# matrix operations and component-wise addition using data.table

What is the best way to do component-wise addition if the number of matrices to be summed is not known in advance? More generally, is there a good way to perform matrix (or multi-dimensional array) operations in the context of ? I use `data.table` for its efficiency at sorting and grouping data by several fixed variables, or categories, each comprising a different number of observations.

For example:

1. Find the outer product of vector components given in each observation (row) of the data, returning a matrix for each row.
2. Sum the resulting matrices component-wise over all rows of each grouping of data categories.

Here illustrated with 2x2 matrices and only one category:

``````library(data.table)

# example data, number of rows differs by category t
N <- 5
dt <- data.table(t = rep(c("a", "b"), each = 3, len = N),
x1 = rep(1:2, len = N), x2 = rep(3:5, len = N),
y1 = rep(1:3, len = N), y2 = rep(2:5, len = N))
setkey(dt, t)
> dt
t x1 x2 y1 y2
1: a  1  3  1  2
2: a  2  4  2  3
3: a  1  5  3  4
4: b  2  3  1  5
5: b  1  4  2  2
``````

I attempted a function to compute matrix sum on outer product, `%o%`

``````mat_sum <- function(x1, x2, y1, y2){
x <- c(x1, x2) # x vector
y <- c(y1, y2) # y vector
xy <- x %o% y # outer product (i.e. 2x2 matrix)
sum(xy)  # <<< THIS RETURNS A SINGLE VALUE, NOT WHAT I WANT.
}
``````

which, of course, does not work because `sum` adds up all the elements across the arrays.

I saw this answer using `Reduce('+', .list)` but that seems to require already having a `list` of all the matrices to be added. I haven't figured out how to do that within `data.table`, so instead I've got a cumbersome work-around:

``````# extract each outer product component first...
mat_comps <- function(x1, x2, y1, y2){
x <- c(x1, x2) # x vector
y <- c(y1, y2) # y vector
xy <- x %o% y # outer product (i.e. 2x2 matrix)
xy11 <- xy[1,1]
xy21 <- xy[2,1]
xy12 <- xy[1,2]
xy22 <- xy[2,2]
return(c(xy11, xy21, xy12, xy22))
}

# ...then running this function on dt,
# taking extra step (making column 'n') to apply it row-by-row...
dt[, n := 1:nrow(dt)]
dt[, c("xy11", "xy21", "xy12", "xy22") := as.list(mat_comps(x1, x2, y1, y2)),
by = n]

# ...then sum them individually, now grouping by t
s <- dt[, list(s11 = sum(xy11),
s21 = sum(xy21),
s12 = sum(xy12),
s22 = sum(xy22)),
by = key(dt)]
> s
t s11 s21 s12 s22
1: a   8  26  12  38
2: b   4  11  12  23
``````

and that gives the summed components, which can finally be converted back to matrices.

-
+1 What a great first question. Welcome to Stack Overflow. – Simon O'Hanlon Jun 19 '14 at 9:59

In general, `data.table` is designed to work with columns. The more you transform your problem to col-wise operations, the more you can get out of `data.table`.

Here's an attempt at accomplishing this operation col-wise. Probably there are better ways. This is intended more as a template, to provide an idea on approaching the problem (even though I understand it may not be possible in all cases).

``````xcols <- grep("^x", names(dt))
ycols <- grep("^y", names(dt))
combs <- CJ(ycols, xcols)
len <- seq_len(nrow(combs))
cols = paste("V", len, sep="")
for (i in len) {
c1 = combs\$V2[i]
c2 = combs\$V1[i]
set(dt, i=NULL, j=cols[i], value = dt[[c1]] * dt[[c2]])
}

#    t x1 x2 y1 y2 V1 V2 V3 V4
# 1: a  1  3  1  2  1  3  2  6
# 2: a  2  4  2  3  4  8  6 12
# 3: a  1  5  3  4  3 15  4 20
# 4: b  2  3  1  5  2  3 10 15
# 5: b  1  4  2  2  2  8  2  8
``````

This basically applies the outer product col-wise. Now it's just a matter of aggregating it.

``````dt[, lapply(.SD, sum), by=t, .SDcols=cols]

#    t V1 V2 V3 V4
# 1: a  8 26 12 38
# 2: b  4 11 12 23
``````

HTH

Edit: Modified `cols, c1, c2` a bit to get the output with the correct order for `V2` and `V3`.

