# Is it possible that time complexity of any algorithm decrease as the input size increase, any example

I just read in Cormen's algorithm book that big-O and big-omega do not follow the trichotomy property. That means for two functions, `f(n)` and `g(n)`, it may be the case that neither `f(n) = O(g(n))` nor `f(n) = Omega(g(n))` holds. In example they argue that if function is `n^(1+sin n)` than it is possible.

While it is correct is it possible in a real world algorithm to have a run time of something like `sin n`. Since it would sometimes decrease, with the increase of input size. Does anybody knows any such algorithm or can give a small code snippet which does this.

Thanks for the answers, so in that case is it correct to assume that Given a problem P with size n, if it can not be solved in O(f(n)) time by any known algorithm, then the lower bound of P is Omega(f(n)).

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It's easy to construct contrived examples of functions that have odd runtimes like this, but to the best of my knowledge no functions have asymptotic runtimes that decrease as the input gets larger. –  templatetypedef Sep 17 '11 at 21:44
Yeah as templatetypedef says usually they are contrived examples and there are contrived examples for functions that have runtimes that decrease but they are not really of use to anyone except that it can be done :\ –  Jesus Ramos Sep 17 '11 at 21:46
Might be better on cstheory.SE? –  muntoo Sep 17 '11 at 21:46
they just describe the mathematical properties of those notations. you don't necessarily use them for algorithmic complexity analysis. –  Karoly Horvath Sep 17 '11 at 21:51
Some function that increases and decreases like sin(x) may be possible with a contrived example. An algorithm could not have a decreasing function as its complexity however. As you increase the input, the number of steps in the algorithm will decrease, but you cannot reduce them below 0. So eventually it will be some constant number, and the algorithm must have constant complexity. –  Jems Sep 17 '11 at 22:29

I have difficulties conceiving a meaningful problem with decreasing complexity. A "meaningful" problem will need to read or touch parts of all of its input. Unless the input is encoded in a very inefficient way, processing it should take an increasing amount of time.

It could be increasing toward a constant, though.

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The Boyer-Moore string search algorithm gets faster when the string searched for gets longer. Of course, the limiting factor is most often rather the length of the string searched in.

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The average running time of SAT for randomly-generated 3CNF clauses eventually goes down as the ratio of clauses to variables increases. The intuition is that when there are very many clauses relative to the number of variables, it is more likely that the formula is "obviously" unsatisfiable; that is, typical SAT-solving algorithms (a step or two better than exhaustive search, but simple enough to cover in an undergrad logic course) quickly reach contradictions and stop.

Of course, those are experimental observations for some notion of "random" 3CNF formulas. I'm not sure what people have proven about it.

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Interesting answer! Do you include the time needed to parse the clauses in the running time? From a theoretical perspective, it's important because even if the time taken for finding contradictions goes down, the time needed for parsing should be the dominating cost beyond a certain point. –  Joh Sep 19 '11 at 7:09
Right, generating (or parsing) the formula takes time linear in the number of clauses (times the log of the number of variables, if you really want to be precise). –  Ryan Culpepper Sep 19 '11 at 20:06

Use any inverse function.

``````f(x) -> 1 / x
f(x) -> 1 / x²
f(x) -> 1 / log(x)
``````

As the input `x` grows, the resulting value will get smaller. It's fairly straightforward to relate a smaller value to lesser number of steps in the algorithm. Just use a counter in a loop to move towards that number.

Here's a simple algorithm.

``````function(x) {
step = 0.001
y = 1 / x;
for (i = 0; i < y; i += step) { /* do something awesome here */ }
}
``````
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Really don't understand, how to get any of the f(x) you have mentioned as the runtime of an algorithm ? –  Rohit chauhan Sep 17 '11 at 21:58
I've added a simple function that correlates the input value, and the number of steps the algorithm takes to complete. –  Anurag Sep 17 '11 at 22:04
These aren't O(1/x) though. They are O(1). You will inevitably run in to discreteness problems. –  Jems Sep 17 '11 at 22:23
Agree with Jems. We always talk about asymptotic complexity, and all of these approach zero in the limit and are thus O(1). –  phkahler Sep 18 '11 at 1:37
@Anurag If your algorithm always runs at least one step, then it is already Omega(1). The alternative is a zero-step algorithm. –  han Sep 18 '11 at 7:19