# Robust Standard Errors in lm() using stargazer()

I have read a lot about the pain of replicate the easy robust option from STATA to R to use robust standard errors. I replicated following approaches: StackExchange and Economic Theory Blog. They work but the problem I face is, if I want to print my results using the `stargazer` function (this prints the `.tex` code for Latex files).

Here is the illustration to my problem:

``````reg1 <-lm(rev~id + source + listed + country , data=data2_rev)
stargazer(reg1)
``````

This prints the R output as .tex code (non-robust SE) If i want to use robust SE, i can do it with the sandwich package as follow:

``````vcov <- vcovHC(reg1, "HC1")
``````

if I now use stargazer(vcov) only the output of the vcovHC function is printed and not the regression output itself.

With the package `lmtest()` it is possible to print at least the estimator, but not the observations, R2, adj. R2, Residual, Residual St.Error and the F-Statistics.

``````lmtest::coeftest(reg1, vcov. = sandwich::vcovHC(reg1, type = 'HC1'))
``````

This gives the following output:

``````t test of coefficients:

Estimate Std. Error t value Pr(>|t|)
(Intercept) -2.54923    6.85521 -0.3719 0.710611
id           0.39634    0.12376  3.2026 0.001722 **
source       1.48164    4.20183  0.3526 0.724960
country     -4.00398    4.00256 -1.0004 0.319041
---
Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
``````

How can I add or get an output with the following parameters as well?

``````Residual standard error: 17.43 on 127 degrees of freedom
Multiple R-squared:  0.09676,   Adjusted R-squared:  0.07543
F-statistic: 4.535 on 3 and 127 DF,  p-value: 0.00469
``````

Did anybody face the same problem and can help me out? How can I use robust standard errors in the `lm` function and apply the `stargazer` function?

• I'm pretty sure none of those statistics depend on the variance-covariance matrix, just the residuals and the variance of y, sample size, df, etc. So the output would be the same. see stats.stackexchange.com/questions/5135/… Nov 18, 2019 at 21:44

You already calculated robust standard errors, and there's an easy way to include it in the `stargazer`output:

``````library("sandwich")
library("plm")
library("stargazer")

data("Produc", package = "plm")

# Regression
model <- plm(log(gsp) ~ log(pcap) + log(pc) + log(emp) + unemp,
data = Produc,
index = c("state","year"),
method="pooling")

cov1         <- vcovHC(model, type = "HC1")
robust_se    <- sqrt(diag(cov1))

# Stargazer output (with and without RSE)
stargazer(model, model, type = "text",
se = list(NULL, robust_se))
``````

Update I'm not so much into F-Tests. People are discussing those issues, e.g. https://stats.stackexchange.com/questions/93787/f-test-formula-under-robust-standard-error

"A heteroskedasticity-robust t statistic can be obtained by dividing an OSL estimator by its robust standard error (for zero null hypotheses). The usual F-statistic, however, is invalid. Instead, we need to use the heteroskedasticity-robust Wald statistic."

and use a Wald statistic here?

• Thanks @marco! But this only explains how to manually add the F-statistics. But furst i have to know my f statistics of the overall regression with the robust SE. Does it remain the same as without RSE? Dec 3, 2019 at 20:49
• Hi @HAL_71 in the sense of stackoverflow, please accept my answer, when it solves the initial problem (as it says in the heading, robust standard errors in stargazer). I think you can try the wald test, instead of F statistic. If you need more information about some econometric background, I suggest to open a new thread on cross-validated. Best regards Dec 4, 2019 at 7:42
• Hi, I'm looking for a way to include robust SEs in stargazer from link model output. It has robust and cluster option, but I can't get it to print the robust SEs and pvalues in stargazer. Aug 11, 2022 at 12:31

This is a fairly simple solution using coeftest:

``````reg1 <-lm(rev~id + source + listed + country , data=data2_rev)
cl_robust <- coeftest(reg1, vcov = vcovCL, type = "HC1", cluster = ~
country)
se_robust <- cl_robust[, 2]
stargazer(reg1, reg1, cl_robust, se = list(NULL, se_robust, NULL))
``````

Note that I only included cl_robust in the output as a verification that the results are identical.