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I want to estimate a fixed effect model. I have 1263 observations for say 3 Time periods at the individual level. Moreover, each individual observation belongs to a Country j. My data.frame is as follows

 Country    X1  X2   X3    X4
   1      0.022 560 595  0.090
   1      0.013 638 649  0.081
   1      0.007 667 681  0.072
   1      0.003 703 702  0.057
   1      0.018 558 574  0.215
   1      0.009 599 615  0.189
   2      0.001 456 345  0.234
   ..        ..  ..  ..    ..

I transformed it in a pdata.frame using the plm package, as follows

pdata <- pdata.frame(data, index = 1263, drop.index = T, row.names = FALSE)

This creates my time and individual indexes

R> head(attr(data, "index"))

id time
1    1
1    2
1    3
2    1
2    2
2    3
3    1
..  ..

Plm is designed for panel estimation. I want to estimate a fixed effect model such as

x1 ~ X2 + X3 + X4 + CountryEff + TimeEff + error  

That is I want to account for Time and for each Country j= (1 .. J). In principle, if I had to build my own model, I should have created J-1 dummy variables, so that each of them would estimate the differential effect of belonging to countr j with respect to belonging to the omitted country. I also know from here that I could add

index=c("Country") 

to account for such an effect. However, I have already set an index for the individual observation and time; moreover, I am not sure whether the plm function will omit 1 country, nor I know which one it will. How can I run a fixed effect model (say, within estimator) accounting for time and country effect, given the structure of my dataset ? (for the sake of clarity, each observation is a province, belonging to one of J countries. The panel is balanced)

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