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Lord-Wingersky Algorithm Version 2.0 for Hierarchical Item Factor Models with Applications in Test Scoring Scale Alignment and Model Fit Testing

机译:用于分层项目因子模型的Lord-Wingersky算法2.0版及其在测试计分规模比对和模型拟合测试中的应用

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摘要

recursive algorithm for creating summed score based likelihoods and posteriors has a proven track record in unidimensional item response theory (IRT) applications. Extending the recursive algorithm to handle multidimensionality is relatively simple, especially with fixed quadrature because the recursions can be defined on a grid formed by direct products of quadrature points. However, the increase in computational burden remains exponential in the number of dimensions, making the implementation of the recursive algorithm cumbersome for truly high dimensional models. In this paper, a dimension reduction method that is specific to the Lord-Wingersky recursions is developed. This method can take advantage of the restrictions implied by hierarchical item factor models, e.g., the bifactor model, the testlet model, or the two-tier model, such that a version of the Lord-Wingersky recursive algorithm can operate on a dramatically reduced set of quadrature points. For instance, in a bifactor model, the dimension of integration is always equal to 2, regardless of the number of factors. The new algorithm not only provides an effective mechanism to produce summed score to IRT scaled score translation tables properly adjusted for residual dependence, but leads to new applications in test scoring, linking, and model fit checking as well. Simulated and empirical examples are used to illustrate the new applications.
机译:用于创建基于总分的似然和后验的递归算法在一维项目响应理论(IRT)应用中具有良好的记录。扩展递归算法以处理多维性相对简单,尤其是在固定正交的情况下,因为可以在由正交点的直接积形成的网格上定义递归。但是,计算负担的增加在维数上仍然是指数级的,因此对于真正的高维模型而言,递归算法的实现变得麻烦。本文提出了一种针对Lord-Wingersky递归的降维方法。该方法可以利用分层项目因子模型(例如,双因子模型,testlet模型或两层模型)所隐含的限制,从而使Lord-Wingersky递归算法的版本可以在极大简化的集合上运行正交点例如,在双因素模型中,积分的维度始终等于2,而不考虑因素的数量。新算法不仅提供了一种有效的机制,可以为针对残差依赖性进行适当调整的IRT缩放分数转换表生成总分数,而且还可以在测试评分,链接和模型拟合检查中获得新的应用。仿真和经验示例用于说明新应用。

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