# Iterative and recursive version has same complexity?

Whether the iterative and recursive versions of two algorithms have same complexity? Say for example the iterative and recursive versions of Fibonacci series.

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There are several iterative algorithms for computing the Fibonacci sequence and several recursive ones, with varying complexity. –  larsmans Dec 16 '11 at 9:34
I think you can reasonably say that if they don't have the same complexity, then they are not iterative and recursive versions of "the same algorithm". They're different algorithms, and of course different algorithms to calculate the same result don't necessarily have the same complexity. That said, it's quite common to refer to groups of related algorithms by the same name. For example quicksort behaves differently depending how you choose the pivot and which order you process the two sides of the partition, but all possibilities are usually called "quicksort". –  Steve Jessop Dec 16 '11 at 10:06
... and it follows from this, that whether or not two bits of code can be described as "the same algorithm" depends in some cases on whether or not your language/compiler implements tail recursion. If the recursive version creates a call stack that it doesn't need, then it's a different algorithm with inferior space complexity. –  Steve Jessop Dec 16 '11 at 10:09
@SteveJessop: And a likely crash bug :) –  Merlyn Morgan-Graham Dec 16 '11 at 12:51

The answer depends strongly on your implementation. For the example you gave there are several possible solutions and I would say that the naive way to implement a solution has better complexity when implemented iterative. Here are the two implementations:

``````int iterative_fib(int n) {
if (n <= 2) {
return 1;
}
int a = 1, int b = 1, c;
for (int i = 0; i < n - 2; ++i) {
c = a + b;
b = a;
a = c;
}
return a;
}
int recursive_fib(int n) {
if (n <= 2) {
return 1;
}
return recursive_fib(n - 1) + recursive_fib(n-2);
}
``````

In both implementations I assumed a correct input i.e. n >= 1. The first code is much longer but its complexity is O(n) i.e. linear, while the second implementation is shorter but has exponential complexity O(fib(n)) = O(φ^n) (`φ = (1+√5)/2`) and thus is much slower. One can improve the recursive version by introducing memoization(i.e. remembering the return values of the function you have already computed). This is usually done by introducing an array where you store the values. Here is an example:

``````int mem[1000]; // initialize this array with some invalid value. Usually 0 or -1
// as memset can be used for that: memset(mem, -1, sizeof(mem));
int mem_fib(int n) {
if (n <= 2) {
return mem_fib[n] = 1;
}
if (mem[n-1] == -1) {
solve(n-1);
}
if (mem[n-2] == -1) {
solve(n-2);
}
return mem[n] = mem[n-1] + mem[n-2];
}
``````

Here the complexity of the recursive algorithm is linear just like the iterative solution. The solution I introduced above is the top-down approach for dynamic programming solution of your problem. The bottom-up approach will lead to something very similar to the solution I introduced as iterative. There a lot of articles on dynamic programming including in wikipedia

Depending on the problems I have met in my experience some are way harder to be solved with bottom-up approach(i.e. iterative solution), while others are hard to solve with top-down approach. However the theory states that each problem that has an iterative solution has a recursive with the same computational complexity (and vice versa).

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note: there is no need to check for `mem[n-2]`. –  Karoly Horvath Dec 16 '11 at 12:31
`I would say that the naive way to implement a solution has better complexity when implemented iterative.` I would say the iterative version isn't naive anymore. The problem with the Fibonacci sequence is that it's terribly easy to write an exponential recursive version, but writing an exponential iterative version is hard, so the first version one comes up with when writing an iterative algorithm isn't really naive, you must have invested a bit of thought to come up with any iteration at all. –  Daniel Fischer Dec 16 '11 at 12:36

If you take some recursive algorithm you can convert it to iterative by storing all function local variables in an array, effectively simulating stack on heap. If done like this there's no difference between iterative and recursive.

Note that there are (at least) two recursive Fibonacci algorithms, so for the example to be exact you need to specify which recursive algorithm you're talking about.

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The particular recursive algorithm for calculation fibanocci series is less efficient. Consider the following situation of finding fib(4) through the recursive algorithm

``````                int fib(n) :
if( n==0 || n==1 )
return n;
else
return fib(n-1) + fib(n-2)
``````

Now when the above algorithm executes for n=4

``````                            fib(4)

fib(3)             fib(2)

fib(2)   fib(1)     fib(1)   fib(0)

fib(1)  fib(0)
``````

It's a tree. It says that for calculating fib(4) you need to calculate fib(3) and fib(2) and so on.

Notice that even for a small value of 4, fib(2) is calculated twice and fib(1) is calculated thrice. This number of additions grows for large numbers.

There is a conjecture that the number of additions required for calculating fib(n) is

``````                     fib(n+1) -1
``````

So this duplication is the one which is the cause of reduced performance in this particular algorithm.

The iterative algorithm for fibonacci series is considerably faster since it does not involve calculating the redundant things.

It may not be the same case for all the algorithms though.

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