Wiley James A, Martin John Levi, Herschkorn Stephen J, Bond Jason
Department of Family and Community Medicine and Institute for Health Policy Studies, School of Medicine, University of California San Francisco, San Francisco, California, United States of America.
Sociology Department, University of Chicago, Chicago, Illinois, United States of America.
PLoS One. 2015 Nov 6;10(11):e0141981. doi: 10.1371/journal.pone.0141981. eCollection 2015.
We put forward a new item response model which is an extension of the binomial error model first introduced by Keats and Lord. Like the binomial error model, the basic latent variable can be interpreted as a probability of responding in a certain way to an arbitrarily specified item. For a set of dichotomous items, this model gives predictions that are similar to other single parameter IRT models (such as the Rasch model) but has certain advantages in more complex cases. The first is that in specifying a flexible two-parameter Beta distribution for the latent variable, it is easy to formulate models for randomized experiments in which there is no reason to believe that either the latent variable or its distribution vary over randomly composed experimental groups. Second, the elementary response function is such that extensions to more complex cases (e.g., polychotomous responses, unfolding scales) are straightforward. Third, the probability metric of the latent trait allows tractable extensions to cover a wide variety of stochastic response processes.
我们提出了一种新的项目反应模型,它是对由济慈和洛德首次提出的二项误差模型的扩展。与二项误差模型一样,基本潜在变量可以解释为以某种方式对任意指定项目做出反应的概率。对于一组二分项目,该模型给出的预测与其他单参数IRT模型(如拉施模型)相似,但在更复杂的情况下具有一定优势。首先,在为潜在变量指定灵活的双参数贝塔分布时,很容易为随机实验制定模型,在这种实验中,没有理由相信潜在变量或其分布会在随机组成的实验组中发生变化。其次,基本反应函数使得扩展到更复杂的情况(如多分类反应、展开量表)很直接。第三,潜在特质的概率度量允许进行易于处理的扩展,以涵盖各种随机反应过程。