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概化理论两侧面设计方差分量及其变异量估计方法比较
引用本文:黎光明,王幸君,潘语熙.概化理论两侧面设计方差分量及其变异量估计方法比较[J].统计与决策,2022(3).
作者姓名:黎光明  王幸君  潘语熙
作者单位:华南师范大学心理学院;华南师范大学心理应用研究中心
基金项目:广东省自然科学基金面上项目(2021A1515012516)。
摘    要:文章针对正态分布数据,对比Traditional方法、Bootstrap方法和MCMC方法在两侧面交叉设计(p×i×h)和两侧面嵌套设计(p×(i:h))下各个方差分量的估计精度,为实际应用提供参考。使用R软件模拟1000批数据,并在R软件上实现三种方法的方差分量及其变异量估计。结果表明:(1)相较于Traditional方法和MCMC方法,相同条件下,Bootstrap方法估计的方差分量及其变异量结果更为理想;(2)对于两侧面交叉设计和两侧面嵌套设计,在正态分布数据下,建议优先使用Bootstrap方法。

关 键 词:概化理论  方差分量估计  方差分量变异量估计  BOOTSTRAP方法  MCMC方法

Comparison of Methods for Estimating Variance Components and Their Variabilities in Generalizability Theory Based on Two-facet Designs
Authors:Li Guangming  Wang Xingjun  Pan Yuxi
Institution:(School of Psychology,South China Normal University,Guangzhou 510631,China;Center for Studies of Psychological Application,South China Normal University,Guangzhou 510631,China)
Abstract:Aiming at normal distribution data, this paper compares the estimation accuracy of each variance component of Traditional method, Bootstrap method and MCMC method under two-facet cross design(p × i × h) and two-facet nested design( p ×(i:h)), which provides a reference for practical application. R software is used to simulate 1000 batches of data, and the variance component and variance estimation of the three methods are realized on R software. The results are as follows:(1) Compared with Traditional method and MCMC method, the results of variance component and variation estimated by Bootstrap method are more ideal under the same conditions;(2) The Bootstrap method is recommended to be used in the case of normally distributed data for the two-facet cross design and two-facet nested design.
Keywords:generalizability theory  variance component estimation  estimation of variabilities of variance components  Bootstrap method  MCMC method
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