缺少数据
统计
结构方程建模
数学
计量经济学
蒙特卡罗方法
限制最大似然
样本量测定
估计理论
标准误差
估计员
期望最大化算法
最大似然
潜变量
随机效应模型
协变量
估计
似然函数
广义估计方程
潜在类模型
置信区间
广义线性模型
出处
期刊:Psychological Methods
[American Psychological Association]
日期:2001-12-01
卷期号:6 (4): 352-370
被引量:540
标识
DOI:10.1037/1082-989x.6.4.352
摘要
A Monte Carlo simulation examined full information maximum-likelihood estimation (FIML) in structural equation models with nonnormal indicator variables. The impacts of 4 independent variables were examined (missing data algorithm, missing data rate, sample size, and distribution shape) on 4 outcome measures (parameter estimate bias, parameter estimate efficiency, standard error coverage, and model rejection rates). Across missing completely at random and missing at random patterns, FIML parameter estimates involved less bias and were generally more efficient than those of ad hoc missing data techniques. However, similar to complete-data maximum-likelihood estimation in structural equation modeling, standard errors were negatively biased and model rejection rates were inflated. Simulation results suggest that recently developed correctives for missing data (e.g., rescaled statistics and the bootstrap) can mitigate problems that stem from nonnormal data.
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