-
Many helpful aspects here, especially use of `CJ` and `.SD`, but also the `seq`, `grep` and other string commands that I wasn't familiar enough with. This template extends directly to m-by-n matrices, conveniently inferring dimensions from xcols and ycols. One question is why V2 and V3 are reversed – Scott Jun 19 '14 at 2:09
Thanks for the edit, though I wouldn't want to call the original an "incorrect" order. It's only because of R's default col-wise filling of matrix elements that I listed 11, 21, 12, 22. Interesting that `CJ` in contrast goes row-wise, which I actually find more natural. Maybe I use `cols <- paste("V", combs\$V1, combs\$V2, sep = "")` to help me keep track of indices. – Scott Jun 23 '14 at 10:34

EDIT: For not only 2 elements in "x"s and "y"s, a modified function could be:

``````ff2 = function(x_ls, y_ls)
{
combs_ls = lapply(seq_along(x_ls[[1]]),
function(i) list(sapply(x_ls, "[[", i),
sapply(y_ls, "[[", i)))
rowSums(sapply(combs_ls, function(x) as.vector(do.call(outer, x))))
}
``````

where, "x_ls" and "y_ls" are lists of the respective vectors.

Using it:

``````dt[, as.list(ff2(list(x1, x2), list(y1, y2))), by = t]
#   t V1 V2 V3 V4
#1: a  8 26 12 38
#2: b  4 11 12 23
``````

And on other "data.frames/tables":

``````set.seed(101)
DF = data.frame(group = rep(letters[1:3], c(4, 2, 3)),
x1 = sample(1:20, 9, T), x2 = sample(1:20, 9, T),
x3 = sample(1:20, 9, T), x4 = sample(1:20, 9, T),
y1 = sample(1:20, 9, T), y2 = sample(1:20, 9, T),
y3 = sample(1:20, 9, T), y4 = sample(1:20, 9, T))
DT = as.data.table(DF)

DT[, as.list(ff2(list(x1, x2, x3, x4),
list(y1, y2, y3, y4))), by = group]
#   group  V1  V2  V3  V4  V5  V6  V7  V8  V9 V10 V11 V12 V13 V14 V15 V16
#1:     a 338 661 457 378 551 616 652 468 460 773 536 519 416 766 442 532
#2:     b 108 261 171  99  29  77  43  29 154 386 238 146 161 313 287 121
#3:     c 345 351 432 293 401 421 425 475 492 558 621 502 510 408 479 492
``````

I don't know, though, how would one in "data.table" not state explicitly which columns to use inside the function; i.e. how you could do the equivalent of:

``````do.call(rbind, lapply(split(DF[-1], DF\$group),
function(x)
do.call(ff2, c(list(x[grep("^x", names(x))]),
list(x[grep("^y", names(x))])))))
#  [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10] [,11] [,12] [,13] [,14] [,15] [,16]
#a  338  661  457  378  551  616  652  468  460   773   536   519   416   766   442   532
#b  108  261  171   99   29   77   43   29  154   386   238   146   161   313   287   121
#c  345  351  432  293  401  421  425  475  492   558   621   502   510   408   479   492
``````

Perhaps you could define your function like:

``````ff1 = function(x1, x2, y1, y2)
rowSums(sapply(seq_along(x1),
function(i) as.vector(c(x1[i], x2[i]) %o% c(y1[i], y2[i]))))

dt[, as.list(ff1(x1, x2, y1, y2)), by = list(t)]
#   t V1 V2 V3 V4
#1: a  8 26 12 38
#2: b  4 11 12 23
``````
-
This is clean and compact. One may need to simply adjust the function (and arguments) to accommodate arbitrary dimensions of x and y vectors. – Scott Jun 19 '14 at 2:36
@Scott : I just edited the answer with a workaround, although I'm not sure how useful it can be – alexis_laz Jun 19 '14 at 9:49