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Handling Missing Data in the Modeling of Intensive Longitudinal Data.
Ji, Linying; Chow, Sy-Miin; Schermerhorn, Alice C; Jacobson, Nicholas C; Cummings, E Mark.
Affiliation
  • Ji L; The Pennsylvania State University.
  • Chow SM; The Pennsylvania State University.
  • Schermerhorn AC; The University of Vermont.
  • Jacobson NC; The Pennsylvania State University.
  • Cummings EM; The University of Notre Dame.
Struct Equ Modeling ; 25(5): 715-736, 2018.
Article in En | MEDLINE | ID: mdl-31303745
Myriad approaches for handling missing data exist in the literature. However, few studies have investigated the tenability and utility of these approaches when used with intensive longitudinal data. In this study, we compare and illustrate two multiple imputation (MI) approaches for coping with missingness in fitting multivariate time-series models under different missing data mechanisms. They include a full MI approach, in which all dependent variables and covariates are imputed simultaneously, and a partial MI approach, in which missing covariates are imputed with MI, whereas missingness in the dependent variables is handled via full information maximum likelihood estimation. We found that under correctly specified models, partial MI produces the best overall estimation results. We discuss the strengths and limitations of the two MI approaches, and demonstrate their use with an empirical data set in which children's influences on parental conflicts are modeled as covariates over the course of 15 days (Schermerhorn, Chow, & Cummings, 2010).
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Prognostic_studies Language: En Journal: Struct Equ Modeling Year: 2018 Document type: Article Country of publication: United States

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Prognostic_studies Language: En Journal: Struct Equ Modeling Year: 2018 Document type: Article Country of publication: United States