# (log n)^k = O(n)? For k greater or equal to 1

`(log n)^k = O(n)? For k greater or equal to 1.`

My professor presented us with this statement in class, however I am not sure what it means for a function to a have a time complexity of O(n). Even stuff like `n^2 = O(n^2)`, how can a function f(x) have a run time complexity?

As for the statement how does it equal O(n) rather than O((logn)^k)?

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From the FAQ: "Your questions should be reasonably scoped. If you can imagine an entire book that answers your question, you’re asking too much." –  Steve Mar 1 '12 at 6:44

`f(x) = O(g(x))` means `f(x)` grows slower or comparably to `g(x)`.

Technically this is interpreted as "We can find an `x` value, `x_0`, and a scale factor, `M`, such that this size of `f(x)` past `x_0` is less than the scaled size of `g(x)`." Or in math:

`|f(x)| < M |g(x)| for all x > x_0`.

`log(x)^k = O(x)?` is asking : is there an x_0 and M such that `log(x)^k < M x for all x>x_0`.

The existence of such `M` and `x_0` can be done using various limit results and is relatively simple using L'Hopitals rule .. however theres probably a nice non-calculus proof somewhere...

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Very briefly: time complexity refers to the time it takes a function to process some input. Normally, n is some measure of the input, like the number of characters in a string or the number of nodes in a graph. There are different complexities that you can consider: best case, worst case, average case, ... "Big O" usually means worst case complexity.

A function with time complexity O(n) takes more time for inputs of increasing size n, and the amount of time taken is at worst linearly related to the input size. A simple example of this is traversing a linked list. A function with time complexity O(n^2) will have a running time that is for the worst case quadratically related to the input size. An example of this is bubble sort, which traverses a list for every element in that list.

Wikipedia explains it all rather nicely.

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(log n)^k == n * a constant factor, this statement is arbitrary, why did you chose n * c rather than n^2 *c or n^k *c. –  user1084113 Mar 1 '12 at 7:15
"(log n)^k == n * a constant factor" That's not true at all. What's true is that there exists a constant factor c, such that `(log n)^k < n * c` for all sufficiently large n. Note that it's strictly less (and thus o(n) as well as O(n)) - not equal. –  sepp2k Mar 1 '12 at 7:15
Thanks that helps. –  user1084113 Mar 1 '12 at 7:26
@sepp2k You are right of course. I didn't think that through properly and ignored the asymptotic nature of Big O in my answer. I'll update it. –  jackrabbit Mar 1 '12 at 11:24

(log n)^k = O(n)?

Yes. The definition of big-Oh is that a function `f` is in O(g(n)) if there exist constants N and c, such that for all `n > N`: `f(n) <= c*g(n)`. In this case `f(n)` is `(log n)^k` and `g(n)` is `n`, so if we insert that into the definition we get: "there exist constants N and c, such that for all `n > N`: `(log n)^k <= c*n`". This is true so `(log n)^k` is in O(n).

how can a function f(x) have a run time complexity

It doesn't. Nothing about big-Oh notation is specific to run-time complexity. Big-Oh is a notation to classify the growth of functions. Often the functions we're talking about measure the run-time of certain algorithms, but we can use big-Oh to talk about arbitrary functions.

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