Hello,
I am writing my thesis and I am encountering a problem. I hoped this forum could help me.
I have a panel dataset with a cross sectional dimension of 1200 and a time dimension of 12 years (annual data). One of my explanatory variables is the same for all cross sectional units within a year.
In my regression I would like to control for unobserved heterogeneity over time. There is some rational that tells that this might be present. I tried to include time fixed effects in my regression (with i.year as independent variable), but this results in ommiting at least one extra dummy variable (in addition to dropping one dummy to avoid the dummy trap) because of collinearity. And I was told that if this the case, I cannot draw conclusions from the coefficent estimates (something I clearly need to do).
Is this because with a cross sectionally invariant variable estimating time fixed effects is not possible? A solution might be dropping the cross sectional invariant variable but this is my most important variable so that is not a solution.
Is there another way for controling for unobserved heterogeneity when one of the explanatory varaibles is cross sectionally invariant?
Kind regards,
Daniel Kiory
I am writing my thesis and I am encountering a problem. I hoped this forum could help me.
I have a panel dataset with a cross sectional dimension of 1200 and a time dimension of 12 years (annual data). One of my explanatory variables is the same for all cross sectional units within a year.
In my regression I would like to control for unobserved heterogeneity over time. There is some rational that tells that this might be present. I tried to include time fixed effects in my regression (with i.year as independent variable), but this results in ommiting at least one extra dummy variable (in addition to dropping one dummy to avoid the dummy trap) because of collinearity. And I was told that if this the case, I cannot draw conclusions from the coefficent estimates (something I clearly need to do).
Is this because with a cross sectionally invariant variable estimating time fixed effects is not possible? A solution might be dropping the cross sectional invariant variable but this is my most important variable so that is not a solution.
Is there another way for controling for unobserved heterogeneity when one of the explanatory varaibles is cross sectionally invariant?
Kind regards,
Daniel Kiory
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