Getting Started in Fixed/Random Effects Models using R
OLS regression. Comparing OLS vs LSDV model; Each component of the factor variable (country) is absorbing the effects particular to each country. Predictor ; x1 ; was not significant in the OLS model, once controlling for differences across countries, x1;
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