AI Article Synopsis

  • Stochastic actor based models, like those in the SIENA software, are increasingly used for longitudinal network data analysis, but the impact of missing network data remains underexplored.
  • Researchers analyzed data from four schools in the AddHealth dataset over three time points, examining different strategies for dealing with missing network data.
  • Findings show that while some model measures are stable across strategies, the conclusions drawn can vary significantly, highlighting the need for careful consideration of missing data handling in research.

Article Abstract

Although stochastic actor based models (e.g., as implemented in the SIENA software program) are growing in popularity as a technique for estimating longitudinal network data, a relatively understudied issue is the consequence of missing network data for longitudinal analysis. We explore this issue in our research note by utilizing data from four schools in an existing dataset (the AddHealth dataset) over three time points, assessing the substantive consequences of using four different strategies for addressing missing network data. The results indicate that whereas some measures in such models are estimated relatively robustly regardless of the strategy chosen for addressing missing network data, some of the substantive conclusions will differ based on the missing data strategy chosen. These results have important implications for this burgeoning applied research area, implying that researchers should more carefully consider how they address missing data when estimating such models.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4346092PMC
http://dx.doi.org/10.1016/j.socnet.2014.12.004DOI Listing

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