A Primer on Maximum Likelihood Algorithms Available for Use With Missing Data
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- 1 January 2001
- journal article
- Published by Taylor & Francis in Structural Equation Modeling: A Multidisciplinary Journal
- Vol. 8 (1), 128-141
- https://doi.org/10.1207/s15328007sem0801_7
Abstract
Maximum likelihood algorithms for use with missing data are becoming commonplace in microcomputer packages. Specifically, 3 maximum likelihood algorithms are currently available in existing software packages: the multiple-group approach, full information maximum likelihood estimation, and the EM algorithm. Although they belong to the same family of estimator, confusion appears to exist over the differences among the 3 algorithms. This article provides a comprehensive, nontechnical overview of the 3 maximum likelihood algorithms. Multiple imputation, which is frequently used in conjunction with the EM algorithm, is also discussed.Keywords
This publication has 14 references indexed in Scilit:
- Multiple Imputation for Multivariate Missing-Data Problems: A Data Analyst's PerspectiveMultivariate Behavioral Research, 1998
- A comparison of model‐ and multiple imputation‐based approaches to longitudinal analyses with partial missingnessStructural Equation Modeling: A Multidisciplinary Journal, 1998
- MISSING DATA: A CONCEPTUAL REVIEW FOR APPLIED PSYCHOLOGISTSPersonnel Psychology, 1994
- On structural equation modeling with data that are not missing completely at randomPsychometrika, 1987
- Estimation of Linear Models with Incomplete DataSociological Methodology, 1987
- Nonparametric estimates of standard error: The jackknife, the bootstrap and other methodsBiometrika, 1981
- Estimation for the multiple factor model when data are missingPsychometrika, 1979
- The Treatment of Missing Data in Multivariate AnalysisSociological Methods & Research, 1977
- Inference and missing dataBiometrika, 1976
- The Analysis of Incomplete DataPublished by JSTOR ,1971