# Copy a row but with some modifications

I have a large data set like this:

``````SUB SMOKE AMT  MDV ADDL II  EVID
1    0    0    0   0    0    0
1    0    20   0   16   24   1
1    0    0    0   0    0    0
1    0    0    0   0    0    0
2    1    0    0   0    0    0
2    1    50   0   24   12   1
2    1    0    0   0    0    0
2    1    0    0   0    0    0
...
``````

I want to copy the row where `EVID=1` and insert it below, but for the copied row, `AMT`,`ADDL`,`II` and `EVID` should all equal to `0`, `SMOKE` and `MDV` remain the same. The expected output should look like this:

``````SUB SMOKE AMT  MDV ADDL II  EVID
1    0    0    0   0    0    0
1    0    20   0   16   24   1
1    0    0    0   0    0    0
1    0    0    0   0    0    0
1    0    0    0   0    0    0
2    1    0    0   0    0    0
2    1    50   0   24   12   1
2    1    0    0   0    0    0
2    1    0    0   0    0    0
2    1    0    0   0    0    0
...
``````

Does anyone have idea about realizing this?

-

``````# repeat EVID=0 rows 1 time and EVID=1 rows 2 times
r <- rep(1:nrow(DF), DF\$EVID + 1)
DF2 <- DF[r, ]

# insert zeros
DF2[duplicated(r), c("AMT", "ADDL", "II", "EVID")] <- 0
``````

giving:

``````> DF2
SUB SMOKE AMT MDV ADDL II EVID
1     1     0   0   0    0  0    0
2     1     0  20   0   16 24    1
2.1   1     0   0   0    0  0    0
3     1     0   0   0    0  0    0
4     1     0   0   0    0  0    0
5     2     1   0   0    0  0    0
6     2     1  50   0   24 12    1
6.1   2     1   0   0    0  0    0
7     2     1   0   0    0  0    0
8     2     1   0   0    0  0    0
``````
-
Nice trick `rep(1:nrow(DF), DF\$EVID + 1)` –  Julián Urbano Mar 30 '14 at 16:58

Maybe this:

``````> t2 <- t[t\$EVID==1,] # t is your data.frame
> t2
SUB SMOKE AMT MDV ADDL II EVID
2   1     0   0   0    0  0    0
6   2     1   0   0    0  0    0
> rbind(t,t2)
SUB SMOKE AMT MDV ADDL II EVID
1    1     0   0   0    0  0    0
2    1     0  20   0   16 24    1
3    1     0   0   0    0  0    0
4    1     0   0   0    0  0    0
5    2     1   0   0    0  0    0
6    2     1  50   0   24 12    1
7    2     1   0   0    0  0    0
8    2     1   0   0    0  0    0
21   1     0   0   0    0  0    0 # this row
61   2     1   0   0    0  0    0 # and this one are new
``````
-