# Fama MacBeth standard errors in R

Does anyone know if there is a package that would run Fama-MacBeth regressions in R and calculate the standard errors? I am aware of the sandwich package and its ability to estimate Newey-West standard errors, as well as providing functions for clustering. However, I have not seen anything with respect to Fama-MacBeth.

• library("sos"); findFn("macbeth") finds nothing, but findFn("fama") gets a few hits in finance-related packages. – Ben Bolker Apr 5 '12 at 19:14

The plm package can estimate Fama-MacBeth regressions and SEs.

require(foreign)
require(plm)
require(lmtest)
fpmg <- pmg(y~x, test, index=c("year","firmid")) ##Fama-MacBeth

> ##Fama-MacBeth
> coeftest(fpmg)

t test of coefficients:

Estimate Std. Error t value Pr(>|t|)
(Intercept) 0.031278   0.023356  1.3392   0.1806
x           1.035586   0.033342 31.0599   <2e-16 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

However note that this method works only if your data can be coerced to a pdata.frame. (It will fail if you have "duplicate couples (time-id)".)

For further details see:

• in the example coeftest(fpmg) does not handle double-clustered standard errors. Please show how to do it for fpmg. stackoverflow.com/questions/37441230/… – Polar Bear May 27 '16 at 5:50
• One person wrote that we need to swap N and T and everyone is doing it. I see others who have questioned it, but they have been silenced ;) – Barbara Bukhvalova Jul 31 '17 at 2:08
• Both orders work on df.petersen. pmg is supposed to average time series. Sometimes averaging crossections makes theoretical sense. In FM regression: the RHS variable is an index: the same for all ids. Try: df.petersen2<-data.table(df.petersen); df.petersen2[,:=(x=df.petersen2[firmid==1,x]),by="firmid"]. Then try summary(pmg(y ~ x, data=df.petersen2, index=c("year","firmid"))). You will get NAs, as you are running crossections with no RHS variation. pmg is not well documented, so I am not sure if it does a proper FM regression, but index=c("firmid","year")) produces an estimate. – Barbara Bukhvalova Jul 31 '17 at 2:21
• Looking further into this: pmg runs just one set of regressions and then takes averages. (not two sets of regressions) So one should populate x with beta estimates from the first FM regression and then use pmg on crosssections. For averaging crossections one should use index=c("year","firmid"), NB: with this approach errors in estimating betas are lost. – Barbara Bukhvalova Jul 31 '17 at 3:35