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I've got the following three dataframes:

df1 <- data.frame(name=c("John", "Anne", "Christine", "Andy"),
                  age=c(31, 26, 54, 48),
                  height=c(180, 175, 160, 168),
                  group=c("Student",3,5,"Employer"), stringsAsFactors=FALSE)

df2 <- data.frame(name=c("Anne", "Christine"),
                  age=c(26, 54),
                  height=c(175, 160),
                  group=c(3,5),
                  group2=c("Teacher",6), stringsAsFactors=FALSE)

df2 <- data.frame(name=c("Christine"),
                  age=c(54),
                  height=c(160),
                  group=c(5),
                  group2=c(6),
                  group3=c("Scientist"), stringsAsFactors=FALSE)

I'd like to combine them so that I get the following result:

df.all <- data.frame(name=c("John", "Anne", "Christine", "Andy"),
                     age=c(31, 26, 54, 48),
                     height=c(180, 175, 160, 168),
                     group=c("Student", "Teacher", "Scientist", "Employer"))

At the moment I'm doing it this way:

df.all <- merge(merge(df1[,c(1,4)], df2[,c(1,5)], all=TRUE, by="name"),
                df3[,c(1,6)], all=TRUE, by="name")
row.ind <- which(df.all$group %in% c(6,5))
df.all[row.ind, c("group")] <- df.all[row.ind, c("group2")]
row.ind2 <- which(df.all$group2 %in% c(6))
df.all[row.ind2, c("group")] <- df.all[row.ind2, c("group3")]

This isn't generalisable and it is really messy. Maybe there would be a way to use merge_all or merge_recurse for the merging step (especially as there might be more than two dataframes to be merged), but I haven't figured out how. These two don't produce the right result:

df.all <- merge_all(list(df1, df2, df3))
df.all <- merge_recurse(list(df1, df2, df3), by=c("name"))

Is there a more general and elegant way to solve this problem?

share|improve this question

2 Answers 2

up vote 4 down vote accepted

Here is another possible approach, if I understand what you're ultimately after. (It is not clear what the numeric values in the "group" columns are, so I'm not sure this is exactly what you're looking for.)

Use Reduce() to merge your multiple data.frames.

temp <- Reduce(function(x, y) merge(x, y, all=TRUE), list(df1, df2, df3))
names(temp)[4] <- "group1" # Rename "group" to "group1" for reshaping 
temp
#        name age height   group1  group2    group3
# 1      Andy  48    168 Employer    <NA>      <NA>
# 2      Anne  26    175        3 Teacher      <NA>
# 3 Christine  54    160        5       6 Scientist
# 4      John  31    180  Student    <NA>      <NA>

Use reshape() to reshape your data from wide to long.

df.all <- reshape(temp, direction = "long", idvar="name", varying=4:6, sep="")
df.all
#                  name age height time     group
# Andy.1           Andy  48    168    1  Employer
# Anne.1           Anne  26    175    1         3
# Christine.1 Christine  54    160    1         5
# John.1           John  31    180    1   Student
# Andy.2           Andy  48    168    2      <NA>
# Anne.2           Anne  26    175    2   Teacher
# Christine.2 Christine  54    160    2         6
# John.2           John  31    180    2      <NA>
# Andy.3           Andy  48    168    3      <NA>
# Anne.3           Anne  26    175    3      <NA>
# Christine.3 Christine  54    160    3 Scientist
# John.3           John  31    180    3      <NA>

Take advantage of the fact that as.numeric() will coerce characters to NA, and use na.omit() to remove all of the rows with NA values.

na.omit(df.all[is.na(as.numeric(df.all$group)), ])
#                  name age height time     group
# Andy.1           Andy  48    168    1  Employer
# John.1           John  31    180    1   Student
# Anne.2           Anne  26    175    2   Teacher
# Christine.3 Christine  54    160    3 Scientist

Again, this might be over-generalizing your problem--there might be NA values in other columns, for example--but it might help direct you towards a solution to your problem.

share|improve this answer
    
Thanks, this works! I got used to the reshape package so much that I'm actually surprised about what you can achieve with base R. Also thanks for the explanation of the as.numeric() part. –  AnjaM Dec 17 '12 at 15:41
    
nice use of reduce –  zach Jul 29 at 16:20

First step is to use merge_recurse with all.x = TRUE:

library(reshape)
merge.all <- merge_recurse(list(df1, df2, df3), all.x = TRUE)
#        name age height    group  group2    group3
# 1      Anne  26    175        3 Teacher      <NA>
# 2 Christine  54    160        5       6 Scientist
# 3      John  31    180  Student    <NA>      <NA>
# 4      Andy  48    168 Employer    <NA>      <NA>

Then you can use apply to get the last non-NA group from all the "group" columns:

group.cols <- grep("group", colnames(merge.all))
merge.all <- data.frame(merge.all[-group.cols],
                        group = apply(merge.all[group.cols], 1,
                                      function(x)tail(na.omit(x), 1)))
#        name age height     group
# 1      Anne  26    175   Teacher
# 2 Christine  54    160 Scientist
# 3      John  31    180   Student
# 4      Andy  48    168  Employer
share|improve this answer
    
I like your tail step here. I would prefer using Reduce though (as in my answer) to having to load a package just to do the merging. –  Ananda Mahto Dec 14 '12 at 18:33
    
Great, thanks! I really like the approach to use tail, and thanks for showing how to use merge_recurse in the right way. –  AnjaM Dec 17 '12 at 15:46
    
A bug in merge_recurse has the effect of ignoring all arguments after the first except, in the trivial case of merging just two data frames. So your example happens to work fine without the all.x = TRUE parameter. –  Chris Warth Apr 18 at 17:34

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