# R: looping to search for max of non-monotonic function

Refer to the R code below. The function (someRfunction) operates on a vector and returns a scalar value. The data are pairs (x,y), where x and y are vectors of length n, which may be large.

I want to know the value of x* such that the result of someRfunction on y where {x>x*} is maximized. The function operates on y values and is non-monotonic in x*. I need to evaluate for all x* (i.e. each element of x). Speed is not an issue if executed once, but the code would be executed many times in a simulation. Is there any way to make this code more efficient/faster?

``````### x and y are vectors of length n
### sort x and y such that they are ordered by descending x
xord <- x[order(-x)]
yord <- y[order(-x)]
maxf <- -99999
maxcut <- NA

for (i in 1:n) {
### yi is a subvector of y that corresponds to y[x>x{i}]
### where x{i} is the (n-i+1)th order statistic of x
yi <- yord[1:(i-1)]
fxi <- someRfunction(yi)
if (fxi>maxf) {
maxf <- fxi
maxcut <- xord[i]
}
}
``````

Thanks.

Edit: let someRfunction(yi)=t.test(yi)\$statistic.

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Your code would likely benefit from significant vectorization. Have a look here for some general suggestions: stackoverflow.com/a/8285793/636656 –  Ari B. Friedman Dec 2 '11 at 15:27
Why not use an optimizer? –  Joshua Ulrich Dec 2 '11 at 15:39

If you can say anything more about the function, particularly whether it is smooth and whether its gradient can be determine, you will get a better answer. At the moment the only increase in speed will be modest due to the ability to pre-specify a vector to hold the results, omit that if-max clause and then use which.max() on the vector. You might want to look at the function `optimx` in package "optimx".
You should be able to vectorize a `t.test\$statistic`-like function, assuming it's something like `mean(vec)/sd(vec)` perhaps with a `length(vec)-1` factor applied. –  BondedDust Dec 2 '11 at 17:01