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I want to add a new column to my data.table containing the cumulative product of Data1 based on the Date. The cumulative product should be calculated for each category (Cat) and should start with the latest available Date.

Sample data:

     DF = data.frame(Cat=rep(c("A","B"),each=4), Date=rep(c("01-08-2013","01-07-2013","01-04-2013","01-03-2013"),2), Data1=c(1:8))
     DF$Date = as.Date(DF$Date , "%m-%d-%Y")
     DT = data.table(DF)
     DT[ , Data1_cum:=NA_real_]
     DT

        Cat      Date Data1 Data1_cum
     1:  A 2013-01-08     1    NA
     2:  A 2013-01-07     2    NA
     3:  A 2013-01-04     3    NA
     4:  A 2013-01-03     4    NA
     5:  B 2013-01-08     5    NA
     6:  B 2013-01-07     6    NA
     7:  B 2013-01-04     7    NA
     8:  B 2013-01-03     8    NA

The result should look like this:

        Cat      Date Data1 Data1_cum
     1:  A 2013-01-08     1    1
     2:  A 2013-01-07     2    2
     3:  A 2013-01-04     3    6
     4:  A 2013-01-03     4    24
     5:  B 2013-01-08     5    5
     6:  B 2013-01-07     6    30
     7:  B 2013-01-04     7    210
     8:  B 2013-01-03     8    1680

I figured out that I could do something similar using cumprod(), but I do not know how to handle the categories. NAs in Data1 should be ignored / treated as 1. The real dataset has about 8 million rows and 1000 categories.

share|improve this question
    
you say there are 8M entries with 1000 categories. That means you've got about 8000 entries per category. Even if the smallest value is 2, the cumulative product would max to be 2^8000, isn't it? Wouldn't most of your values just be Infinity? –  Arun May 12 '13 at 21:47
    
Yes, but fortunately there are primarily NAs and most numbers smaller than 1. –  Cake May 12 '13 at 21:52
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1 Answer

up vote 2 down vote accepted

If the only looksissue is the ordering...

DT[order(Date, decreasing=TRUE), Data1_cum := cumprod(Data1), by=Cat]
DT
   Cat       Date Data1 Data1_cum
1:   A 2013-01-08     1         1
2:   A 2013-01-07     2         2
3:   A 2013-01-04     3         6
4:   A 2013-01-03     4        24
5:   B 2013-01-08     5         5
6:   B 2013-01-07     6        30
7:   B 2013-01-04     7       210
8:   B 2013-01-03     8      1680

However, if you have NA's to deal with, then there is a few extra steps:

Note: If you shuffle the order of the rows, your results can vary. Careful with how you implement the order(.) command

  ## Let's add some NA values
  DT <- rbind(DT, DT)
  DT[c(2, 6, 11, 15), Data1 := NA]

  # shuffle the rows, to make sure this is right
  set.seed(1)
  DT <- DT[sample(nrow(DT))]

Assigning the cumulative product:

Leaving NA's

## If you want to leave the NA's as NA's in the cum prod, use: 
DT[ , Data1_cum := NA_real_ ]
DT[ intersect(order(Date, decreasing=TRUE), which(!is.na(Data1))) 
      , Data1_cum := cumprod(Data1)
      , by=Cat]

# View the data, orderly
DT[order(Date, decreasing=TRUE)][order(Cat)]

     Cat       Date Data1 Data1_cum
  1:   A 2013-01-08     1         1
  2:   A 2013-01-08     1         1
  3:   A 2013-01-07     2         2
  4:   A 2013-01-07    NA        NA  <~~~~~~~  Note that the NA rows have the value of the prev row     
  5:   A 2013-01-04     3         6
  6:   A 2013-01-04    NA        NA  <~~~~~~~  Note that the NA rows have the value of the prev row
  7:   A 2013-01-03     4        24
  8:   A 2013-01-03     4        96
  9:   B 2013-01-08     5         5  
 10:   B 2013-01-08     5        25
 11:   B 2013-01-07     6       150
 12:   B 2013-01-07    NA        NA  <~~~~~~~  Note that the NA rows have the value of the prev row  
 13:   B 2013-01-04     7      1050
 14:   B 2013-01-04    NA        NA  <~~~~~~~  Note that the NA rows have the value of the prev row    
 15:   B 2013-01-03     8      8400
 16:   B 2013-01-03     8     67200

Replacing NA's with value of previous Row

## If instead you want to treat the NA's as 1, use: 
DT[order(Date, decreasing=TRUE), Data1_cum := {Data1[is.na(Data1)] <- 1;  cumprod(Data1 [order(Date, decreasing=TRUE)] )}, by=Cat]

# View the data, orderly
DT[order(Date, decreasing=TRUE)][order(Cat)]

    Cat       Date Data1 Data1_cum
 1:   A 2013-01-08     1         1
 2:   A 2013-01-08     1         1
 3:   A 2013-01-07     2         2
 4:   A 2013-01-07    NA         2   <~~~~~~~ Rows with NA took on values of the previous Row
 5:   A 2013-01-04     3         6
 6:   A 2013-01-04    NA         6   <~~~~~~~ Rows with NA took on values of the previous Row
 7:   A 2013-01-03     4        24
 8:   A 2013-01-03     4        96
 9:   B 2013-01-08     5         5
10:   B 2013-01-08     5        25
11:   B 2013-01-07     6       150
12:   B 2013-01-07    NA       150   <~~~~~~~ Rows with NA took on values of the previous Row
13:   B 2013-01-04     7      1050
14:   B 2013-01-04    NA      1050   <~~~~~~~ Rows with NA took on values of the previous Row
15:   B 2013-01-03     8      8400
16:   B 2013-01-03     8     67200

Alternatively, If you already have the cumulative product and simply want to remove the NA's you can do so as follows:

# fix the NA's with the previous value
DT[order(Date, decreasing=TRUE),
      Data1_cum := {tmp <- c(0, head(Data1_cum, -1));  
      Data1_cum[is.na(Data1_cum)] <- tmp[is.na(Data1_cum)]; 
      Data1_cum }
      , by=Cat ]
share|improve this answer
    
Thank you Ricardo and Simon. I don't want NAs in the cum column, but I'm not sure yet, which of your solutions to choose for treating the NAs. I think replacing them upfront could be more efficient when using the Data1 multiple times in a similar way. –  Cake May 12 '13 at 21:42
    
@Cake, replacing them is fine. The issue is ordering them. When using toy sample data where the columns are already ordered, the results are different than if your columns are out of order. –  Ricardo Saporta May 12 '13 at 21:43
    
setting the key to date unfortunately will not address this because it would be the reverse order –  Ricardo Saporta May 12 '13 at 21:45
    
Isn't the answer just: DT[is.na(Data1), Data1 := 1L][order(Date, decreasing=TRUE), Data1_cum := cumprod(Data1), by=Cat] or am I missing something? –  Arun May 12 '13 at 21:48
    
@Arun, if you are changing the original data, then yep. I was working under the impression that the original data was to be preserved –  Ricardo Saporta May 12 '13 at 21:49
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