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dynr.mi: An R Program for Multiple Imputation in Dynamic Modeling. | LitMetric

dynr.mi: An R Program for Multiple Imputation in Dynamic Modeling.

World Acad Sci Eng Technol

Department of Human Development and Family Studies, The Pennsylvania State University, University Park, PA 16802 USA.

Published: January 2019

Assessing several individuals intensively over time yields intensive longitudinal data (ILD). Even though ILD provide rich information, they also bring other data analytic challenges. One of these is the increased occurrence of missingness with increased study length, possibly under non-ignorable missingness scenarios. Multiple imputation (MI) handles missing data by creating several imputed data sets, and pooling the estimation results across imputed data sets to yield final estimates for inferential purposes. In this article, we introduce dynr.mi(), a function in the package, (). The package provides a suite of fast and accessible functions for estimating and visualizing the results from fitting linear and nonlinear dynamic systems models in discrete as well as continuous time. By integrating the estimation functions in and the MI procedures available from the package, (), the dynr.mi() routine is designed to handle possibly non-ignorable missingness in the dependent variables and/or covariates in a user-specified dynamic systems model via MI, with convergence diagnostic check. We utilized dynr.mi() to examine, in the context of a vector autoregressive model, the relationships among individuals' ambulatory physiological measures, and self-report affect valence and arousal. The results from MI were compared to those from listwise deletion of entries with missingness in the covariates. When we determined the number of iterations based on the convergence diagnostics available from dynr.mi(), differences in the statistical significance of the covariate parameters were observed between the listwise deletion and MI approaches. These results underscore the importance of considering diagnostic information in the implementation of MI procedures.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6702040PMC
http://dx.doi.org/10.5281/zenodo.3298841DOI Listing

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