Dear Statalists,
I want to estimate several macro-econometric models using country-year panel data testing positive for heteroskedasticity and autocorrelation. For each model, the dataset varies in size as follows:
1) N=26, T=4-20, average T = 16
2) N=23, T=6-21, average T = 16
3) N=16, T=6-21, average T = 17
As far as I understand, for long panels (N>T), robust standard errors in xtreg take care of autocorrelation, whereas for wide panels (N<T), one should use xtpcse/xtgls and use the option corr(ar1). Now, my question is: When can a panel be considered long enough? In situation number 3, I think I should use xtpcse because, on average, N<T, but what about situations 1 and 2, where T is not much larger than N? Should I consider them long panels? Do robust standard errors also take care of autocorrelation in these situations?
I hope my question is sufficiently clear.
Thank you,
Simone
I want to estimate several macro-econometric models using country-year panel data testing positive for heteroskedasticity and autocorrelation. For each model, the dataset varies in size as follows:
1) N=26, T=4-20, average T = 16
2) N=23, T=6-21, average T = 16
3) N=16, T=6-21, average T = 17
As far as I understand, for long panels (N>T), robust standard errors in xtreg take care of autocorrelation, whereas for wide panels (N<T), one should use xtpcse/xtgls and use the option corr(ar1). Now, my question is: When can a panel be considered long enough? In situation number 3, I think I should use xtpcse because, on average, N<T, but what about situations 1 and 2, where T is not much larger than N? Should I consider them long panels? Do robust standard errors also take care of autocorrelation in these situations?
I hope my question is sufficiently clear.
Thank you,
Simone
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