Hello everyone.
This is more an econometric question rather than purely Stata, but I found different answers in econometrics manual, and I guess I could made my mind clear here.
Concerning multicollinearity (though not perfect collinearity) between two explicative variables on OLS (as a starting point) regressions.
The question I wonder is that whether it impacts the magnitude (and sign) of the coefficients.
I know that multicollinearity inflates the variance (i.e. the diagonal terms in the variance-covariance matrix), and that greater variance of coefficients reduces their statistical significance (hence a downward bias of t-stat).
However I don't know if it does (and how) affect the coefficient itself.
W.Greene, Econometric Analysis, seventh edition (p130) says that a consequence of multicollinearity would be that
However, J. Wooldrige in Introductory Econometrics: A Modern Approach, fifth edition (p95), precises that as long as there is no perfect collinearity, the Gauss-Markov hoptheses are not violated.
So does R. Williams from ND university, when stating in an on-line course about multicollinearity that :
So here comes the questions:
1) How can the two position match? Can "unbiased estimates" lead to coefficient with " “wrong” sign or implausible magnitudes" ?
2) Are coefficients obtained via non-linear methods (ordinal logit in my case) affected in the same way than OLS coefficient by multicollinearity?
Thanks
Charlie
This is more an econometric question rather than purely Stata, but I found different answers in econometrics manual, and I guess I could made my mind clear here.
Concerning multicollinearity (though not perfect collinearity) between two explicative variables on OLS (as a starting point) regressions.
The question I wonder is that whether it impacts the magnitude (and sign) of the coefficients.
I know that multicollinearity inflates the variance (i.e. the diagonal terms in the variance-covariance matrix), and that greater variance of coefficients reduces their statistical significance (hence a downward bias of t-stat).
However I don't know if it does (and how) affect the coefficient itself.
W.Greene, Econometric Analysis, seventh edition (p130) says that a consequence of multicollinearity would be that
Coefficients may have the “wrong” sign or implausible magnitudes.
So does R. Williams from ND university, when stating in an on-line course about multicollinearity that :
Even extreme multicollinearity (so long as it is not perfect) does not violate OLS assumptions. OLS estimates are still unbiased and BLUE
1) How can the two position match? Can "unbiased estimates" lead to coefficient with " “wrong” sign or implausible magnitudes" ?
2) Are coefficients obtained via non-linear methods (ordinal logit in my case) affected in the same way than OLS coefficient by multicollinearity?
Thanks
Charlie
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