Allison Paul D
Sociology Department, University of Pennsylvania, Philadelphia, PA 19104-6299, USA.
J Abnorm Psychol. 2003 Nov;112(4):545-57. doi: 10.1037/0021-843X.112.4.545.
As with other statistical methods, missing data often create major problems for the estimation of structural equation models (SEMs). Conventional methods such as listwise or pairwise deletion generally do a poor job of using all the available information. However, structural equation modelers are fortunate that many programs for estimating SEMs now have maximum likelihood methods for handling missing data in an optimal fashion. In addition to maximum likelihood, this article also discusses multiple imputation. This method has statistical properties that are almost as good as those for maximum likelihood and can be applied to a much wider array of models and estimation methods.
与其他统计方法一样,缺失数据常常给结构方程模型(SEM)的估计带来重大问题。诸如全列删除或成对删除等传统方法在利用所有可用信息方面通常效果不佳。然而,结构方程模型研究者很幸运,现在许多用于估计SEM的程序都有以最优方式处理缺失数据的最大似然法。除了最大似然法,本文还讨论了多重填补法。这种方法具有几乎与最大似然法一样好的统计特性,并且可以应用于更广泛的模型和估计方法。