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

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 warning:

longer object length is not a multiple of shorter object length

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

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
``````
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