# Calculating percentages in an apply statement (R)

I'm struggling with something quite simple, but I'm going around in circles, and just don't see where I make an error. I really hope that someone could lend me a handy suggestion, so that I'm no longer stuck!

My goal: I want to calculate the percentage of instances in an data.frame which have a result higher than 0. I've tried this with the for loop, but to no avail. So, after some more searching I used the apply function to calculate various metrics as mean, sd, and min/max. This works great, but for calculating the percentage the apply function doesn't work, even when I make a custom function, and insert this into the apply function.

This is the shortened version of my data.frame:

``````     tradesList[c(1:5,10:15),c(1,7)]
1         JPM                    -3
2         JPM                   264
3         JPM                   284
4         JPM                    69
5         JPM                   283
10        JPM                  -294
11        KFT                    -8
12        KFT                   -48
13        KFT                   125
14        KFT                  -150
15        KFT                  -206
``````

I want to summarize this data.frame, for example by displaying the average TradeResult for each Instrument:

``````> tapply(tradesList\$TradeResult.Currency., tradesList\$Instrument, mean)
JPM  KFT
42.3 14.6
``````

However, I would also like to calculate the percentage of rows which have an TradeResult > 0 per instrument. With the 'which' function checking for instances which are > 0 does work, however, apply won't accept this function as an argument.

``````> length(which(tradesList\$TradeResult.Currency. > 0)) / length(tradesList\$TradeResult.Currency.) * 100
[1] 50
Error in match.fun(FUN) :
>
``````

I searched in the help function for more information on this error, and tried various different ways of formulating the function (for example with brackets or quotes), but each way led to the same result.

Does someone know a whay to calculate the percentage of instances which are greater than zero? Perhaps I'm missing something?

Regards,

Edit: Thanks alot for your quick comments G. Grothendieck, Gavin Simpson and DWin. Highly appreciated and quite helpful!

Solved: Here's what I have now:

``````> tmpData <- tradesList[c(1:5,10:15),c(1,7)]
> tmpData
1         JPM                    -3
2         JPM                   264
3         JPM                   284
4         JPM                    69
5         JPM                   283
10        JPM                  -294
11        KFT                    -8
12        KFT                   -48
13        KFT                   125
14        KFT                  -150
15        KFT                  -206
> 100*    # to get percentages
+ with( tmpData,
+ tapply( (TradeResult.Currency. > 0) , Instrument, sum)/   # number GT 0
+        tapply( TradeResult.Currency., Instrument, length) ) # total number
JPM      KFT
66.66667 20.00000
> 100 * tapply(tmpData\$TradeResult.Currency. > 0, tmpData\$Instrument, mean)
JPM      KFT
66.66667 20.00000
> pcentFun <- function(x) {
+     res <- x > 0
+     100 * (sum(res) / length(res))
+ }
>
JPM      KFT
66.66667 20.00000
``````

Thanks again!

Regards,

-

Write a simple function to do the computation:

``````pcentFun <- function(x) {
res <- x > 0
100 * (sum(res) / length(res))
}
``````

Then we can apply that to groups of Instruments, via `tapply()`

``````> with(tradeList, tapply(TradeResult.Currency, Instrument, pcentFun))
JPM      KFT
66.66667 20.00000
``````

but `aggregate()` would be more useful if you want the summary with instrument names:

``````> with(tradesList, aggregate(TradeResult.Currency,
+                            by = list(Instrument = Instrument), pcentFun))
Instrument        x
1        JPM 66.66667
2        KFT 20.00000
``````
-
Thanks Gavin, that's really helpful. The aggregate suggestion is also somehting I can use for the rest of my R analysis. Great! –  Jura25 Dec 5 '10 at 16:52
Hint: sum divided by length is the definition of the mean. –  hadley Dec 7 '10 at 5:01
@Hadley; thanks you make a good point - I thought @Jura25 would recognise the formulation I used more easily than also grepping that this was the mean. Also, @Jura25, reading between the lines, was looking to find out how to go a bit further with applying functions. Just using `mean` wouldn't have furthered that much. –  Gavin Simpson Dec 7 '10 at 8:43

Try this:

``````100 * tapply(tradesList\$TradeResult.Currency. > 0, tradesList\$Instrument, mean)
``````

With the sample data in the post it gives:

``````  JPM   KFT
66.67 20.00
``````

and here it is using sqldf (note that the RSQLite driver translates dots to underscores since dots are also an SQL operator so we use underscores where dots were):

``````> library(sqldf)
> sqldf("select Instrument,
+     100 * avg(TradeResult_Currency_ > 0) as '%>0',
+     from tradesList group by Instrument")
Instrument   %>0 Avg Currency
1        JPM 66.67        100.5
2        KFT 20.00        -57.4
``````

These two could also be translated to `aggregate` by suitable modification of the `aggregate` solution already posted.

-
Thanks G. Grothendieck, simple and elegant but quite effective. Thanks for responding! –  Jura25 Dec 5 '10 at 16:53

You can work with logical results using sum or mean to get meaningful summary results:

``````100*    # to get percentages