Imputing Missing values in Relational Event History data: A Framework for Social Network Research
Summary
[""Missing data can have significant effects on reliability of results and lead to incorrect
conclusions. This study examines the effectiveness of multiple imputation in relational event
history data. The study compares the estimates of a relational event model of the complete data
with a 100 simulations where missing data was generated using the assumption that the data is
missing completely at random (MCAR). It was found that, overall, the imputation method gave
accurate estimates. However, the significance of the estimations changed from being not
significant to significant. This change in significance should be taken into consideration when
interpreting results after imputation."]