插补(统计学)
缺少数据
贝叶斯概率
期望最大化算法
计算机科学
吉布斯抽样
最大似然
统计
蒙特卡罗方法
边际似然
最大化
数学
数学优化
作者
Dong-Young Lee,Jeffrey R. Harring
标识
DOI:10.3102/10769986221149140
摘要
A Monte Carlo simulation was performed to compare methods for handling missing data in growth mixture models. The methods considered in the current study were (a) a fully Bayesian approach using a Gibbs sampler, (b) full information maximum likelihood using the expectation–maximization algorithm, (c) multiple imputation, (d) a two-stage multiple imputation method, and (e) listwise deletion. Of the five methods, it was found that the Bayesian approach and two-stage multiple imputation methods generally produce less biased parameter estimates compared to maximum likelihood or single imputation methods, although key differences were observed. Similarities and disparities among methods are highlighted and general recommendations articulated.
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