# Optimal method of comparing a vector of numbers to values in another vector

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Suppose I have two vectors of values:

a <- c(1,3,4,5,6,7,3)
b <- c(3,5,1,3,2)

And I want to apply some function, FUN, to each of the inputs of a against the whole of b, what's the most efficient way to do it.

More specifically, in this case for each of the elements in a I want to know for each value of 'a', how many of the elements in b are greater than or equal to that value. The naïve approach is to do the following: sum(a < b)

Of course, this doesn't work as it attempts to iterate over each of the vectors in parallel and gives me the "longer object length is not a multiple of shorter object length" warning. The output, btw, of that command is 3.

However, in my situation, what I'd like to see is an output that is:

0 2 4 4 5 5 2

Of course, I realize I can do it using a for loop as such:

out <- c()
for (i in a) {
for (i in a) { out[length(out) + 1] = sum(b<i)}
}

Likewise, I could use sapply as such:

sapply(a, function(x)sum(b<x))

However, I'm trying to be a good R programmer and stay away from for loops and sapply seems to be very slow. Are there other alternatives?

For what it's worth, I'm doing this a couple of million times where length(b) is always less than length(a) and length(a) ranges from 1 to 30.

-
 Do both the vectors a,b vary in each of your million iterations, or is one of them fixed? – Prasad Chalasani Feb 24 '11 at 21:01 Both vectors are generated multiple different times while going through all of the data. So, yes, they do vary, each one has about 10000 different values. – Pridkett Feb 24 '11 at 21:48

Try this:

findInterval(a - 0.5, sort(b))

Speed improvement from a) avoiding sort, and b) avoiding overhead in findInterval and order by using simpler .Internal wrappers:

order2 = function(x) .Internal(order(T, F, x))

findInterval2 = function(x, vec, rightmost.closed=F, all.inside=F) {
nx <- length(x)
index <- integer(nx)
.C('find_interv_vec', xt=as.double(vec), n=length(vec),
x=as.double(x), nx=nx, as.logical(rightmost.closed),
as.logical(all.inside), index, DUP = FALSE, NAOK=T,
PACKAGE='base')
index
}

> system.time(for (i in 1:10000) findInterval(a - 0.5, sort(b)))
user  system elapsed
1.22    0.00    1.22
> system.time(for (i in 1:10000) sapply(a, function(x)sum(b<x)))
user  system elapsed
0.79    0.00    0.78
> system.time(for (i in 1:10000) rowSums(outer(a, b, ">")))
user  system elapsed
0.72    0.00    0.72
> system.time(for (i in 1:10000) findInterval(a - 0.5, b[order(b)]))
user  system elapsed
0.42    0.00    0.42
> system.time(for (i in 1:10000) findInterval2(a - 0.5, b[order2(b)]))
user  system elapsed
0.16    0.00    0.15

The complexity of defining findInterval2 and order2 is probably only warranted if you have heaps of iterations with fairly small N.

Also timings for larger N:

> a = rep(a, 100)
> b = rep(b, 100)
> system.time(for (i in 1:100) findInterval(a - 0.5, sort(b)))
user  system elapsed
0.01    0.00    0.02
> system.time(for (i in 1:100) sapply(a, function(x)sum(b<x)))
user  system elapsed
0.67    0.00    0.68
> system.time(for (i in 1:100) rowSums(outer(a, b, ">")))
user  system elapsed
3.67    0.26    3.94
> system.time(for (i in 1:100) findInterval(a - 0.5, b[order(b)]))
user  system elapsed
0       0       0
> system.time(for (i in 1:100) findInterval2(a - 0.5, b[order2(b)]))
user  system elapsed
0       0       0
-
 @Charles: this is slower than the sapply solution of the OP -- I tested it by doing system.time( replicate( 10000, ... ) ). – Prasad Chalasani Feb 24 '11 at 21:02 For small a/b, the sort dominates the run-time. b[order(b)] benchmarks about 4x faster than sort(b), and twice as fast as the sapply original on my box. For larger a/b (rep(100)), you get orders of magnitude improvement by using findInterval. – Charles Feb 24 '11 at 21:09 Most of the remaining overhead is in stuff like the is.sorted and is.na checks in findInterval, and the various checks in order. If you define thinner wrappers around those functions (eg order2 = function(x) .Internal(order(T, F, x))), then it gets about another 3x faster. – Charles Feb 24 '11 at 21:16 Nicely done @Charles +1 - a nice solution using a function I haven't come across much. Can you post your findInterval2 and order2 functions to complete the answer? – Gavin Simpson Feb 24 '11 at 21:27 +1 agree with @Gavin. – Prasad Chalasani Feb 24 '11 at 21:31
show 1 more comment

