Literature DB >> 26801456

Maximizing the Usefulness of Data Obtained with Planned Missing Value Patterns: An Application of Maximum Likelihood Procedures.

J W Graham, S M Hofer, D P MacKinnon.   

Abstract

Researchers often face a dilemma: Should they collect little data and emphasize quality, or much data at the expense of quality? The utility of the 3-form design coupled with maximum likelihood methods for estimation of missing values was evaluated. In 3-form design surveys, four sets of items. X, A, B, and C are administered: Each third of the subjects receives X and one combination of two other item sets - AB, BC, or AC. Variances and covariances were estimated with pairwise deletion, mean replacement, single imputation, multiple imputation, raw data maximum likelihood, multiple-group covariance structure modeling, and Expectation-Maximization (EM) algorithm estimation. The simulation demonstrated that maximum likelihood estimation and multiple imputation methods produce the most efficient and least biased estimates of variances and covariances for normally distributed and slightly skewed data when data are missing completely at random (MCAR). Pairwise deletion provided equally unbiased estimates but was less efficient than ML procedures. Further simulation results demonstrated that nun-maximum likelihood methods break down when data are not missing completely at random. Application of these methods with empirical drug use data resulted in similar covariance matrices for pairwise and EM estimation, however, ML estimation produced better and more efficient regression estimates. Maximum likelihood estimation or multiple imputation procedures. which are now becoming more readily available, are always recommended. In order to maximize the efficiency of the ML parameter estimates, it is recommended that scale items be split across forms rather than being left intact within forms.

Year:  1996        PMID: 26801456     DOI: 10.1207/s15327906mbr3102_3

Source DB:  PubMed          Journal:  Multivariate Behav Res        ISSN: 0027-3171            Impact factor:   5.923


  32 in total

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4.  Why missing data matter in the longitudinal study of adolescent development: using the 4-H Study to understand the uses of different missing data methods.

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5.  Missing data imputation in quality-of-life assessment: imputation for WHOQOL-BREF.

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Review 6.  Advances in statistical methods for substance abuse prevention research.

Authors:  David P MacKinnon; Chondra M Lockwood
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8.  V. DESIGN-BASED APPROACHES FOR IMPROVING MEASUREMENT IN DEVELOPMENTAL SCIENCE.

Authors:  Jonathan Rush; Scott M Hofer
Journal:  Monogr Soc Res Child Dev       Date:  2017-06

9.  Mexican/Mexican American Adolescents and keepin' it REAL: An Evidence-Based Substance Use Prevention Program.

Authors:  Stephen Kulis; Flavio F Marsiglia; Elvira Elek; Patricia Dustman; David A Wagstaff; Michael L Hecht
Journal:  Child Sch       Date:  2005-07-01

10.  Optimizing efficiency of psychopathology assessment through quantitative modeling: development of a brief form of the Externalizing Spectrum Inventory.

Authors:  Christopher J Patrick; Mark D Kramer; Robert F Krueger; Kristian E Markon
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