Robust standard errors on coefficients in a robust linear regression

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I am new in MATLAB and have performed a robust linear regression with the 2 commands:
ds = dataset('XLSFile','C:\...\data.xlsx','ReadObsNames',true);
mdl = LinearModel.fit(ds,'linear','RobustOpts','on');
The standard errors (SE) shown in the property "Coefficients", are these the heteroskedasticity robust standard errors? If not, how can I modify my commands such that I get the robust standard errors?

Accepted Answer

Shashank Prasanna
Shashank Prasanna on 30 Jul 2013
The output is robust to outliers and are not heteroskedasticity consistent estimates.
If that is what you are interested in, please check out the HAC command in the Econometrics Toolbox:
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Shashank Prasanna
Shashank Prasanna on 1 Aug 2013
That's a statistics question (along with how to compute tstats and pvalue)
I don't know what your application is but you should get hold of some statistics material to convince yourself before applying anything I mentioned.
If you want to get better with MATLAB, check out the Getting Started guide:
T27667
T27667 on 1 Aug 2013
I think those formulas are the correct ones in my case as I perform a backwards elimination of a robust linear regression.

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More Answers (1)

T27667
T27667 on 30 Jul 2013
Yes, I am interested in estimates and standard errors which are both outlier robust AND heteroskedasticity consistent. From the robust regression, I get the outlier robust estimates and outlier robust standard errors, if I understand correctly, right?
In order to get estimates and standard errors which are also heteroskedasticity consistent, I have checked out http://www.mathworks.com/help/econ/hac.html but it says here that: "...returns robust covariance estimates for ordinary least squares (OLS) coefficient estimates". Then I guess that I cannot use this command as I do not have the ordinary least squares (OLS) coefficient estimates but the robust regression estimates (as I have used robust regression). Isn't that true?

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