# Add rows to dataframe based on criteria

I have this dataframe:

``````percentDf <- data.frame(category=c("a", "a", "b", "c", "c", "d"),
percent=c(50, 50, 100, 30, 70, 100))

percentDf
category percent
1        a      50
2        a      50
3        b     100
4        c      30
5        c      70
6        d     100
``````

In rows where the value in `percent` is 100, I need to replicate that row, and add it underneath. This should be the dataframe outputted:

``````percentDfComplete <- data.frame(category=c("a", "a", "b", "b", "c", "c", "d", "d"),
percent=c(50, 50, 100, 100, 30, 70, 100, 100))

percentDfComplete
category percent
1        a      50
2        a      50
3        b     100
4        b     100
5        c      30
6        c      70
7        d     100
8        d     100
``````

What is the best way to do this?

-

I'd just pick them up first and then `rbind` them and them `order` them.

``````out <- rbind(percentDf, percentDf[percentDf\$percent == 100, ])
out[order(out\$category), ]
``````

Alternatively, you can first find which rows have `percent = 100` and append and sort and index your data.frame.

``````percentDf[sort(c(seq_len(nrow(percentDf)), which(percentDf\$percent == 100))), ]
``````

Note: If you have in your original data.frame two rows with `b 100` then you'll get each of the rows duplicated here.

-
what if you want to preserve the category order? – eddi Jun 16 '13 at 3:44
@eddi, The second solution does exactly that, isn't it? Ex: if category=`d,c,c,b,a,a` and percent=`50,50,100,30,70,100`, then, second solution would give: `d,c,c,c,b,a,a,a` and `50,50,100,100,30,70,100,100`. – Arun Jun 16 '13 at 5:36