Dear all,
I am writing my master thesis about the determinants of CSR. I have two separate OLS regression models (grounded in two separate theories) that try to explain variation in CSR (dep. variable). I hypothesize that Model 1 explains significantly more variation in CSR than Model 2, which is confirmed by means of a Vuong test.
As an additional test, I combine Model 1 and Model 2 into one regression. Model 1 and 2 have 4 variables in common, the other variables are specific to that model. I have difficulties interpreting the regression results of the combined model. Specificaly, what does it imply when:
- A significant variable in a separate model becomes insignificant in the combined model?
- An insignificant variable in a separate model becomes significant in the combined model?
- Are the answers on these two questions different for the 4 variables that are included in both models?
Thank you in advance!
I am writing my master thesis about the determinants of CSR. I have two separate OLS regression models (grounded in two separate theories) that try to explain variation in CSR (dep. variable). I hypothesize that Model 1 explains significantly more variation in CSR than Model 2, which is confirmed by means of a Vuong test.
As an additional test, I combine Model 1 and Model 2 into one regression. Model 1 and 2 have 4 variables in common, the other variables are specific to that model. I have difficulties interpreting the regression results of the combined model. Specificaly, what does it imply when:
- A significant variable in a separate model becomes insignificant in the combined model?
- An insignificant variable in a separate model becomes significant in the combined model?
- Are the answers on these two questions different for the 4 variables that are included in both models?
Thank you in advance!
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