Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I could do this by looping through my dataset multiple times but thought there must be a more efficient way to do this through data.table. This is what the dataset looks like:

CaseID         Won     OwnerID      Time_period    Finished
  1            yes        A              1              no
  1            yes        A              3              no
  1            yes        A              5              yes
  2            no         A              4              no
  2            no         A              6              yes
  3            yes        A              2              yes
  4            no         A              3              yes
  5            15         B              2              no

For each row, by owner, I want to generate an average of the amount of cases finished before that time period that are won.

CaseID         Won     OwnerID      Time_period     Finished     AvgWonByOwner  
  1            yes        A              1              no            NA
  1            yes        A              3              no             1
  1            yes        A              5              yes           .5
  2            no         A              4              no            .5
  2            no         A              6              yes           2/3
  3            yes        A              2              yes           NA
  4            no         A              3              yes           1
  5            15         B              2              no            NA

Looking at this in detail, it seems ridiculously complicated. I thought you might be able to do this with some sort of rolling merge, but I don't know how to set a condition where the average is only calculated from Won before the date of the row and where it has to have the same ownerID.

Edit 1: Explanation for numbers in final column

AvgWonByOwner          Explanation
   NA                  t = 1, No cases finished yet, this could be 0 too
   1                   t = 3, case 3 finished and is won, so average wins is 1
  .5                   t = 5, case 3 finished, won; case 4 finished lost; average = .5
  .5                   t = 4, case 3 finished, won; case 4 finished lost; average = .5
  2/3                  t = 6, case 3 finished, won, case 4 finished lost, case 1 finished won, average: 2/3
   NA                  t = 1, No cases finished yet, this could be 0 too
   1                   t = 3, case 3 finished and is won, so average wins is 1
   NA                  t = 1, No cases finished yet, this could be 0 too
share|improve this question
1  
you need to explain how you arrived at those numbers in the last column –  eddi Nov 12 '13 at 21:44
    
Case 1 is finished at point t=5, it doesn't get counted in average until t = 6. Basically it's a strict inequality. –  Luke Nov 12 '13 at 22:27
    
@Luke +1 for a real head scratcher! –  Simon O'Hanlon Nov 12 '13 at 22:29

2 Answers 2

up vote 4 down vote accepted
dt = data.table(structure(list(CaseID = c(1, 1, 1, 2, 2, 3, 4, 5), Won = structure(c(3L, 
3L, 3L, 2L, 2L, 3L, 2L, 1L), .Label = c("15", "no", "yes"), class = "factor"), 
    OwnerID = structure(c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 2L), .Label = c("A", 
    "B"), class = "factor"), Time_period = c(1L, 3L, 5L, 4L, 
    6L, 2L, 3L, 2L), Finished = structure(c(1L, 1L, 2L, 1L, 2L, 
    2L, 2L, 1L), .Label = c("no", "yes"), class = "factor")), .Names = c("CaseID", 
"Won", "OwnerID", "Time_period", "Finished"), row.names = c(NA, 
-8L), class = c("data.table", "data.frame")))

# order
setkey(dt, OwnerID, Time_period)

# calculate the required ratio but including current time
dt[, ratio := cumsum(Finished == "yes" & Won == "yes") /
              cumsum(Finished == "yes"),
     by = list(OwnerID)]

# shift to satisfy the strict inequality as per OP
dt[, avgWon := c(NaN, ratio[-.N]), by = OwnerID]

# take the first one for each time (that is last one from previous time)
# so that all of the outcomes happening at same time are accounted for
dt[, avgWon := avgWon[1], by = key(dt)]

dt[order(OwnerID, CaseID)]
#   CaseID Won OwnerID Time_period Finished     ratio    avgWon
#1:      1 yes       A           1       no       NaN       NaN
#2:      1 yes       A           3       no 1.0000000 1.0000000
#3:      1 yes       A           5      yes 0.6666667 0.5000000
#4:      2  no       A           4       no 0.5000000 0.5000000
#5:      2  no       A           6      yes 0.5000000 0.6666667
#6:      3 yes       A           2      yes 1.0000000       NaN
#7:      4  no       A           3      yes 0.5000000 1.0000000
#8:      5  15       B           2       no       NaN       NaN
share|improve this answer
    
+1 I have no idea how you managed to crack this. Very clever. –  Simon O'Hanlon Nov 13 '13 at 0:12
    
I'm not sure this will work if, for instance, there are multiple records with the same Time_period for a single OwnerID. (The problem is in that "shift" step, which takes a bit of a shortcut...) –  Josh O'Brien Nov 13 '13 at 0:18
    
+1 million. This is awesome. You are the data.table master! –  Luke Nov 13 '13 at 0:24
    
@JoshO'Brien I think it will - there is a step in there to address specifically that issue, but if you think I made a mistake and have an example where it doesn't work I'd love to see it –  eddi Nov 13 '13 at 0:29
1  
@eddi -- Mine just errors out because dt's key gets dropped when doing dt <- rbind(dt, dt[3,]). Reset the key and it works for this (admittedly unimportant) case. I see now, though, what dt[, avgWon := avgWon[1], by = key(dt)] does, and why yours thus works. Very clever (even if it is a bit opaque)! –  Josh O'Brien Nov 13 '13 at 3:55
## Compute a data.table recording the win percentage at end of each time period
B <- dt[Finished=="yes",]
B[,winpct := (cumsum(Won=="yes")/seq_along(Won)),by=OwnerID]

## Shift forward by one time step, as per OP's description of problem
B[,Time_period := Time_period + 1]
setkeyv(B, key(dt))

## Append win percentage column back to original data.table
cbind(dt, AvgWonByOwner=B[dt, winpct, roll=TRUE][["winpct"]])
#    CaseID Won OwnerID Time_period Finished AvgWonByOwner
# 1:      1 yes       A           1       no            NA
# 2:      3 yes       A           2      yes            NA
# 3:      1 yes       A           3       no     1.0000000
# 4:      4  no       A           3      yes     1.0000000
# 5:      2  no       A           4       no     0.5000000
# 6:      1 yes       A           5      yes     0.5000000
# 7:      2  no       A           6      yes     0.6666667
# 8:      5  15       B           2       no            NA
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.