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Let's say I have a file A containing the measurements for 10 subjects who received some treatment, and a file B containing the measurements for another 10 subjects who received a different treatment. I want to perform one-way analysis of variance, so I'm using R's anova/aov functions. However, aov expects the data to be in a data frame where the first column contains the category (i.e. here either A or B) and the second column contains the corresponding sample. How can I read the two files and automatically construct the data frame?

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R cares not one whit about which order your columns are in but you might. What are the kinds of measures in your files and how are they formatted? –  John Sep 25 '12 at 13:00

2 Answers 2

up vote 1 down vote accepted

Here's some code I recently wrote to solve the same problem. For me, the data was in CSV files named blahblah_series_trials.csv, where the blahblah determined the experiment type.

filenames <- dir(".", "*.series_trials.csv")
types <- sub('.*?([a-zA_Z]*)_series_trials.*', '\\1', filenames)
data <- adply(data.frame(f=I(filenames), t=types), 1,
              with, cbind(read.csv(f), exp_type=t))

This reads each file, adds a column exp_type based on which file it came from, and binds it all into one data frame.

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Nice. That's much more legible. I guess the adply should be apply? –  Vegard Sep 25 '12 at 12:40
    
@Vegard - perhaps, but probably not. adply is the name of a function from plyr package which takes an Array as an input and output a Data.frame, hence the ADply. –  Chase Sep 25 '12 at 13:58
    
@Chase that would make a lot of sense. Thanks. –  Vegard Sep 25 '12 at 14:05

I had to do this, so I'm putting up the solution here.

# Define a new function: files is a vector of file names.
# The return value is a data frame where the x column contains the category
# (the file name) and the y column contains the corresponding samples.
read.files <- function(files) {
    l <- lapply(files, function (x) read.table(x)$V1)
    return(data.frame(
        x = factor(unlist(lapply(seq_along(l), function(i) sapply(c(1:length(l[[i]])), function(x) files[i])))),
        y = unlist(l)
    ))
}

f <- read.files(c("A", "B"))

anova(aov(y ~ x, f))

The output of f would look something like:

   x    y
1  A 10.0
2  A 10.1
3  A 11.1
4  A 12.9
5  A 10.7
6  A  9.6
7  A 10.4
8  A 10.8
9  A 10.1
10 A  9.3
11 B 20.5
12 B 21.1
13 B 25.2
14 B 13.2
15 B 13.3
16 B 17.4
17 B 18.9
18 B 20.2
19 B 23.8

This works for an arbitrary number of files, but each file is restricted to a single column only. The files can have different number of rows.

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