What's the complexity of a recursive program to find factorial of a number n
? My hunch is that it might be O(n)
.

8I dunno, man. I could write a pretty awful recursive factorial program that would take at least O(n!) time to complete. If you want to analyse an algorithm, you need the actual algorithm. – Welbog Feb 24 '10 at 15:44
If you take multiplication as O(1)
, then yes, O(N)
is correct. However, note that multiplying two numbers of arbitrary length x
is not O(1)
on finite hardware  as x
tends to infinity, the time needed for multiplication grows (e.g. if you use Karatsuba multiplication, it's O(x ** 1.585)
).
You can theoretically do better for sufficiently huge numbers with SchönhageStrassen, but I confess I have no real world experience with that one. x
, the "length" or "number of digits" (in whatever base, doesn't matter for bigO anyway of N, grows with O(log N)
, of course.
If you mean to limit your question to factorials of numbers short enough to be multiplied in O(1)
, then there's no way N
can "tend to infinity" and therefore bigO notation is inappropriate.

You can only multiply numbers that fit in your memory. So I don't understand how a multiplication can overcome O(1). Can you give me a detailed explanation? – tur1ng Feb 24 '10 at 16:02

@tur1ng, you have bigO behavior for both requirement of time and extra space [[beyond the obvious space required for input and output which it would be absurd to count]] (though usually one means time unless explicitly mentioning space). Multiplication is O(1) in extra space and
O((log N)**1.585)
in time (with Karatsuba). The fact that the "physically reachable universe" (and therefore any actually conceivable machine) is finite is irrelevant to CS: analysis normally (implicitly) assumes a "Turing machine" which by definition has an infinitely long "tape" (infinite storage). – Alex Martelli Feb 24 '10 at 16:08 
BTW @tur1ng, with that monicker you should definitely be more familiar with Turing machines and their infinitely long tape ("fit in your memory" indeed  pah!)  start at en.wikipedia.org/wiki/Turing_machine . – Alex Martelli Feb 24 '10 at 16:09
When you express the complexity of an algorithm, it is always as a function of the input size. It is only valid to assume that multiplication is an O(1)
operation if the numbers that you are multiplying are of fixed size. For example, if you wanted to determine the complexity of an algorithm that computes matrix products, you might assume that the individual components of the matrices were of fixed size. Then it would be valid to assume that multiplication of two individual matrix components was O(1)
, and you would compute the complexity according to the number of entries in each matrix.
However, when you want to figure out the complexity of an algorithm to compute N!
you have to assume that N
can be arbitrarily large, so it is not valid to assume that multiplication is an O(1)
operation.
If you want to multiply an nbit number with an mbit number the naive algorithm (the kind you do by hand) takes time O(mn)
, but there are faster algorithms.
If you want to analyze the complexity of the easy algorithm for computing N!
factorial(N)
f=1
for i = 2 to N
f=f*i
return f
then at the kth step in the for loop, you are multiplying (k1)!
by k
. The number of bits used to represent (k1)!
is O(k log k)
and the number of bits used to represent k
is O(log k)
. So the time required to multiply (k1)!
and k
is O(k (log k)^2)
(assuming you use the naive multiplication algorithm). Then the total amount of time taken by the algorithm is the sum of the time taken at each step:
sum k = 1 to N [k (log k)^2] <= (log N)^2 * (sum k = 1 to N [k]) =
O(N^2 (log N)^2)
You could improve this performance by using a faster multiplication algorithm, like SchönhageStrassen which takes time O(n*log(n)*log(log(n)))
for 2 nbit numbers.
The other way to improve performance is to use a better algorithm to compute N!
. The fastest one that I know of first computes the prime factorization of N!
and then multiplies all the prime factors.
Assuming you're talking about the most naive factorial algorithm ever:
factorial (n):
if (n = 0) then return 1
otherwise return n * factorial(n1)
Yes, the algorithm is linear, running in O(n) time. This is the case because it executes once every time it decrements the value n
, and it decrements the value n
until it reaches 0
, meaning the function is called recursively n
times. This is assuming, of course, that both decrementation and multiplication are constant operations.
Of course, if you implement factorial some other way (for example, using addition recursively instead of multiplication), you can end up with a much more timecomplex algorithm. I wouldn't advise using such an algorithm, though.
The timecomplexity of recursive factorial would be:
factorial (n) {
if (n = 0)
return 1
else
return n * factorial(n1)
}
So,
The time complexity for one recursive call would be:
T(n) = T(n1) + 3 (3 is for As we have to do three constant operations like
multiplication,subtraction and checking the value of n in each recursive
call)
= T(n2) + 6 (Second recursive call)
= T(n3) + 9 (Third recursive call)
.
.
.
.
= T(nk) + 3k
till, k = n
Then,
= T(nn) + 3n
= T(0) + 3n
= 1 + 3n
To represent in BigOh notation,
T(N) is directly proportional to n,
Therefore, The time complexity of recursive factorial is O(n). As there is no extra space taken during the recursive calls,the space complexity is O(N).