Tamirlan:
let's stick with your original post (on which Fei and George already commented positively):
1) normality test: normality is a (weak) requirement for residual distribution only;
2) multicollinearity test: if perfect, Stata fixes it by default; if quasi-extreme (and you are confident that the data generating process is well represented in terms of predictors and/or interactions), see the humorous Chapter 23 in https://www.hup.harvard.edu/catalog....=9780674175440. More seriously, quasi-extreme multicollinearity (that is often the stalking horse under which misspecification hides) may be an issue when you detect "weird" standard errors;
3) heteroskedasticity test: there's no gain in running this text when you have invoked non-default standard errors (and the same holds when you detect autocorrelation). In addition, I would not sponsor running -hausman- with default standard errors (being aware of heteroskedastcity and/or autocorrelation) and then replace them with theri non-default counterparts.
let's stick with your original post (on which Fei and George already commented positively):
1) normality test: normality is a (weak) requirement for residual distribution only;
2) multicollinearity test: if perfect, Stata fixes it by default; if quasi-extreme (and you are confident that the data generating process is well represented in terms of predictors and/or interactions), see the humorous Chapter 23 in https://www.hup.harvard.edu/catalog....=9780674175440. More seriously, quasi-extreme multicollinearity (that is often the stalking horse under which misspecification hides) may be an issue when you detect "weird" standard errors;
3) heteroskedasticity test: there's no gain in running this text when you have invoked non-default standard errors (and the same holds when you detect autocorrelation). In addition, I would not sponsor running -hausman- with default standard errors (being aware of heteroskedastcity and/or autocorrelation) and then replace them with theri non-default counterparts.
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