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Using a data.table, which would be the fastest way to "sweep" out a statistic across a selection of columns?

Starting with (considerably larger versions of ) DT

p <- 3
DT <- data.table(id=c("A","B","C"),x1=c(10,20,30),x2=c(20,30,10))
DT.totals <- DT[, list(id,total = x1+x2) ]

I'd like to get to the following data.table result by indexing the target columns (2:p) in order to skip the key:

    id  x1  x2
[1,]    A   0.33    0.67
[2,]    B   0.40    0.60
[3,]    C   0.75    0.25


share|improve this question
up vote 3 down vote accepted

I believe that something close to the following (which uses the relatively new set() function) will be quickest:

DT <- data.table(id = c("A","B","C"), x1 = c(10,20,30), x2 = c(20,30,10))
total <- DT[ , x1 + x2]

rr <- seq_len(nrow(DT))
for(j in 2:3) set(DT, rr, j, DT[[j]]/total) 
#      id        x1        x2
# [1,]  A 0.3333333 0.6666667
# [2,]  B 0.4000000 0.6000000
# [3,]  C 0.7500000 0.2500000

FWIW, calls to set() takes the following form:

# set(x, i, j, value), where: 
#     x is a data.table 
#     i contains row indices
#     j contains column indices 
#     value is the value to be assigned into the specified cells

My suspicion about the relative speed of this, compared to other solutions, is based on this passage from data.table's NEWS file, in the section on changes in Version 1.8.0:

o   New function set(DT,i,j,value) allows fast assignment to elements
    of DT. Similar to := but avoids the overhead of [.data.table, so is
    much faster inside a loop. Less flexible than :=, but as flexible
    as matrix subassignment. Similar in spirit to setnames(), setcolorder(),
    setkey() and setattr(); i.e., assigns by reference with no copy at all.

        M = matrix(1,nrow=100000,ncol=100)
        DF =
        DT =
        system.time(for (i in 1:1000) DF[i,1L] <- i)   # 591.000s
        system.time(for (i in 1:1000) DT[i,V1:=i])     #   1.158s
        system.time(for (i in 1:1000) M[i,1L] <- i)    #   0.016s
        system.time(for (i in 1:1000) set(DT,i,1L,i))  #   0.027s
share|improve this answer
Thanks for the answer. I've upgraded to data.table 1.8.0, and successfully ran the test code above. I do get an elaborate warning (won't fit in here) about coercion to double when both numerator and denominators are integer columns from data.tables. I'll edit the question to that effect. – M.Dimo Apr 11 '12 at 19:40
I'm having a tough time with edits today: No line feed. Anyway, here's the code: for(j in 2:p){ set( dt , allrows , j , dt[[j]] / denom[[2]] ) } and for both dt and denom, columns 2 to p are integer. The warning I get is – M.Dimo Apr 11 '12 at 19:47
"Warning message: In set(dt, allrows, j, dt[[j]]/denom[[2]]) : Coerced 'double' RHS to 'integer' to match the column's type; may have truncated precision. Either change the target column to 'double' first (by creating a new 'double' vector length 16863 (nrows of entire table) and assign that; i.e. 'replace' column), or coerce RHS to 'integer' (e.g. 1L, NA_[real|integer]_, as.*, etc) to make your intent clear and for speed. Or, set the column type correctly up front when you create the table and stick to it, please." – M.Dimo Apr 11 '12 at 19:53
You should pay close attention to those warnings. Try out the following to see why. D1 <- data.table(1:5); class(D1[[1]]); set(D1, 1:5, 1L, 0.33); D1. Compare that with what you probably wanted to see: D2 <- data.table(as.numeric(1:5)); class(D2[[1]]); set(D2, 1:5, 1L, 0.33); D2. And then go about converting the class of the columns you are going to sweep to numeric rather than integer (either in their initial construction, or after the fact by something like D1[[1]] <- as.numeric(D1[[1]])). (There might be more efficient ways to do that last operation.) – Josh O'Brien Apr 11 '12 at 21:39
@Josh And when plonking (either with set() or :=) the new column into the column slot (instead of passing 1:nrow as i), the coercion warning goes away (coercion is only necessary when updating subsets of the column). – Matt Dowle Apr 12 '12 at 5:42

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