# apply() and calcuating proportion of first row for all dataframe rows

I have a dataframe as shown below listing the number of injuries by vehicle type:

``````> trqldnum <- data.frame(motorveh=c(796,912,908,880,941,966,989,984),motorcyc=c(257,295,326,313,403,389,474,496),bicyc=c(109,127,125,137,172,146,173,178))
> trqldnum
motorveh motorcyc bicyc
1      796      257   109
2      912      295   127
3      908      326   125
4      880      313   137
5      941      403   172
6      966      389   146
7      989      474   173
8      984      496   178
``````

At the moment I am calculating a proportion of the first row for each vehicle type using:

``````> trqldprop <- t(apply(trqldnum,1,function(x) x/c(trqldnum[1,1],trqldnum[1,2],trqldnum[1,3])))
> trqldprop
motorveh motorcyc    bicyc
1 1.000000 1.000000 1.000000
2 1.145729 1.147860 1.165138
3 1.140704 1.268482 1.146789
4 1.105528 1.217899 1.256881
5 1.182161 1.568093 1.577982
6 1.213568 1.513619 1.339450
7 1.242462 1.844358 1.587156
8 1.236181 1.929961 1.633028
``````

This seems a bit ugly and I would need to manually change the denominator of the function if the data changed shape. I end up with the output in a list of a lists if I try to just use the following within the apply() statement.

``````function(x) x/c(trqldnum[1,])
``````

I'd prefer to end up with the dataframe result as above but am just getting in a muddle trying to figure it out.

-

Some version of Prasad solution without conversion to matrix.

``````trqldnum/trqldnum[1,][rep(1,nrow(trqldnum)),]
``````
-
After repeating a similar analysis today, I realise that this could be simplified a little further by using... trqldnum/trqldnum[rep(1,nrow(trqldnum)),] –  thelatemail Sep 20 '11 at 0:05

``````sweep(trqldnum,2,unlist(trqldnum[1,]),"/")
``````

?

The `unlist` is required to convert the first row of the data frame into a vector that can be swept ...

-

I like the `plyr` for these tasks as they allow you to specify the format of the output. You can turn this into a function that will scale to more columns and different base levels for the division easily.

``````FUN <- function(dat, baseRow = 1){
require(plyr)
divisors <- dat[baseRow ,]
adply(dat, 1, function(x) x / divisors)
}

FUN(trqldnum, 1)

motorveh motorcyc    bicyc
1 1.000000 1.000000 1.000000
2 1.145729 1.147860 1.165138
3 1.140704 1.268482 1.146789
4 1.105528 1.217899 1.256881
5 1.182161 1.568093 1.577982
6 1.213568 1.513619 1.339450
7 1.242462 1.844358 1.587156
8 1.236181 1.929961 1.633028
``````
-

Convert the data-frame to a matrix and use matrix operations:

``````m <- as.matrix(trqldnum)

trqldprop <- as.data.frame( t(t(m)/m[1,]) )

> trqldprop
motorveh motorcyc    bicyc
1 1.000000 1.000000 1.000000
2 1.145729 1.147860 1.165138
3 1.140704 1.268482 1.146789
4 1.105528 1.217899 1.256881
5 1.182161 1.568093 1.577982
6 1.213568 1.513619 1.339450
7 1.242462 1.844358 1.587156
8 1.236181 1.929961 1.633028
``````

Note that we need to transpose the matrix (see the `t(m)`) because when you divide a matrix by a vector, the operation is done column-wise.

-
Nice answer, if I had enough reputation I would +1 you. I admit I am not very well-versed with matrix operations, so I now have a topic to read up on today. –  thelatemail Apr 6 '11 at 4:11