Dear all,
I have a panel data with missing values. There are different reasons for missingness.
One particular reason is because some participants were contacted only since the 2nd, 3rd or a later wave, so they were unaware of the survey in the earlier waves.
While some participants that joined the survey in one wave would drop out after a few waves or skip one or two waves before coming back in later waves.
I want to use multiple imputation for those that participated in the first waves then dropped out or skipped some later waves.
My question: What should I do with missing values for participants that joined only in later waves because they were contacted only then. I believe these should be considered as MCAR. Is it really possible to do imputation under such condition? or should I just impute all missing values no matter the reason for missingness?
Best
I have a panel data with missing values. There are different reasons for missingness.
One particular reason is because some participants were contacted only since the 2nd, 3rd or a later wave, so they were unaware of the survey in the earlier waves.
While some participants that joined the survey in one wave would drop out after a few waves or skip one or two waves before coming back in later waves.
I want to use multiple imputation for those that participated in the first waves then dropped out or skipped some later waves.
My question: What should I do with missing values for participants that joined only in later waves because they were contacted only then. I believe these should be considered as MCAR. Is it really possible to do imputation under such condition? or should I just impute all missing values no matter the reason for missingness?
Best
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