Sheng Yanyan
Department of Counseling, Quantitative Methods and Special Education, Southern Illinois University Carbondale, IL, USA.
Front Psychol. 2017 Feb 6;8:123. doi: 10.3389/fpsyg.2017.00123. eCollection 2017.
The half- family has been suggested for the scale hyperparameter in Bayesian hierarchical modeling. Two parameters define a half- distribution: the scale and the degree-of-freedom ν. When is set at a finite value that is slightly larger than the actual standard deviation of the parameters, the half- prior density can be vaguely informative. This paper focused on such densities, and applied them to the hierarchical three-parameter item response theory (IRT) model. Monte Carlo simulations were carried out to investigate the performance of such specifications in parameter recovery and model comparisons under situations where the actual variability of item parameters varied, and results suggest that the half- family does offer advantages over the commonly adopted uniform or inverse-gamma prior density by allowing the variability for item parameters to be either very small or large. A real data example is also provided to further illustrate this.
在贝叶斯层次模型中,半分布已被提议用于尺度超参数。两个参数定义了一个半分布:尺度和自由度ν。当尺度设置为略大于参数实际标准差的有限值时,半先验密度可以提供模糊的信息。本文聚焦于此类密度,并将其应用于层次三参数项目反应理论(IRT)模型。进行了蒙特卡罗模拟,以研究在项目参数实际变异性不同的情况下,此类设定在参数恢复和模型比较方面的性能,结果表明,半分布族通过允许项目参数的变异性非常小或非常大,确实比常用的均匀或逆伽马先验密度具有优势。还提供了一个实际数据示例以进一步说明这一点。