Big O notation is all about approximations. It makes it easy to compare algorithms.

If you imagine your array of elements, a search might be order N (you must look at each item to find the item you want), it might be order Log(N) if you have an ordered collection or it could even be order 1 depending on your collection type.

The important thing here is to look at your algorithm and determine what the key operations are that are repeated.

Foreach is clearly an order N operation, by definition you must operate on each element in your list. O(N)

Next is your if InArray 2. This sounds like a search over an array, which would most likely be unordered so it would be order N (linear search). So your complexity would now be O(N * M). (for each n elements in array 1, perform a search of order N complexity over array 2).

Finally you have an array push. I don't know your environment but this could be order 1 or order N if the array needs to be reallocated and copied in order to grow. Lets assume order 1 to keep it simple. Therefore your complexity in Big O is O(N*M).

So now best case is for each element to find it's counterpart on the first try and perform the array push, which would be O(N * 1 * 1) = O(N).

Worst case is that the each element cannot be found in the second list forcing the full search of all elements in array 2. Therefore complexity is O(N * M).

Your teachers want to understand your thinking so show them your assumptions made. I highly recommend that you read the exact question and information you have been given before relying on the assumptions given here, you may have been told the language/platform which would tell you the exact penalty and algorithms used in each case. Hope that helps :)