König Christoph, Spoden Christian, Frey Andreas
Goethe University Frankfurt, Germany.
German Institute for Adult Education-Leibniz Centre for Lifelong Learning, Bonn, Germany.
Appl Psychol Meas. 2020 Jun;44(4):311-326. doi: 10.1177/0146621619893786. Epub 2019 Dec 21.
Accurate item calibration in models of item response theory (IRT) requires rather large samples. For instance, respondents are typically recommended for the two-parameter logistic (2PL) model. Hence, this model is considered a large-scale application, and its use in small-sample contexts is limited. Hierarchical Bayesian approaches are frequently proposed to reduce the sample size requirements of the 2PL. This study compared the small-sample performance of an optimized Bayesian hierarchical 2PL (H2PL) model to its standard inverse Wishart specification, its nonhierarchical counterpart, and both unweighted and weighted least squares estimators (ULSMV and WLSMV) in terms of sampling efficiency and accuracy of estimation of the item parameters and their variance components. To alleviate shortcomings of hierarchical models, the optimized H2PL (a) was reparametrized to simplify the sampling process, (b) a strategy was used to separate item parameter covariances and their variance components, and (c) the variance components were given Cauchy and exponential hyperprior distributions. Results show that when combining these elements in the optimized H2PL, accurate item parameter estimates and trait scores are obtained even in sample sizes as small as . This indicates that the 2PL can also be applied to smaller sample sizes encountered in practice. The results of this study are discussed in the context of a recently proposed multiple imputation method to account for item calibration error in trait estimation.
项目反应理论(IRT)模型中的准确项目校准需要相当大的样本量。例如,对于两参数逻辑斯蒂(2PL)模型,通常建议有大量受访者。因此,该模型被视为一种大规模应用,其在小样本情况下的使用受到限制。人们经常提出分层贝叶斯方法来减少2PL对样本量的要求。本研究比较了优化的贝叶斯分层2PL(H2PL)模型与其标准逆威沙特规范、非分层对应模型以及未加权和加权最小二乘估计器(ULSMV和WLSMV)在小样本情况下的抽样效率以及项目参数及其方差成分估计的准确性。为了缓解分层模型的缺点,优化的H2PL:(a)重新进行参数化以简化抽样过程;(b)采用一种策略来分离项目参数协方差及其方差成分;(c)对方差成分赋予柯西和指数超先验分布。结果表明,在优化的H2PL中结合这些要素时,即使在样本量小至 的情况下也能获得准确的项目参数估计和特质分数。这表明2PL也可应用于实际中遇到的较小样本量。本研究结果在最近提出的一种多重填补方法的背景下进行了讨论,该方法用于在特质估计中考虑项目校准误差。