# aggregate and transform a dataset

I have a sample dataset like the following:

``````df=data.frame(iter=c(1, 1, 2, 2), exp=c("A", "B", "A", "B"),
val=c(2.3, 3.6, 4.0, 5.0))
``````

The tabular form will be:

``````  iter exp val
1   A  2.3
1   B  3.6
2   A  4.0
2   B  5.0
``````

I am trying to transform it in a way to group A and B, add a ratio column with value such as `df\$val[1]/df\$val[2]`, `df\$val[3]/df\$val[4]`, so the end result looks like:

``````   iter ratio
1    2.3/3.6
2    4.0/5.0
``````

I feel this should be a job of ddply, but I couldn't see a path to get it done. Any help is appreciated.

-

Try this:

``````library(plyr)
df2 <- ddply(df, .(iter), summarise, ratio=paste(val[which(exp=="A")],"/",val[which(exp=="B")],sep=""))
``````

Which gave me:

``````  iter   ratio
1 2.3/3.6
2     4/5
``````
-
``````library(data.table)
DT <- as.data.table(df)
DT[, list(ratio= val[exp=="A"] / val[exp=="B"]), by=iter]

iter    ratio
1:    1 0.638889
2:    2 0.800000
``````
-

Here's a solution in base. It's somewhat more complex than the `plyr` solution, but perhaps it is instructive.

``````do.call(rbind,
by(df,
df\$iter,
function(x) {
with(x,
data.frame(
iter=iter[1],
ratio=val[which(exp=='A')]/val[which(exp=='B')] ## Or use paste to get a text representation of the ratio
)
)
}
)
)
## i iter    ratio
## 1    1 0.638889
## 2    2 0.800000
``````

It splits the data frame `by` the `iter` column, then takes the ratio of the `A` `val` element over the `B` element. It assumes that there is only one such value per level.

-