Can algorithms have the same best- and worst-case time complexity?

Is it possible for an algorithm/program to have the same worst-case and best-case time?

For example:

``````public static int factorial(int number)
{
factorial = 1;
for (i = 1; i <= number; i++)
factorial = factorial * i;
}
``````

It's a program segment for the factorial problem, and I was trying to solve for the time complexity. It seems to have no worst and best case time, since whatever input you may have it will still go through the rest of the code, unlike when you have if-else statements.

If that's the case should I assume that what ever I get from this code it would be the best, worst and average case time?

thank you for all the answers..uhm i have a follow up though...did i get this right?

``````public static int factorial(int number)
{
factorial = 1;                    //1
for (i = 1; i <= number; i++)    // 1+3n
factorial = factorial * i;   //2
return factorial;              //1
}
``````

Worst Case/Best Case: 3n+5

Big – O : O(n)

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In your case when `"number"` is fixed, your program has no worst or best case - it always does `"number"` iterations, so it has a linear complexity.
For formal mathematical definitions see these articles:
http://en.wikipedia.org/wiki/Analysis_of_algorithms
http://en.wikipedia.org/wiki/Big_O_notation

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so can i assume that it is the worst and best case? –  Kevin Jun 27 '11 at 5:24
yes, it is obviously so :) –  Grigor Gevorgyan Jun 27 '11 at 5:24
oh..i see...im still kinda confused with that one..:) thanks for answering! :) –  Kevin Jun 27 '11 at 5:25
It's the only scenario –  Yochai Timmer Jun 27 '11 at 5:26
i have a follow up question..its up in my question...bottom part –  Kevin Jun 27 '11 at 5:45

Of course. Big O describes an upper bound, while little o describes a lower bound on some asymptotic quantity (such as the time complexity of an algorithm). There is actually a special notation for giving bounds which are asymptotically tight (which is what you get when the Big o is the same as the little o), which is called big theta notation.

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Theta(n) : `Θ(n)` –  ypercube Jun 27 '11 at 5:38
not exact. Big O is the upper bound, little O is the lower bound and theta is the aggregation of both, but that is is far as the definitions go (in layman's terms). But, you can define a Theta function for worst case computation, best case computation, etc... –  Yaneeve Jun 27 '11 at 6:10
@Yaneeve: But of course! The same notation can be used in many situations outside of asymptotic time complexity analysis (such as number theory or real analysis). I edited the answer to be a bit more clear. –  Mikola Jun 27 '11 at 6:35
great, thanks :) –  Yaneeve Jun 27 '11 at 6:40