I am trying to merge several data.frames into one data.frame. Since I have a whole list of files I am trying to do it with a loop structure.

So far the loop approach works fine. However, it looks pretty inefficient and I am wondering if there is a faster and easier approach.

Here is the scenario: I have a directory with several .csv files. Each file contains the same identifier which can be used as the merger variable. Since the files are rather large in size I thought to read each file one at a time into R instead of reading all files at once. So I get all the files of the directory with list.files and read in the first two files. Afterwards I use merge to get one data.frame.

FileNames <- list.files(path=".../tempDataFolder/")
FirstFile <- read.csv(file=paste(".../tempDataFolder/", FileNames[1], sep=""),
             header=T, na.strings="NULL")
SecondFile <- read.csv(file=paste(".../tempDataFolder/", FileNames[2], sep=""),
              header=T, na.strings="NULL")
dataMerge <- merge(FirstFile, SecondFile, by=c("COUNTRYNAME", "COUNTRYCODE", "Year"),

Now I use a for loop to get all the remaining .csv files and merge them into the already existing data.frame:

for(i in 3:length(FileNames)){ 
ReadInMerge <- read.csv(file=paste(".../tempDataFolder/", FileNames[i], sep=""),
               header=T, na.strings="NULL")
dataMerge <- merge(dataMerge, ReadInMerge, by=c("COUNTRYNAME", "COUNTRYCODE", "Year"),

Even though it works just fine I was wondering if there is a more elegant way to get the job done?


You may want to look at the closely related question on stackoverflow.

I would approach this in two steps: import all the data (with plyr), then merge it together:

filenames <- list.files(path=".../tempDataFolder/", full.names=TRUE)
import.list <- llply(filenames, read.csv)

That will give you a list of all the files that you now need to merge together. There are many ways to do this, but here's one approach (with Reduce):

data <- Reduce(function(x, y) merge(x, y, all=T, 
    by=c("COUNTRYNAME", "COUNTRYCODE", "Year")), import.list, accumulate=F)

Alternatively, you can do this with the reshape package if you aren't comfortable with Reduce:

data <- merge_recurse(import.list)
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  • 1
    It may be worth noticing that you can get the whole thing merged, with an additional .id column containing filenames by calling ldply instead of llply. The Reduce or merge call is then unneeded. – CharlesB Dec 9 '14 at 9:05

If I'm not mistaken, a pretty simple change could eliminate the 3:length(FileNames) kludge:

FileNames <- list.files(path=".../tempDataFolder/", full.names=TRUE)
dataMerge <- data.frame()
for(f in FileNames){ 
  ReadInMerge <- read.csv(file=f, header=T, na.strings="NULL")
  dataMerge <- merge(dataMerge, ReadInMerge, 
               by=c("COUNTRYNAME", "COUNTRYCODE", "Year"), all=T)
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  • @ken: since the dataMerge is an empty data.frame the merge() function cannot find an common identifier in the first for loop. if i assign eg the first file to dataMerge it kind of gets me back to my initial idea. – mropa Feb 5 '10 at 19:53
  • Sorry, I should have tried it first. I was thinking of rbind(), in which an empty data frame is treated as if the required columns are present but empty. – Ken Williams Feb 8 '10 at 16:04

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