Hi everyone,
1) My research question is to look at the casual impact of maternal employment on the probability of their adolescent children smoking. My model is the following:
Logit
Pi( prob of smoking of adolescent) = maternal employment dummy + controls
I only have cross sectional survey data on young people and my question is regarding missing data. For some individuals the data on maternal employment and smoking is missing. But there is data on other control variables e.g income. In this case should I drop all individuals who don't have data on maternal employment and smoking?
2) At the moment I haven't dropped these individuals. And when I run a posestimation command "predict" to get predicted probabilities after a logit model, ithe observations it predicts are 5780 while the individuals with data on smoking are only 1070. Therefore its is making predictions for the missing values of smoking too. So wondering whether this is happening because I have dropped the individuals I should have.
Any help is is much appreciated.
1) My research question is to look at the casual impact of maternal employment on the probability of their adolescent children smoking. My model is the following:
Logit
Pi( prob of smoking of adolescent) = maternal employment dummy + controls
I only have cross sectional survey data on young people and my question is regarding missing data. For some individuals the data on maternal employment and smoking is missing. But there is data on other control variables e.g income. In this case should I drop all individuals who don't have data on maternal employment and smoking?
2) At the moment I haven't dropped these individuals. And when I run a posestimation command "predict" to get predicted probabilities after a logit model, ithe observations it predicts are 5780 while the individuals with data on smoking are only 1070. Therefore its is making predictions for the missing values of smoking too. So wondering whether this is happening because I have dropped the individuals I should have.
Any help is is much appreciated.
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