Hello everyone,
I have a question related to time fixed effects in panel data analysis. I am running FE model on the panel data inlcuding 34 countries from 1995 to 2013 with the gaps (1995-2000-2005 -2010 -2013 since the data for 2015 not available). My problem is that if I just control for country effects (using cross-sectional fixed effects), the results are fine, but if I control for both country and year effects, the coffecients of most of independent variables turn to insignificant, even with the unexpected signs. I do not know this problem arises from what? And do we need always to control for year and country effects when running FE model? Or that will depend on some specific conditions?
I am quite new with panel data analysis and also with Stata. I have tried to look for solution/idea on the websites and also some textbooks but couldn't figure it out. I hope joining this forum and ask question here can give me some useful idea/suggestions from experienced Stata users/statisticians for my problem.
Thanks and kind regards,
Van
I have a question related to time fixed effects in panel data analysis. I am running FE model on the panel data inlcuding 34 countries from 1995 to 2013 with the gaps (1995-2000-2005 -2010 -2013 since the data for 2015 not available). My problem is that if I just control for country effects (using cross-sectional fixed effects), the results are fine, but if I control for both country and year effects, the coffecients of most of independent variables turn to insignificant, even with the unexpected signs. I do not know this problem arises from what? And do we need always to control for year and country effects when running FE model? Or that will depend on some specific conditions?
I am quite new with panel data analysis and also with Stata. I have tried to look for solution/idea on the websites and also some textbooks but couldn't figure it out. I hope joining this forum and ask question here can give me some useful idea/suggestions from experienced Stata users/statisticians for my problem.
Thanks and kind regards,
Van
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