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I wanted to divide one column by another to get the per person time how can I do this?I couldn't find anything on how you can devide using R here is some data that I want to use

     min    count2.freq
263807.0    1582
196190.5    1016
586689.0    3479

in the end I want to add a third column like this that has the number frommin / count2.freq e.g 263808.0/1582 = 166.75

thanks for your help

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5  
just do DF$third <- DF$min / DF$count2.freq, assuming your matrix / data frame is called DF. Also, read on how operations on vectors work in R -- this is a very important basis for any work with R. –  January Oct 22 '12 at 14:11
    
You said "*I couldn't find anything on how you can devide using R" ... ?Arithmetic lists the basic operators. Try them all out so you can see what they do. Perhaps one of the basic introductions, such as this one here might help you get going. Given ?Arithmetic, guessing that "/" is the thing that does division (as is the case in most programs that do arithmetic on computers) would follow from this –  Glen_b Oct 22 '12 at 16:04

1 Answer 1

up vote 13 down vote accepted

There are a plethora of ways in which this can be done. The problem is how to make R aware of the locations of the variables you wish to divide.

Assuming

d <- read.table(text = "263807.0    1582
196190.5    1016
586689.0    3479
")
names(d) <- c("min", "count2.freq")
> d
       min count2.freq
1 263807.0        1582
2 196190.5        1016
3 586689.0        3479

My preferred way

To add the desired division as a third variable I would use transform()

> d <- transform(d, new = min / count2.freq)
> d
       min count2.freq      new
1 263807.0        1582 166.7554
2 196190.5        1016 193.1009
3 586689.0        3479 168.6373

The basic R way

If doing this in a function (i.e. you are programming) then best to avoid the sugar shown above and index. In that case any of these would do what you want

## 1. via `[` and character indexes
d[, "new"] <- d[, "min"] / d[, "count2.freq"]

## 2. via `[` with numeric indices
d[, 3] <- d[, 1] / d[, 2]

## 3. via `$`
d$new <- d$min / d$count2.freq

All of these can be used at the prompt too, but which is easier to read:

d <- transform(d, new = min / count2.freq)

or

d$new <- d$min / d$count2.freq ## or any of the above examples

Hopefully you think like I do and the first version is better ;-)

The reason we don't use the syntactic sugar of tranform() et al when programming is because of how they do their evaluation (look for the named variables). At the top level (at the prompt, working interactively) transform() et al work just fine. But buried in function calls or within a call to one of the apply() family of functions they can and often do break.

Likewise, be careful using numeric indices (## 2. above); if you change the ordering of your data, you will select the wrong variables.

The preferred way if you don't need replacement

If you are just wanting to do the division (rather than insert the result back into the data frame, then use with(), which allows us to isolate the simple expression you wish to evaluate

> with(d, min / count2.freq)
[1] 166.7554 193.1009 168.6373

This is again much cleaner code than the equivalent

> d$min / d$count2.freq
[1] 166.7554 193.1009 168.6373

as it explicitly states that "using d, execute the code min / count2.freq. Your preference may be different to mine, so I have shown all options.

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2  
For a beginning R user, this strikes me as a more-complicated-than-necessary solution to a pretty easy problem. –  Drew Steen Oct 22 '12 at 14:37
    
@DrewSteen Which bit? I covered most (if not all) bases here. Variables inside data frames are not visible at the top level so you either have to subset/index (as the last code chunk shows via various methods) or use the sugar of with(), transform() within()` etc. However, if you are programming the sugar can fail and subsetting/indexing is the way to go. If you are not programming, why litter your code with [ and $? The other alternative is to attach() the data frame, but that is considered bad R code, so don't. –  Gavin Simpson Oct 22 '12 at 14:55
3  
It's really just a matter of emphasis. I think I would lead with d$new <- d$min / d$count2.freq (as in "this solves your problem: read on for other alternatives") and then give all the other options ... thanks for omitting attach(). –  Ben Bolker Oct 22 '12 at 14:57
    
@BenBolker Thanks. I would prefer the emphasis on on the transform() solution as that is how I like to do these things in reference to littering my code with $. But horses for courses. I will move the with() bit as that is extraneous, especially up front. –  Gavin Simpson Oct 22 '12 at 15:01
    
I would echo Drew Steen and point out that suggesting solutions such as transform to an novice user can be dangerous. Direct quote from R help for transform "If some of the values are not vectors of the appropriate length, you deserve whatever you get!". In this case a lazy evaluation of the two vectors would have been a much safer route. Whereas for me this is interesting, the poster is obviously not an R programmer and your "programming" solutions add confusion. Sometimes experts forget what it is like staring at the prompt waiting for it to do something. –  Jeffrey Evans Oct 22 '12 at 16:10

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