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I am trying to estimate a fixed effects panel with individual-specific time trends using plm and am running up against the same problem as other people. I'm more than willing to use the workaround described in the linked CrossValidated question but cannot figure out how to generate the necessary data frame columns.

That is, I have a data frame of the form

data.frame(date=rep(1:5,times=3),id=rep(1:3,each=5))

and would like to add to this data frame a column for each id that is named date_idX, has the same value as date for all observations where id==X and zero otherwise.

Any more elegant solutions to my problem would of course also be appreciated.

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Do you mean same value as 'date'? –  BondedDust Jun 7 '12 at 17:07
    
erm, yes, sorry! –  RoyalTS Jun 7 '12 at 22:20

1 Answer 1

> dfrm <- data.frame(date=rep(1:5,times=3),id=rep(1:3,each=5))
> 
> X <-3;  dfrm$time_idX <- dfrm$date*(dfrm$id==X)
> dfrm
   date id time_idX
1     1  1        0
2     2  1        0
3     3  1        0
4     4  1        0
5     5  1        0
6     1  2        0
7     2  2        0
8     3  2        0
9     4  2        0
10    5  2        0
11    1  3        1
12    2  3        2
13    3  3        3
14    4  3        4
15    5  3        5

I suspect that what your really wanted was to do this in a regression formula. For that the I() function is needed. This is pseudo-code:

  regfun( form = yield ~ I(date*(id==X) ), data=dfrm)

I'm not guaranteeing this will be a proper solution to the problem of using plm, but is a method that should work with ordinary regression. You should edit your question to include a proper test case.

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It seems I did not make myself clear enough in the question: I tried simply putting date*id into the formula, but this does not work in plm, for reasons mentioned in the linked CrossValidated question. The suggested fix is to create these individual-specific time trends by hand and then to add them to the formula. And since I have something like 300 individuals, I would need 300 variables which contain a time trend each. The date_idX was thus supposed to stand for the whole lot of date_id1, date_id2, date_id3 and so on. –  RoyalTS Jun 7 '12 at 22:30
    
Actually I see no mention of a term that I understood to be date*id. I saw a model similar to y ~ date + date:id. My suggestion is to create a reduced dataframe with, say 4 individuals and 5 time periods, and work with a more manageable "testbed". Then you can work up to 300. There are R-SIG mailing lists for both econ and mixed-effects topics. –  BondedDust Jun 8 '12 at 1:15

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