# Converting C# to idiomatic R

Originally, I was using a short C# program I wrote to average some numbers. But now I want to do more extensive analysis so I converted my C# code to R. However, I really don't think that I am doing it the proper way in R or taking advantage of the language. I wrote the R in the exact same way I did the C#.

I have a CSV with two columns. The first column identifies the row's type (one of three values: C, E, or P) and the second column has a number. I want to average the numbers grouped on the type (C, E, or P).

My question is, what is the idiomatic way of doing this in R?

## C# code:

``````        string path = "data.csv";

int cntC = 0; int cntE = 0; int cntP = 0; //counts
double totC = 0; double totE = 0; double totP = 0; //totals
foreach (string line in lines)
{
String[] cells = line.Split(',');
if (cells[1] == "NA") continue; //skip missing data

if (cells[0] == "C")
{
totC += Convert.ToDouble(cells[1]);
cntC++;
}
else if (cells[0] == "E")
{
totE += Convert.ToDouble(cells[1]);
cntE++;
}
else if (cells[0] == "P")
{
totP += Convert.ToDouble(cells[1]);
cntP++;
}
}
Console.WriteLine("C found " + cntC + " times with a total of " + totC + " and an average of " + totC / cntC);
Console.WriteLine("E found " + cntE + " times with a total of " + totE + " and an average of " + totE / cntE);
Console.WriteLine("P found " + cntP + " times with a total of " + totP + " and an average of " + totP / cntP);
``````

## R code:

``````dat = read.csv("data.csv", header = TRUE)

cntC = 0; cntE = 0; cntP = 0  # counts
totC = 0; totE = 0; totP = 0  # totals
for(i in 1:nrow(dat))
{
if(is.na(dat[i,2])) # missing data
next

if(dat[i,1] == "C"){
totC = totC + dat[i,2]
cntC = cntC + 1
}
if(dat[i,1] == "E"){
totE = totE + dat[i,2]
cntE = cntE + 1
}
if(dat[i,1] == "P"){
totP = totP + dat[i,2]
cntP = cntP + 1
}
}
sprintf("C found %d times with a total of %f and an average of %f", cntC, totC, (totC / cntC))
sprintf("E found %d times with a total of %f and an average of %f", cntE, totE, (totE / cntE))
sprintf("P found %d times with a total of %f and an average of %f", cntP, totP, (totP / cntP))
``````
-

I would do something like this :

``````dat = dat[complete.cases(dat),]  ## The R way to remove missing data
dat[,2] <- as.numeric(dat[,2])   ## convert to numeric as you do in c#
by(dat[,2],dat[,1],mean)         ## compute the mean by group
``````

Of course to aggregate your result in a data.frame you can use the the classic , But I don't think is necessary here since it a list of 3 variables:

`````` do.call(rbind,result)
``````

EDIT1

Another option here is to use the elegant `ave` :

``````ave(dat[,2],dat[,1])
``````

But the result is different here. In the sense you will get a vector of the same length as your original data.

EDIT2 To include more results you can elaborate your anonymous function:

``````by(dat[,2],dat[,1],function(x) c(min(x),max(x),mean(x),sd(x)))
``````

Or returns `data.frame` more suitable to `rbind` call and with columns names:

``````by(dat[,2],dat[,1],function(x)
data.frame(min=min(x),max=max(x),mean=mean(x),sd=sd(x)))
``````

Or use the elegant built-in function ( you can define your's also) `summary`:

``````by(dat[,2],dat[,1],summary)
``````
-
Works like a charm. –  Austin Henley Aug 5 '13 at 21:56
How should I scale this to also include other things such as standard deviation, min, max, ect ect? –  Austin Henley Aug 5 '13 at 22:02
@AustinHenley I edit my answer. –  agstudy Aug 5 '13 at 22:10

I would use the `data.table` package since it has group by functionality built in.

`````` library(data.table)
dat <- data.table(dat)

dat[, mean(COL_NAME_TO_TAKE_MEAN_OF), by=COL_NAME_TO_GROUP_BY]
# no quotes for the column names
``````

If you would like to take the mean (or perform other function) on multiple columns, still by group, use:

`````` dat[, lapply(.SD, mean), by=COL_NAME_TO_GROUP_BY]
``````

Alternatively, if you want to use Base `R`, you could use something like

`````` by(dat, dat[, 1], lapply, mean)
# to convert the results to a data.frame, use
do.call(rbind,  by(dat, dat[, 1], lapply, mean) )
``````
-
The base R way returns several `argument is not numeric or logical: returning NA` –  Austin Henley Aug 5 '13 at 21:38
You probably have some `factors` in there. Run `sapply(dat, is.factor)` to see which. Then convert to numeric (by way of `as.character`). However, if you can handle SQL, etc and pick up languages quick, I would just stick to `data.table` –  Ricardo Saporta Aug 5 '13 at 21:40
The `data.table` way is giving me an error on the `by`, "unused argument". Do I have to do something special to define the column headers? They are already included in the CSV. –  Austin Henley Aug 5 '13 at 21:54
check `names(DT)`. Then try copuying and pasting the value you see there –  Ricardo Saporta Aug 5 '13 at 21:56
@RicardoSaporta I did, I still get the error: `[.data.frame``(dat, , lapply(.SD, mean), by = treatment) : unused argument (by = treatment)` –  Austin Henley Aug 5 '13 at 21:58
``````library(plyr)