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Assessing goodness of fit in item response theory with nonparametric models: A comparison of posterior probabilities and kernel-smoothing approaches

机译:使用非参数模型评估项目响应理论的拟合优度:后验概率和核平滑方法的比较

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摘要

The distance between nonparametric and parametric item characteristic curves has been proposed as an index of goodness of fit in item response theory in the form of a root integrated squared error index.This article proposes to use the posterior distribution of the latent trait as the nonparametric model and compares the performance of an index based on this method with another approach based on the kernel-smoothing model.Error rates and power are evaluated using the two-parameter logistic model and three types of realistic misfitted items.Results show that for fitting items, the distance between parametric and nonparametric item characteristic curves decreased as the sample size increased for both procedures.Kernel-smoothing root integrated squared error also decreased as test length increased.Bootstrap methods are used to obtain a significance test.Both procedures performed adequately in terms of Type I error rates.Regarding power, the posterior probabilities method was superior, especially in small samples, although in short tests both procedures performed in a similar way.
机译:非参数项和参数项特征曲线之间的距离已被提出来作为项响应理论中拟合优度的指标,采用根综合平方误差指数的形式。本文建议使用潜伏性的后验分布作为非参数模型并将该方法的索引性能与另一种基于核平滑模型的方法进行比较。使用两参数对数模型和三种类型的实际不匹配项评估错误率和功效。结果表明,对于适合项,两种方法的参数大小和非参数项特征曲线之间的距离均随着样本量的增加而减小,核光滑的根积分平方误差也随着测试长度的增加而减小,采用Bootstrap方法进行显着性检验。 I型错误率。关于功效,后验概率方法特别好,尤其是尤其是在小样本中,尽管在简短的测试中,两种方法都以类似的方式执行。

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