# Count values of a column if value in other column >x and create new data frame

I have the following data structure (which was actually created by counting the occurences of "Result" with ddply):

Experiment Result Count
A      1   123
A      2   30
A      3   5
B      1   120
B      2   20
B      3   5
B      4   1
B      5   1
C      1   130
C      2   21
...

I want to create a similar data frame that groups (calculates sum) of all results that are greater than 2.

Expected outcome:

Experiment Result Count
A      1   123
A      2    30
A     >2     5
B      1   120
B      2    20
B     >2     7
C      1   130
C      2    21
...

Probably plyr can do this but I am new to R and have no idea how to use a custom condition (i.e. result 1,2,>2) and not just the distinct values of a column.

Note: I do not mind the name of the new bin (i.e., may be != '<2').

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data <- data.frame(Experiment = c("a","a","a","b","b","b"),
Result = c(1,2,3,1,4,5), Count = c(1,4,6,5,3,6))
part1 <- subset(data, Result<=2)
part2 <- cbind(ddply(data, .(Experiment), summarise,
Count = sum(Count[Result>2])), Result = ">2")
final <- rbind(part1,part2)
final[with(final, order(Experiment, rev(Result))),]
Experiment Result Count
1           a      1     1
2           a      2     4
41          a     >2     6
4           b      1     5
5           b     >2     9
data
Experiment Result Count
1          a      1     1
2          a      2     4
3          a      3     6
4          b      1     5
5          b      4     3
6          b      5     6
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I accepted your solution because I think it is easier to understand. By the way: the difference between your solution and mine is, that yours also create rows for experiments that don't have results > 2. –  crnv May 31 '12 at 20:03

Here it is base:

A      1   123
A      2   30
A      3   5
B      1   120
B      2   20
B      3   5
B      4   1
B      5   1
C      1   130

#The code:

dat\$bp <- factor(cut(dat\$Result, c(0,2, Inf)),
labels=c(NA, "> 2"))                            #bin dat > 2
LS1 <- split(dat, dat\$bp)                           #split by bins
LS2 <- aggregate(Count~Experiment, LS1[[2]], sum)   #sum by experiment
LS2\$Result <- LS2\$bp <- unique(LS1[[2]]\$bp)         #get columns ready for bind
LS2 <- LS2[, names(LS1[[1]])]
DF <- do.call(rbind, list(LS1[[1]], LS2))[, -4]     #bind it together & drop bp
DF\$Result <- factor(DF\$Result,
levels = unique(DF\$Result))                     #reorder factor
DF[order(DF\$Experiment, DF\$Result), ]               #order dataframe

Which Yields:

Experiment Result Count
1           A      1   123
2           A      2    30
7           A    > 2     5
4           B      1   120
5           B      2    20
8           B    > 2     7
9           C      1   130
10          C      2    21
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Thank you for your answers. In the mean time I came up with this solution:

data2 <- ddply(data[data\$Result>2,],c('Experiment'), function(x) c(Result='>2', Count=sum(x\$sum)))
data3 <-rbind(data[data\$Result<=2,], data2)

(The result still needs to be reorderd.)

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