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I'd like to merge two big data frames that don't have all their variables in common. I've tried with 'merge' but I don't get what I want.

An example:

# Data frame to merge 1
ID <- c("1", "2", "3", "4", "5")
Colour <- c("Red", "Red", "Red", NA, NA)
Flavour <- c("Sweet", "Sweet", "Sweet", NA, NA)
Price <- c(5, 10, 15, 20, 25)
df1 <- data.frame(ID, Colour, Flavour, Price)
rm(ID, Colour, Flavour, Price)

# Data frame to merge 2
ID <- c("4", "5")
Colour <- c("Green", "Green")
Flavour <- c("Bitter", "Bitter")
df2 <- data.frame(ID, Colour, Flavour)
rm(ID, Colour, Flavour)

# What I'd like to get
ID <- c("1", "2", "3", "4", "5")
Colour <- c("Red", "Red", "Red", "Green", "Green")
Flavour <- c("Sweet", "Sweet", "Sweet", "Bitter", "Bitter")
Price <- c(5, 10, 15, 20, 25)
RESULT <- data.frame(ID, Colour, Flavour, Price)
rm(ID, Colour, Flavour, Price)

Any help greatly appreciated!!

share|improve this question
    
df1 and df2 have no common columns. In such cases you need to explicitly tell merge which columns in df1 relate to which in df2, using the by.x and by.x arguments to merge. Have a good read of ?merge. –  jbaums Jun 11 at 8:53
    
Hi jbaums, thanks for your comment! Sorry, yes, there're common variables. Just edited. –  user3262756 Jun 11 at 8:57
    
merge doesn't play nicely with that structure (it'll add rows for the NAs). Here's a plyr solution: library(plyr); ab <- rbind.fill(df1, df2); colFun <- function(x){x[which(!is.na(x))]}; ddply(ab, .(ID), function(x){ colwise(colFun)(x) }). But this is a dupe of this question. See also the data.table approach given by @joran there. –  jbaums Jun 11 at 9:08
    
thanks for the link! Tried to search for questions on the topic and couldn't find anything. –  user3262756 Jun 11 at 9:24

3 Answers 3

up vote 1 down vote accepted

Perhaps you don't need to merge at all, if what you describe above is exactly what you need. Does this work:

# Data frame to merge 1
df1 <- data.frame(ID=c("1", "2", "3", "4", "5"),
                  Colour=c("Red", "Red", "Red", NA, NA),
                  Flavour=c("Sweet", "Sweet", "Sweet", NA, NA),
                  Price=c(5, 10, 15, 20, 25),
                  stringsAsFactors=FALSE)

df2<- data.frame(ID2=c("4", "5"),
                  Colour2=c("Green", "Green"),
                  Flavour2=c("Bitter", "Bitter"),
                  stringsAsFactors=FALSE)

# Assuming the two dfs are ordered on ID. If not, do so.
df1[df1[["ID"]] %in% df2[["ID2"]],
    c("Colour", "Flavour")] = df2[c("Colour2", "Flavour2")]

The idea is to simply replace values from df2 into df1 wherever they are needed.

share|improve this answer

I would do it as follows: install gtools package

library(gtools)
df_new <- smartbind(df1,df2)

you will get seven rows, the combination of df1 and df2. to remove unnecessary rows and replace the na's, I use this trick:

df_new <- df_new[-1] #remove the ID column

df_new[4:5,][is.na(df_new[4:5,])] <- df_new[6:7,][!is.na(df_new[6:7,])]

df_new <- df_new[complete.cases(df_new),]

df_new$ID <- c(1:nrow(df_new)) #add ID column back 
share|improve this answer
    
merge(df1, df2, all=T) does the same as smartbind in this case. (And actually your code throws errors for me - could you double-check it?) –  jbaums Jun 11 at 9:26
1  
I just edited it. It should work now. –  Chris Jun 11 at 9:38

Unfortunately merge doesn't play nicely with that structure (it'll add rows for the NAs).

I've retracted my duplicate vote because the question is in fact a bit different.

We can use much of the approach offered by @joran here, but need to change one small detail. Because your data.frames have different sets of columns, you need to use rbind.fill rather than rbind.

library(plyr)
ab <- rbind.fill(df1, df2)
colFun <- function(x){x[which(!is.na(x))]}
ddply(ab, .(ID), function(x){ colwise(colFun)(x) })

  ID Colour Flavour Price
1  1    Red   Sweet     5
2  2    Red   Sweet    10
3  3    Red   Sweet    15
4  4  Green  Bitter    20
5  5  Green  Bitter    25
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