Hi!
I want to use multi-level logistic regression as I have data on both the individual level and country level and a binary dependent variable.
My independent, dependent , and moderating variables have no missing variables, but my control variables on both individual and country level do have missing variables.
Since the country controls are missing due to merging with other databases, I figured I could conclude that these are missing completely at random. Therefore, I want to use a binary indicating whether the variable is missing and include this in the analysis.
However, the individual level controls are not MCAR. I read that this means that deleting these observations or using a binary indicating missing creates bias. Does anyone know how to deal with these missing variables?
Kind regards,
Mara
I want to use multi-level logistic regression as I have data on both the individual level and country level and a binary dependent variable.
My independent, dependent , and moderating variables have no missing variables, but my control variables on both individual and country level do have missing variables.
Since the country controls are missing due to merging with other databases, I figured I could conclude that these are missing completely at random. Therefore, I want to use a binary indicating whether the variable is missing and include this in the analysis.
However, the individual level controls are not MCAR. I read that this means that deleting these observations or using a binary indicating missing creates bias. Does anyone know how to deal with these missing variables?
Kind regards,
Mara
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