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I have a large data set in R (1.2M records). Those are some readings for different protocols. Now, I would like to classify this data (which I can do with rpart/RWeka). However, I first need to process the data, and this question is exactly about that.

The data set consists of a pair of outputs (throughput,response time) per set of control parameters, for 4 different protocols. Now, I would like to "bin" these values, and for each set of control parameters choose only those protocols which are in 10% of the maximum throughput (for that set of input params), and in 10% of minimim response time.

I know I can use aggregate to find max throughput, min response time in another data.frame, and then join it with original data.frame. Then, I can use ifelse to find those protocol names matching criteria. However, that seems to me as inefficient, and I don't know how would I encode multiple matches (per set of input values) in a single column.

Any suggestions?

Example (REQS and REPS are input parameters):

A      8     8     10   1
B      8     8     9.5  2
C      8     8     7    1.1
A      16    8     10   4
B      16    8     5    1
C      16    8     1    0.5
A      8     16    8    1
B      8     16    10   1.09
C      8     16    9.5  1

Should produce something like:

8    8    A,B     A,C    A
16   8    A       C      empty
8    16   B,C     A,B,C  B,C
share|improve this question
up vote 2 down vote accepted

ddplyfrom the plyrpackage should be your friend here.

First, write a function that will give you the desired result if you were to get a data.frame with only the rows for 1 set of input parameters:

  THRlim<-0.9*max(dfr$THR) #is this what you want - adapt if needed?
  RTlim<-0.1*min(dfr$RT) #is this what you want - rather unlikely - adapt if needed?
  thrgood<-dfr$PROTO[dfr$THR > THRlim]
  rtgood<-dfr$PROTO[dfr$RT < RTlim]
  bothgood<-union(thrgood, rtgood)
  #return a data.frame with the wanted results for this 'partial' data.frame
  data.frame(REQS=dfr$REQS[1], REPS=dfr$REPS[1], THRGOOD=paste(thrgood, collapse=","), RTGOOD=paste(rtgood, collapse=","), BOTHGOOD=paste(bothgood, collapse=","))

Now you can immediately use ddply (I'm assuming your original data.frame is called orgdfr):

result<-ddply(orgdfr, .(REQS, REPS), forOneSet)
share|improve this answer
I didn't know about ddply, neat thing, thanks... However, this whole thing runs quite slow on this machine, it's still running (3hrs so far). – Nikola Knezevic Aug 30 '11 at 19:57
It was slow because I tried to be smart, and ran it with .parallel=TRUE, using doSMP and 4 worker threads. Since these workers use additional memory, system was thrashing as there is no tomorrow... – Nikola Knezevic Aug 30 '11 at 21:17
(wrt your first comment) I feared as much. You may be better off, if you know for certain that the rows are in the right order, by adding a new column to the data.frame that is a factor, and unites the rows (i.e. values 1,1,1,2,2,2,3,3,3,4,4,4,...). I don't know the internals of ddply, but it seems reasonable this could work. – Nick Sabbe Aug 30 '11 at 21:19
I did something different -- I wrote a small script in Perl to do the same, and it finished its work in 5min. Since this sub-problem was required only for the later step (classification), I was allowed to do it externally. Thanks for the help. – Nikola Knezevic Aug 31 '11 at 9:05

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