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I would like to merge two data frames, but do not want to duplicate rows if there is more than one match. Instead I would like to sum the observations on that day.

From ?merge: The rows in the two data frames that match on the specified columns are extracted, and joined together. If there is more than one match, all possible matches contribute one row each.

Here's some example code:

days <- as.data.frame(as.Date(c("2012-1-1", "2012-1-2", "2012-1-3", "2012-1-4")))

names(days) <- "Date"
obs.days <- as.data.frame(as.Date(c("2012-1-2", "2012-1-3", "2012-1-3")))
obs.days$count <- 1
colnames(obs.days) <- c("Date", "Count")
df <- merge(days, obs.days, by.x="Date", by.y="Date", all.x=TRUE)

I would like the final data frame to only list 2012-1-3 one time with a count value of 2.

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Is days the same as z.days? In that case, do you want the final data frame to have 2012-1-{1,2,3,4} with counts {1,2,3,1} ? (Note obs.days has 2 lots of 2012-1-3 and days has 1) –  mathematical.coffee Jan 12 '12 at 1:19
Yes, I just edited z.days to days. Thanks for catching it. Your answer below has the expected output. I had tried this with reshape, but I guess I need to learn plyr next. Thanks! –  Boom Shakalaka Jan 12 '12 at 1:46

1 Answer 1

up vote 4 down vote accepted

I'd suggest you merge them and then aggregate them (essentially perform a SUM for each unique Date).

df <- merge(z.days,obs.days, by.x="Date", by.y="Date", all.x=TRUE)
        Date Count
1 2012-01-01    NA
2 2012-01-02     1
3 2012-01-03     1
4 2012-01-03     1
5 2012-01-04    NA

Now to do the merge you could use aggregate:

df2 <- aggregate(df$Count,list(df$Date),sum)
     Group.1  x
1 2012-01-01 NA
2 2012-01-02  1
3 2012-01-03  2
4 2012-01-04 NA

BUT I'd recommend package plyr, which is awesome! In particular, function ddply.

ddply(df,.(Date),function(x) data.frame(Date=x$Date[1],Count=sum(x$Count)))
        Date Count
1 2012-01-01    NA
2 2012-01-02     1
3 2012-01-03     2
4 2012-01-04    NA

The command ddply(df,.(Date),FUN) essentially does:

for each date in unique(df$Date):
    add to output dataframe FUN( df[df$Date==date,] )

So the function I've provided creates a data frame of one row with columns Date and Count, being the sum of all counts for that date.

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