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首页> 外文期刊>Psychometrika >Bootstrap-Calibrated Interval Estimates for Latent Variable Scores in Item Response Theory
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Bootstrap-Calibrated Interval Estimates for Latent Variable Scores in Item Response Theory

机译:Bootstrap-校准的间隔估计项目响应理论中的潜在变量分数

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In most item response theory applications, model parameters need to be first calibrated from sample data. Latent variable (LV) scores calculated using estimated parameters are thus subject to sampling error inherited from the calibration stage. In this article, we propose a resampling-based method, namely bootstrap calibration (BC), to reduce the impact of the carryover sampling error on the interval estimates of LV scores. BC modifies the quantile of the plug-in posterior, i.e., the posterior distribution of the LV evaluated at the estimated model parameters, to better match the corresponding quantile of the true posterior, i.e., the posterior distribution evaluated at the true model parameters, over repeated sampling of calibration data. Furthermore, to achieve better coverage of the fixed true LV score, we explore the use of BC in conjunction with Jeffreys' prior. We investigate the finite-sample performance of BC via Monte Carlo simulations and apply it to two empirical data examples.
机译:在大多数项目响应理论应用中,需要首先从样本数据校准模型参数。因此,使用估计参数计算的潜在变量(LV)分数因此受到从校准阶段继承的采样误差。在本文中,我们提出了一种基于重采样的方法,即引导校准(BC),以减少对LV分数间隔估计的即可采样误差的影响。 BC修改了在估计的模型参数上评估的LV的分量,即在估计的模型参数中评价的LV的后部分布,以更好地匹配真正的后后部,即在真正的模型参数上评估的后部分布。重复校准数据采样。此外,为了更好地覆盖固定的真实LV评分,我们探讨了BC与Jeffreys'之前的使用。我们通过Monte Carlo仿真调查BC的有限样本性能,并将其应用于两个经验数据示例。

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