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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";
        string[] lines = File.ReadAllLines(path);

        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))
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3 Answers

up vote 3 down vote accepted

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)
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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
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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) )
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The base R way returns several argument is not numeric or logical: returning NA –  Austin Henley Aug 5 '13 at 21:38
1  
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
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One way:

library(plyr)

ddply(dat, .(columnOneName), summarize, Average = mean(columnTwoName))
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