# Complexity of a function

What is the time and space complexity of:

``````int superFactorial4(int n, int m)
{
if(n <= 1)
{
if(m <= 1)
return 1;
else
n = m -= 1;
}

return n*superFactorial4(n-1, m);
}
``````

It runs recursively by decreasing the value of n by 1 until it equals 1 and then it will either decrease the value of m by 1 or return 1 in case m equals 1.

I think the complexity depends on both n and m so maybe it's O(n*m).

-
My head is about to explode. –  Gary Hole Feb 10 '09 at 11:37
This looks like a homework assignment to me. –  Kevin Sitze Nov 14 '12 at 0:08

The time complexity is `O(n+m^2)`, space complexity the same.

Reasoning: with a fixed value of `m`, the function makes `n` recursive calls to itself, each does constant work, so the complexity of calls with fixed `m` is `n`. Now, when n reaches zero, it becomes `m-1` and `m` becomes `m-1` too. So the next fixed-m-phase will take `m-1`, the next `m-2` and so on. So you get a sum `(m-1)+(m-2)+...+1` which is `O(m^2)`.

The space complexity is equal, because for each recursive call, the recursion takes constant space and you never return from the recursion except at the end, and there is no tail recursion.

-
I don't understand: I agree that for a fixed value of m the function makes n recursive calls to itself, but when n reaches 1, n and m are decreased by 1 and the function will make n-1 recursive calls to itself, so the sum should be: (n-1)+(n-2)+...+1 which is O(n^2) for a fixed value of m, no? –  yyy Feb 10 '09 at 12:00
No, when n reaches zero, the line "n=m-=1" has the effect "m=m-1; n=m;" which means the original value of n will not play any role in the subsequent computation –  jpalecek Feb 10 '09 at 12:22

Actually, it looks to be closer to O(N+m^2) to me. n is only used for the first "cycle".

Also, in any language that doesn't do tail call optimization the space complexity is likely to be "fails". In languages that support the optimization, the space complexity is more like O(1).

-

The time complexity of a Factorial function using recursion pseudo code:

``````int fact(n)
{
if(n==0)
{
return 1;
}
else if(n==1)
{
return 1;
}
else if
{
return n*f(n-1);
}
}

time complexity;
let T(n) be the number of steps taken to compute fact(n).

we know in each step F(n)= n*F(n-1)+C

F(n-1)= (n-1)*F(n-2)+c

substitute this in F(n), we get

F(n)= n*(n-1)*F(n-2)+(n+1)c
``````

using big o notation now we can say that

``````F(n)>= n*F(n-1)
F(n)>= n*(n-1)*F(n-2)
.
.
.
.
.
F(n)>=n!F(n-k)

T(n)>=n!T(n-k)

n-k=1;
k=n-1;

T(n)>=n!T(n-(n-1))
T(n)>=n!T(1)
since T(1)=1
T(n)>=1*n!
``````

now it is in the form of

`````` F(n)>=c(g(n))
``````

so we can say that time complexity of factorial using recursion is

``````T(n)= O(n!)
``````
-