的是调查违反单维性和正态分布假设是否会在能力估计差异方面严重影响基于模型的方法的性能。我们提出了一个具有能力维度、单维缺失倾向和比多元正态分布更灵活的分布假设的模型。与忽略缺失回答的模型相比,使用这个模型进行能力估计会得到不同的能力估计结果。文中还讨论了对大规模评估中能力估计的影响。