One option is to use outer() to apply the binary operator function > to a and b:

> outer(a, b, ">")
[,1]  [,2]  [,3]  [,4]  [,5]
[1,] FALSE FALSE FALSE FALSE FALSE
[2,] FALSE FALSE  TRUE FALSE  TRUE
[3,]  TRUE FALSE  TRUE  TRUE  TRUE
[4,]  TRUE FALSE  TRUE  TRUE  TRUE
[5,]  TRUE  TRUE  TRUE  TRUE  TRUE
[6,]  TRUE  TRUE  TRUE  TRUE  TRUE
[7,] FALSE FALSE  TRUE FALSE  TRUE

The answer to the Q is then given by the row sums of the result above:

> rowSums(outer(a, b, ">"))
[1] 0 2 4 4 5 5 2

For this example data set, this solution is slightly faster that findIntervals() but not by much:

> system.time(replicate(1000, findInterval(a - 0.5, sort(b))))
user  system elapsed
0.131   0.000   0.132
> system.time(replicate(1000, rowSums(outer(a, b, ">"))))
user  system elapsed
0.078   0.000   0.079

It is also slightly faster than the sapply() version, but marginally:

> system.time(replicate(1000, sapply(a, function(x)sum(b<x))))
user  system elapsed
0.082   0.000   0.082

@Charles notes that most of the time in the findInterval() example is used by sort(), which can be circumvented via order(). When this is done, the findInterval() solution is faster than the outer() solution:

> system.time(replicate(1000, findInterval(a - 0.5, b[order(b)])))
user  system elapsed
0.049   0.000   0.049
-

Just a add-on note: if you know the range of the values for each vector, then it might be quicker to calculate the max and mins first, e.g.

order2 = function(x) .Internal(order(T, F, x))
findInterval2 = function(x, vec, rightmost.closed=F, all.inside=F) {
nx <- length(x)
index <- integer(nx)
.C('find_interv_vec', xt=as.double(vec), n=length(vec),
x=as.double(x), nx=nx, as.logical(rightmost.closed),
as.logical(all.inside), index, DUP = FALSE, NAOK=T,
PACKAGE='base')
index
}

f <- function(a, b) {
# set up vars
a.length <- length(a)
b.length <- length(b)
b.sorted <- b[order2(b)]
b.min <- b.sorted[1]
b.max <- b.sorted[b.length]
results <- integer(a.length)

# pre-process minimums
v.min <- which(a <= b.min)

# pre-process maximums
v.max <- which(a > b.max)
results[v.max] <- b.max

# compare the rest
ind <- c(v.min, v.max)
results[-ind] <- findInterval2(a[-ind] - 0.5, b.sorted)
results
}

Which gives the following timeings

> N <- 10
> n <- 1e5
> b <- runif(n, 0, 100)
> a <- runif(n, 40, 60) # NB smaller range of values than b
> summary( replicate(N, system.time(findInterval2(a - 0.5, b[order2(b)]))[3]) )
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
0.0300  0.0300  0.0400  0.0390  0.0475  0.0500
> summary( replicate(N, system.time(f(a, b))[3]) )
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.
0.010   0.030   0.030   0.027   0.030   0.040

However, if you don't know the ranges ahead of time, or can't make an educated guess about them, then this would probably be slower.

-

I'd be very wary of using the internals of R in production code. The internals can easily change between releases.

sort.int is faster than sort - and it's just plain weird that b[order(b)] is faster than sort.int(b). R could definitely improve its sorting...

And unless you use the internals of R, it seems like using vapply is actually faster:

> system.time(for (i in 1:10000) findInterval(a - 0.5, sort(b)))
user  system elapsed
0.99    0.00    0.98
> system.time(for (i in 1:10000) findInterval(a - 0.5, sort.int(b)))
user  system elapsed
0.8     0.0     0.8
> system.time(for (i in 1:10000) findInterval(a - 0.5, b[order(b)]))
user  system elapsed
0.32    0.00    0.32
> system.time(for (i in 1:10000) sapply(a, function(x)sum(b<x)))
user  system elapsed
0.61    0.00    0.59
> system.time(for (i in 1:10000) vapply(a, function(x)sum(b<x), 0L))
user  system elapsed
0.18    0.00    0.19
-