# Why is my recursive function so slow in R?

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The following takes about 30 seconds to run whereas I would expect it to be nearly instant. Is there a problem with my code?

``````x <- fibonacci(35);

fibonacci <- function(seq) {
if (seq == 1) return(1);
if (seq == 2) return(2);
return (fibonacci(seq - 1) + fibonacci(seq - 2));
}
``````
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Where's the memoization? – Ignacio Vazquez-Abrams Jul 24 '11 at 13:35
In addition to implementing a better algorithm as noted above, you could also try some of the R patches that Radford Neal has been working on. radfordneal.wordpress.com/2010/09/03/… – Ari B. Friedman Jul 24 '11 at 13:39
I'm not sure about your question, but are you sure that is correctly implementing the Fibonacci sequence?. Surely your code will generate `1,2,3,5,8,...` whereas the correct sequence is `0,1,1,2,3,5,8,...` ? – Peter K. Jul 24 '11 at 13:39
Not familiar with memoization and how it is implemented in R. I'm implementing Fibonacci as specified here projecteuler.net/index.php?section=problems&id=2 – deltanovember Jul 24 '11 at 13:51

Patrick Burns gives an example in R Inferno of one way to do memoization in R with `local()` and `<<-`. In fact, it's a fibonacci:

``````fibonacci <- local({
memo <- c(1, 1, rep(NA, 100))
f <- function(x) {
if(x == 0) return(0)
if(x < 0) return(NA)
if(x > length(memo))
stop("’x’ too big for implementation")
if(!is.na(memo[x])) return(memo[x])
ans <- f(x-2) + f(x-1)
memo[x] <<- ans
ans
}
})
``````
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 well, that's a good idea. Inferno and memoization, that sounds really magically. We normally call that a global variable :-) But anyway, I didn't come to the idea of using recursion in linear time! Good note. – Tomas Jul 24 '11 at 17:54 Or there's the memoise package... – hadley Jul 25 '11 at 1:28 Late addition: there are several options for memoization: see this post. – Iterator Oct 17 '11 at 18:44

That just provided a nice opportunity to plug Rcpp which allows us to add C++ functions easily to R.

So after fixing your code slightly, and using the packages inline (to easily compile, load and link short code snippets as dynamically loadable functions) as well as rbenchmark to time and compare functions, we end up with a stunning 700-fold increase in performance:

``````R> print(res)
test replications elapsed relative user.self sys.self
2 fibRcpp(N)            1   0.092    1.000      0.10        0
1    fibR(N)            1  65.693  714.054     65.66        0
R>
``````

Here we see elapsed times of 92 milliseonds versus 65 seconds, for a relative ratio of 714. But by now everybody else told you not to do this directly in R.... The code is below.

``````## inline to compile, load and link the C++ code
require(inline)

## we need a pure C/C++ function as the generated function
## will have a random identifier at the C++ level preventing
## us from direct recursive calls
incltxt <- '
int fibonacci(const int x) {
if (x == 0) return(0);
if (x == 1) return(1);
return (fibonacci(x - 1)) + fibonacci(x - 2);
}'

## now use the snipped above as well as one argument conversion
## in as well as out to provide Fibonacci numbers via C++
fibRcpp <- cxxfunction(signature(xs="int"),
plugin="Rcpp",
incl=incltxt,
body='
int x = Rcpp::as<int>(xs);
return Rcpp::wrap( fibonacci(x) );
')

## for comparison, the original (but repaired with 0/1 offsets)
fibR <- function(seq) {
if (seq == 0) return(0);
if (seq == 1) return(1);
return (fibR(seq - 1) + fibR(seq - 2));
}

library(rbenchmark)

N <- 35     ## same parameter as original post
res <- benchmark(fibR(N),
fibRcpp(N),
columns=c("test", "replications", "elapsed",
"relative", "user.self", "sys.self"),
order="relative",
replications=1)
print(res)  ## show result
``````

And for completeness, the functions also produce the correct output:

``````R> sapply(1:10, fibR)
[1]  1  1  2  3  5  8 13 21 34 55
R> sapply(1:10, fibRcpp)
[1]  1  1  2  3  5  8 13 21 34 55
R>
``````
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Hmmm, Rcpp... really nice and easy as it seems!! Nice ;-) It also seems you try to justify exponential algorithms ;) – Tomas Jul 25 '11 at 8:30
Hm, at 92 ms for the compiled code, it's not implementing the exponential algorithm, even on a fast computer. The compiler must be optimizing in some clever way. I don't think this is a fair test. – Harlan Jul 25 '11 at 12:42
The inline package is driven by R and hence gets the standard gcc/g++ options. So I call it a fair test :) because it shows you the compilercan do for you if you translate an R three-liner into a C++ three-liner. In any event, you can study the asm code if you really want to. – Dirk Eddelbuettel Jul 25 '11 at 12:48
Heh, all true. But it doesn't illustrate whether and where R has inefficiencies in its interpreter. Which is more relevant to us who think that calling C from R is an admission that R is fundamentally a broken language (or, at least, a fundamentally broken implementation of S). – Harlan Jul 28 '11 at 13:59
With all due respect, that is nonsense. Any given system will have a particular weakness. My point is that we can build better systems by combining the relevant strengths---and can even do so easily as this example showed---and not to get uptight over the weaknesses. See for example Chambers' presentation at Stanford from last fall: It is always about combining languages and tools. And my humble point is that Rcpp helps you combine the better parts of C++ and R. But you are of course free to throw R in the bin and use whatever is fashionable this week. Good luck. – Dirk Eddelbuettel Jul 28 '11 at 14:08

:-) because you use exponential algorithm!!! So for fibonacci number N it has to call the function 2^N times, which 2^35, which is heck of a number.... :-)

Use linear algorithm:

``````fib = function (x)
{
if (x == 0)
return (0)
n1 = 0
n2 = 1
for (i in 1:(x-1)) {
sum = n1 + n2
n1 = n2
n2 = sum
}
n2
}
``````

Sorry, edit: the compexity of the exponential recursive algorithm is not O(2^N) but O(fib(N)), as Martinho Fernandes greatly joked :-) Really a good note :-)

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Because you are using one of the worst algorithms in the world!

Complexity of which is `O(fibonacci(n))` = `O((golden ratio)^n)` and `golden ratio is 1.6180339887498948482…`

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+1 for absolutely great link. – Jan Hudec Jul 28 '11 at 7:35