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I would like to know how I solve the following problem using higher order functions like ddply, ldply, dlply, and avoid using problematic for loops.

The problem: I have a .csv file representing a dataset loaded into a data.frame, with each row containing the path to a directory where more information is stored in files. I want to use the directory information in the datas.frame to open the files("file1.txt","file2.txt") in that directory, merge them, then combine the merged files from each entry in one large dataframe. something like this: df =

entryName,dir
1,/home/guest/data/entry1
2,/home/guest/data/entry2
3,/home/guest/data/entry3
4,/home/guest/data/entry4

what I would like to do is apply a function to the dataframe that take the directory, appends a couple of file names "file1.txt", "file.txt", then merges the two files together based off a given field.

for example file1.txt could be:

entry,subEntry,value
1,A,2
1,B,3
1,C,4
1,D,5
1,E,3
1,F,3

for example file2.txt could be:

entry,subEntry,value
1,A,8
1,B,7
1,C,8
1,D,9
1,E,8
1,F,7

the output would look something like this:

entryName,subEntry,valueFromFile1,valueFromFile2
1,A,2,8
1,B,3,7
1,C,4,8
1,D,5,9
1,E,3,8
1,F,3,7
2,A,4,8
2,B,5,9
2,C,6,7
2,D,3,7
2,E,6,8
2,F,5,9

Right now I am using a for loop, but for obvious reasons would like to use a higher order function. Here is what I have so far:

allCombined <- data.frame()
df <- read.csv(file="allDataEntries.csv",header=true) 
numberOfEntries = <- dim(df)[1]

for(i in 1:numberOfEntries){ 
  dir <- df$dir[i]
  file1String <- paste(dir,"/file1.txt",sep='') 
  file2String <- paste(dir,"/file2.txt",sep='')
  file1.df <- read.csv(file=file1String,header=TRUE)
  file2.df <- read.csv(file=file2String,header=TRUE)
  localMerged <- merge(file1.df,file2.df, by="value")
  allCombined <- rbind(allCombined,localMerged) 
} 
#rest of my analysis...
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2 Answers 2

up vote 2 down vote accepted

Here is one way to do it. The idea is to create a list with contents of all the files, and then use Reduce to merge them sequentially using the common columns entry and subEntry.

# READ DIRECTORIES, FILES AND ENTRIES
dirs    <- read.csv(file = "allDataEntries.csv", header = TRUE, as.is = TRUE)$dir
files   <- as.vector(outer(dirs, c('file.txt', 'file2.txt'), 'file.path'))
entries <- lapply(files, 'read.csv', header = TRUE)

# APPLY CUSTOM MERGE FUNCTION TO COMBINE ENTRIES
merge_by <- function(x, y){
  merge(x, y, by = c('entry', 'subEntry'))
}
Reduce('merge_by', entries)
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I've not tested this, but it seems like it should work. The anonymous function takes a single row from df, reads in the two associated files, and merges them together by value. Using ddply will take these data frames and make a single one out of them by rbinding (since the requested output is a data frame). It does assume entryName is not repeated in df. If it is, you can add a unique row to group over instead.

ddply(df, .(entryName), function(DF) {
  dir <- df$dir
  file1String <- paste(dir,"/file1.txt",sep='') 
  file2String <- paste(dir,"/file2.txt",sep='')
  file1.df <- read.csv(file=file1String,header=TRUE)
  file2.df <- read.csv(file=file2String,header=TRUE)
  merge(file1.df,file2.df, by="value")
})
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