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In microeconometrics, it is sometimes advised to always use heteroscedasticity-robust standard error (instead of testing for heteroscedasticity and using generalized or weighted least squares or something else). This is the case because heteroscedasticity or autocorrelation / serial correlation affects the interval estimates only but not the point estimates.

If I am applying OLS in a time series context,

  1. is there a similar advise to simply address autocorrelation (even if disputed)?
  2. does it depend on whether the time series is short or long (small vs large T)?

I asked a similar question before, but this one is much more specific to the time series context, and I am happy even with suggestions not every agrees with.

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    $\begingroup$ Here are some threads citing Diebold who is against HAC robust standard errors. $\endgroup$ Commented Feb 20, 2021 at 10:23

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