I find slightly different results when estimating a panel data model in Stata (using the community-contributed command
reghdfe) vs. R.
cls webuse nlswork, clear xtset idcode year reghdfe ln_w grade age ttl_exp tenure not_smsa south, abs(year) cluster(idcode)
## import data library(foreign) df = read_dta("http://www.stata-press.com/data/r14/nlswork.dta") ## estimate the model model5 = plm( ln_wage ~ grade + age + ttl_exp + tenure+ not_smsa + south + as.factor(year), data=df, index=c('idcode', 'year'), model="random") summary(model5)[1:7,1:4] # <- this gives unclustered errors coeftest(model5, vcov=vcovHC(model5,type="HC0",cluster="group"))[1:7,1:4] # <- this gives clustered errors
I would have expected the same coefficients (standard errors still need Degrees-of-freedom correction as well I guess). What am I missing?