I am using the lme4 package for linear mixed effect modeling

the mixed-effect model is below:

fm01 <- lmer(sublat <- goal + (1|userid))

the above command returns an S4 object called fm01

this object includes fixed effects and their OLS standard errors (below)

Fixed effects:

            Estimate Std. Error t value
(Intercept)   31.644      3.320   9.530
goaltypeF1    -4.075      3.243  -1.257
goaltypeF2    -9.187      5.609  -1.638
goaltypeF3   -13.935      9.455  -1.474
goaltypeF4   -20.219      8.196  -2.467
goaltypeF5   -12.134      8.797  -1.379"

however, i need to provide robust standard errors

How can I do this with an S4 object such as returned by lme4?

  • something like this? Oct 16 '14 at 20:05
  • 1
    Excatly, but for a mixed-effects regression. Unfortunately, vcovHC(model, type="HC0") does not work on those model outputs. You can obtain vcov(model) but you cannot obtain vcovHC(model).
    – Adrienne
    Oct 16 '14 at 21:26
  • 1
    you (or someone) would need to look at vignette("sandwich-OOP",package="sandwich") and figure out how to write estfun.merMod and bread.merMod functions, starting from sandwich:::estfun.lm and sandwich:::bread.lm and adapting as necessary.
    – Ben Bolker
    Oct 17 '14 at 13:27
  • merDeriv package and clubSandwich package would do some help in extracting some components for sandwich robust standard errors and hypothesis test.
    – J.D.
    Jul 2 '20 at 18:58

I think this is what you're looking for: https://cran.r-project.org/web/packages/robustlmm/vignettes/rlmer.pdf

It's the robustlmm package, which has the rlmer function.

"The structure of the objects and the methods are implemented to be as similar as possible to the ones of lme4 with robustness specific extensions where needed."

fm01_rob <- rlmer(sublat <- goal + (1|userid))

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