贝叶斯高斯分布回归模型更有效的范数估计

Lieke Voncken, T. Kneib, C. Albers, Nikolaus Umlauf, M. Timmerman
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引用次数: 5

摘要

心理测试的测试分数通常表示为规范分数,代表其相对于参考人群中的测试分数的位置。这些通常取决于预测因素,比如年龄。使用回归估计基于预测因子的测试分数分布,这可能需要大量的规范样本来正确估计预测因子与分布特征之间的关系。在本研究中,我们研究了在贝叶斯高斯分布回归估计新规范时使用先验信息可以在多大程度上减轻这种负担。在模拟研究中,我们研究了这种范数估计在多大程度上更有效,以及它对先前模型偏差的鲁棒性。我们改变了先前的类型,先前的错配和样本量。在我们的模拟条件下,只要先前的错误规范不依赖于年龄,使用固定效应先验比弱信息先验产生更有效的规范估计。利用所提出的方法和合理的先验信息,至少在与我们模拟条件相似的经验问题中,可以用更小的规范样本获得相同的规范精度。这可以帮助测试开发人员达到低成本、高质量的标准。该方法是用来自IDS‐2智力测验的经验规范数据来说明的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Gaussian distributional regression models for more efficient norm estimation
A test score on a psychological test is usually expressed as a normed score, representing its position relative to test scores in a reference population. These typically depend on predictor(s) such as age. The test score distribution conditional on predictors is estimated using regression, which may need large normative samples to estimate the relationships between the predictor(s) and the distribution characteristics properly. In this study, we examine to what extent this burden can be alleviated by using prior information in the estimation of new norms with Bayesian Gaussian distributional regression. In a simulation study, we investigate to what extent this norm estimation is more efficient and how robust it is to prior model deviations. We varied the prior type, prior misspecification and sample size. In our simulated conditions, using a fixed effects prior resulted in more efficient norm estimation than a weakly informative prior as long as the prior misspecification was not age dependent. With the proposed method and reasonable prior information, the same norm precision can be achieved with a smaller normative sample, at least in empirical problems similar to our simulated conditions. This may help test developers to achieve cost‐efficient high‐quality norms. The method is illustrated using empirical normative data from the IDS‐2 intelligence test.
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