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For different values of id I have a start and end dates with a relative quantity, var. For each records (for the same id), start date is the same then the previous end date (here it comes roll...).

These periods span across multiple months and possibly years. My need is to split the quantity in var into parts relative to the actual days in each months. e.g.

start       end         var
30/01/2006  20/02/2006  104

above I have 21 days, the lower limit will belong to the previous period and the upper to the current, so 1/21 of 104 will be assigned to Jan 2006 and the rest to Feb 2006

I currently have two methods, listed below with dummy data, but they are pretty slow and I was wondering if someone may help with me out to speed them up.

library(data.table)

# data
set.seed(1)
nsample <- 200L  # To increase the data size just change nsample 

dt <- data.table(id= 1L:nsample)
dt <- dt[, list(date=sample(seq(as.Date("2006-01-01"), as.Date("2012-01-01"), "day"), 51, F)), by=id]

setkey(dt)
dt <- dt[, {tmp <- embed(as.vector(date), 2);list(start = structure(tmp[,2], class="Date"),
                                                  end   = structure(tmp[,1], class="Date"),
                                                  var   = rnorm(50, 100, 5))}, by=id]
setkey(dt, id, end)

> dt[1:4]
   id      start        end       var
1:  1 2006-01-30 2006-02-20 104.41542
2:  1 2006-02-20 2006-05-15 106.89356
3:  1 2006-05-15 2006-08-21 106.71162
4:  1 2006-08-21 2006-09-30  96.21729

# Method 1

dt1 <- copy(dt)

system.time({
  dt1[, id2 := 1:.N]
  tmp <- dt1[, list(id = id,
                   date = seq(start+1, end, "day"),
                   var = var), by=id2]
  tmp[, var := var/(.N), by=id2]
  res1 <- tmp[, list(var = sum(var)), by=list(id, period = paste(year(date), month(date), sep="-"))]
})

   #user  system elapsed 
   #1.92    0.00    1.92 

# Method 2

dt2 <- copy(dt)

system.time({
  dt2[, Ndays := as.integer(end)-as.integer(start)]
  tmp <- dt2[, list(date = seq(min(start)+1, max(end), "day")), by=id]
  setkey(tmp)
  res2 <- dt2[ tmp, roll=-Inf][ end >= start,list(var = sum(var/Ndays)), by=list(id, period = paste(year(end), month(end), sep="-")) ]
})

   #user  system elapsed 
   # 0.7     0.0     0.7 


> sum(dt$var) == sum(res1$var)
[1] TRUE
> sum(dt$var) == sum(res2$var)
[1] TRUE

> all.equal(res1, res2)
[1] TRUE

> res2[1:4]
   id period        var
1:  1 2006-1   4.972163
2:  1 2006-2 109.623593
3:  1 2006-3  39.448815
4:  1 2006-4  38.176273
share|improve this question
    
res1 and res2 are different for me –  eddi Sep 16 '13 at 21:18
1  
oh I see, you have a typo, it should be end instead of start in the last by –  eddi Sep 16 '13 at 21:39
    
@eddi Yeah I'm sorry. I was using roll=T before, which then needs start. Forgot to change to end –  Michele Sep 16 '13 at 22:33

1 Answer 1

up vote 2 down vote accepted

This will be a bit faster (it's 3x faster for me than your second version). I optimized several things in your second version, that you can see below:

# let's just divide here instead of later
dt2[, var := var/(as.integer(end)-as.integer(start))]
tmp <- dt2[, list(date = seq(min(start)+1, max(end), "day")), by=id]
# data is sorted, so no need to sort again, just set key without sort
setattr(tmp, "sorted", c("id", "date"))

res2 <- dt2[tmp, roll=-Inf][,
            list(var = sum(var)),
            # doing the paste in by slows it down quite a bit, so let's postpone it
            by=list(id, year(end), month(end))][,
            `:=`(period = paste(year, month, sep = '-'), year = NULL, month = NULL)]

Re comment about large sizes - you could do all of the above inside dt2. It'll be slower, but I it won't create a large tmp:

dt2[, var := var/(as.integer(end)-as.integer(start))][,
    {tmp = data.table(date = seq(min(start)+1, max(end), "day"));
     setattr(tmp, 'sorted', 'date');
     setattr(.SD, 'sorted', 'end');
     .SD[tmp, roll = -Inf][,
         list(var = sum(var)), by = list(year(end), month(end))][,
         `:=`(period = paste(year, month, sep = '-'), year = NULL, month = NULL)]
    }, by = id]
share|improve this answer
    
I see, thanks! I'll check tomorrow at the pc... but I can see the improvements already. Do you think there is a possibility to achive the above, throu method 2 but without defining the sequences for all the ids? Prob it doesn't make so sense cause in that case the roll won't be meaningful –  Michele Sep 16 '13 at 22:39
    
@Michele I can't think of a way, sorry –  eddi Sep 16 '13 at 22:51
    
fine, your answer does already help me a lot. I'll just wait before I accept to see if someone else replies too. Anyway, my question in the comment came up cause in the real case doing the sequence for each id value leads to tmp having 2.19e+10 rows (6e+6 id unique values and 10 years data) –  Michele Sep 17 '13 at 9:18
1  
@Michele see edit –  eddi Sep 17 '13 at 15:08

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