# Heteroscedasticity robust standard errors with the PLM package

I am trying to learn R after been using STATA and I must say that I love it. But now I am having some trouble. I am about to do some multiple regressions with Panel Data so I am using the plm package.

Now I want to have the same results with plm in R as when I use the lm-function and STATA when I perform a Heteroscedasticity robust and entity fixed regression.

Lets say that I have a panel dataset with the variables Y, ENTITY, TIME, V1

I get the same standard errors i R with this code

``````lm.model<-lm(Y ~ V1 + factor(ENTITY), data=data)
coeftest(lm.model, vcov.=vcovHC(lm.model, type="HC1))
``````

as when I in STATA perform this regression

``````xi: reg Y V1 i.ENTITY, robust
``````

But when I am performing this regression with the PLM package I get other standard errors

``````plm.model<-plm(Y ~ V1 , index=C("ENTITY","YEAR"), model="within", effect="individual", data=data)
coeftest(plm.model, vcov.=vcovHC(plm.model, type="HC1))
``````
• Have I missed to set some options?
• Does the plm model use some other kind of estimation and if so how does it do it?
• Can I in some way have the same standard erreros with plm as in STATA with ",robust"

Would really appreciate some help dear fRiends =)

-
this is something you better ask at crossvalidated.com, they'll be able to help you more. And it would be nice to have some reproducible code while you're at it, together with the expected outcome. This often clears a problem up quite faster. –  Joris Meys Dec 14 '10 at 10:09
I don't know stata, but it looks like your stata regression is a pooled linear model of Y = a0 + a1*V1 + a2*ENTITY + epsilon with robust het se, which is what you're doing with `lm`, so the results match. In the `plm` model you're doing an FE regression Y = a0 + a1*V1 + ui + epsilon, where ui is the FE for each "individual", which by `index` you've specified to be ENTITY. So I think your stata and R results match in the first case because you're doing a pooled panel with entity as an ind var in both cases. But I don't know stata. –  Richard Herron Jan 12 '11 at 0:54

The `plm` package does not use the exact same small-sample correction procedure as in Stata. From a privately circulated draft I know that the package author has implemented an option for the Stata small-sample correction, but the new version of the package hasn't been released yet. When it is released in the future, it will allow users to benchmark R output against Stata results.

For some benchmarks of R and Stata robust standard-errors see Fama-MacBeth and Cluster-Robust (by Firm and Time) Standard Errors in R.

-

Is it possible that your stata code is different from what you are doing with plm?

PLM's "within" option with "individual" effects means a model of the form:

``````yit = a + Xit*B + eit + ci
``````

What PLM does is to demean the coefficients so that ci drops from the equation.

``````yit_bar = Xit_bar*B + eit_bar
``````

Such that the "bar" suffix means that each variable had its mean subtracted. The mean is calculated over time and that is why the effect is for the individual. You could also have a fixed time effect that would be common to all individuals in which case the effect would be through time as well (that is irrelevant in this case though).

I am not sure what the "xi" command does in STATA, but i think it expands an interaction right ? Then it seems to me that you are trying to use a dummy variable per ENTITY as was highlighted by @richardh.

For your STATA and PLM codes to match you must be using the same model.

You have two options:(1) you xtset your data in stata and use the xtreg option with the fe modifier or (2) you use plm with the pooling option and one dummy per ENTITY.

Matching STATA to R:

``````xtset entity year
xtreg y v1, fe robust
``````

``````plm(Y ~ V1 + as.factor(ENTITY) , index=C("ENTITY","YEAR"), model="pooling", effect="individual", data=data)
``````

Then use the covHC with one of the modifiers. Make sure to check this paper that has a nice review of all the mechanics behind the "HC" options and the way they affect the variance covariance matrix.

Hope this helps.

-

Perhaps the answer lies in the following command arguments?

random.method
method of estimation for the variance components in the random effects model, one of "swar" (the default value), "amemiya", "walhus" and "nerlove"

inst.method
the instrumental variable transformation: one of "bvk" and "baltagi"

Do you know which methods STATA uses (or have you tried different combinations of these methods)?

-
Hi! I looked at that aswell but those are options for the random effects model. The "within" argument I use is the fixed effects model. –  Marcus R Dec 13 '10 at 21:42
Would it be possible for you to include some example data and your output from STATA? Many won't have access to STATA, so won't know what the "correct" result should be. –  please delete me Dec 13 '10 at 21:57
Have you tried: coeftest(plm.model, vcov=vcovHC(plm.model, type="HC3")) or coeftest(plm.model, vcov=vcovHC(plm.model, type="HC4")) –  please delete me Dec 13 '10 at 22:12
newuser: I do not use instrumental variables aswell. Sorry but I am at home so I can't get the STATA output right now. I have tried all combinations of method="white1/white2" and type="HCO/HC1/HC2/HC3/HC4" and some are close but not still no cigar. –  Marcus R Dec 13 '10 at 22:23