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I'm merging two data frames, a main data set and a lookup table, based on multiple factor (key) variables, and I'd like to have a quick way of seeing which combinations of these key variables in the main data did not match in the lookup table. Is there an option in the merge function that would allow me to do this? The best I can think of at the moment is to use the all.x=T option and then look at the rows for which one of the vars that I merged in is NA. Surely there must be a better way...

Here's my code, for what it's worth:

a.lighting.all.2 <- merge(a.lighting.all.2, a.lookup.by.meas.2,
                          by = c("measure.category", "measure.subcategory",
                                 "measure", "fund.category"))
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What is wrong with just using NA to figure out which rows didn't match? – Maiasaura Sep 24 '12 at 23:07
up vote 1 down vote accepted

Here is a function for diff-ing two data.frames with identical headers:

df.diff <- function(df1, df2) {
   is.dup <- duplicated(rbind(df2, df1))
   is.dup <- tail(is.dup, nrow(df1))
   df1[!is.dup, ]
}

So you can run:

df.diff(main[by.cols], lookup[by.cols])
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Nice. I was hoping for a built-in way of doing this, but this is a nice elegant solution. Is there a good package for doing QC of large data sets, or do most folks just write their own custom QC functions? – Chris Newton Sep 25 '12 at 19:27

As far as I can see merge doesn't have this option but subsetting by NAs though is pretty quick and easy.

df      <- data.frame(cat=c("a","a","b","b"),num=(1:4))
df2     <- data.frame(cat=c("a","a","b","c"),num=(1:4))
mergedf <- merge(df,df2,by="cat",all=TRUE)
mergedf
mergedf [rowSums(is.na(mergedf))>0 ,] # not if you have NAs already before merge

you can also do things like this:

df2 [ !df2$cat %in% df$cat ,]

and for specific rows not merged:

df$ID   <- 1:length(df[,1])
df2$ID  <- (length(df[,1])+1):(length(df[,1])+length(df2[,1]))
mergedf <- merge(df,df2,by="cat", all=FALSE)

df2 [!df2$ID %in% mergedf$ID.y ,]

with an example of data perhaps someone can help much better

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