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I want to recalculate a column in my data.table only for certain rows, depending on a Condition, the category (Cat) and the Date.

A row may qualify to be recalculated only if Condition==TRUE. Among all rows with Condition==TRUE, only the rows with the highest Date for the respective Cat should be selected.

A simplified example:

     DF = data.frame(Cat=rep(c("A","B","C"),each=3), Date=rep(c("01-08-2013","01-07-2013","01-04-2013"),3),
            Condition=c(TRUE, TRUE, FALSE, FALSE, FALSE, FALSE, FALSE, FALSE, TRUE),
            Data1=c(1:9), Data2=rep(c(1:3),3), Result=c(1:1))
     DF$Date = as.Date(DF$Date , "%m-%d-%Y")
     DT = data.table(DF)
     DT

        Cat       Date Condition Data1 Data2 Result
     1:   A 2013-01-08      TRUE     1     1      1
     2:   A 2013-01-07      TRUE     2     2      1
     3:   A 2013-01-04     FALSE     3     3      1
     4:   B 2013-01-08     FALSE     4     1      1
     5:   B 2013-01-07     FALSE     5     2      1
     6:   B 2013-01-04     FALSE     6     3      1
     7:   C 2013-01-08     FALSE     7     1      1
     8:   C 2013-01-07     FALSE     8     2      1
     9:   C 2013-01-04      TRUE     9     3      1

I found out how to extract the Cat's and Date's of the rows, for which the Result must be recalculated:

    setkey(DT, Condition, Cat, Date)
    DT[J(TRUE), max(Date), by=Cat]

       Cat         V1
    1:   A 2013-01-08
    2:   C 2013-01-04

However, I don't know how to calculate a new Result for these rows. In this simplified example, the new Result should be Data1+Data2.

Edit:
Inspired by eddi's answer, I came up with two more possible solutions:

Approach using .I:

    DT[DT[Condition==TRUE , .I[which.max(Date)], by=Cat][[2]], Result:=Data1+Data2]

Approach using .SD (see eddi's note of caution):

    max_dates=DT[Condition==TRUE , .SD[which.max(Date)], by=Cat]
    setkey(DT, Cat, Date)
    DT[max_dates, Result:=Data1 + Data2]

Are there any recommendations which solution to choose with regard to speed / efficiency?

share|improve this question
up vote 1 down vote accepted

Something like this will work:

dt = data.table(DF)
max_dates = dt[Condition == TRUE,
               list(Date = max(Date), Condition = TRUE),
               by = Cat]

setkey(dt, Cat, Date, Condition)
dt[max_dates, Result := Data1 + Data2]
dt
#   Cat       Date Condition Data1 Data2 Result
#1:   A 2013-01-04     FALSE     3     3      1
#2:   A 2013-01-07      TRUE     2     2      1
#3:   A 2013-01-08      TRUE     1     1      2
#4:   B 2013-01-04     FALSE     6     3      1
#5:   B 2013-01-07     FALSE     5     2      1
#6:   B 2013-01-08     FALSE     4     1      1
#7:   C 2013-01-04      TRUE     9     3     12
#8:   C 2013-01-07     FALSE     8     2      1
#9:   C 2013-01-08     FALSE     7     1      1

A note of warning: the above relies on max_dates not having a key - if you change it to have a key (e.g. if you do a by by a column that's part of the key), then you'd have to either erase its key, or make it have the same key as dt later in the code for the merge to work correctly.

And here's another approach:

dt = data.table(DF)

dt[, Result := Result + (Data1 + Data2 - Result) * Condition * (Date == max(Date)),
     by = list(Cat, Condition)]
# I could've used ifelse here instead, but ifelse is slow
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