So here's a solution that does not use
# creates an example - you have this already...
set.seed(1) # for reproducible example
bigdata <- data.frame(type=rep(c("positive","negative"),5),
# add some duplicates
bigdata <- rbind(bigdata,data.frame(type="",text=bigdata$text[1:5]))
# you start here...
newdf <- with(bigdata,bigdata[order(text,type,decreasing=T),])
result <- aggregate(newdf,by=list(text=newdf$text),head,1)[2:3]
bigdata by text and type, in decreasing order, so that for a given text, the empty
type will appear after any non-empty
type. Then we extract only the first occurrence of each type for every
If your data really is "big", then a
data.table solution will probably be faster.
DT <- as.data.table(bigdata)
setkey(DT, text, type)
DT.result <- DT[, list(type = type[.N]), by = text]
This does basically the same thing, but since
setkey sorts only in increasing order, we use
type[.N] to get the last occurrence of
type for a every
.N is a special variable that holds the number of elements for that group.
Note that the current development version implements a function
setorder(), which orders a
data.table by reference, and can order in both increasing and decreasing order. So, using the devel version, it'd be:
require(data.table) # 1.9.3
setorder(DT, text, -type)
DT[, list(type = type[1L]), by = text]