Linear time means that the time taken is bounded by some undefined constant times (in this context) the number of items in the two lists you want to merge. Your approach doesn't achieve this - it takes O(n log n) time.

When specifying how long an algorithm takes in terms of the problem size, we ignore details like how fast the machine is, which basically means we ignore all the constant terms. We use "asymptotic notation" for that. These basically describe the *shape* of the curve you would plot in a graph of problem size in x against time taken in y. The logic is that a bad curve (one that gets steeper quickly) will always lead to a slower execution time if the problem is big enough. It may be faster on a very small problem (depending on the constants, which probably depends on the machine) but for small problems the execution time isn't generally a big issue anyway.

The "big O" specifies an upper bound on execution time. There are related notations for average execution time and lower bounds, but "big O" is the one that gets all the attention.

- O(1) is constant time - the problem size doesn't matter.
- O(log n) is a quite shallow curve - the time increases a bit as the problem gets bigger.
- O(n) is linear time - each unit increase means it takes a roughly constant amount of extra time. The graph is (roughly) a straight line.
- O(n log n) curves upwards more steeply as the problem gets more complex, but not by very much. This is the best that a general-purpose sorting algorithm can do.
- O(n squared) curves upwards a lot more steeply as the problem gets more complex. This is typical for slower sorting algorithms like bubble sort.

~~The nastiest algorithms are classified as "np-hard" or "np-complete" where the "np" means "non-polynomial" - the curve gets steeper quicker than any polynomial. Exponential time is bad, but some are even worse. These kinds of things are still done, but only for very small problems.~~

**EDIT** the last paragraph is wrong, as indicated by the comment. I do have some holes in my algorithm theory, and clearly it's time I checked the things I *thought* I had figured out. In the mean time, I'm not quite sure how to correct that paragraph, so just be warned.

For your merging problem, consider that your two input lists are already sorted. The smallest item from your output must be the smallest item from one of your inputs. Get the first item from both and compare the two, and put the smallest in your output. Put the largest back where it came from. You have done a constant amount of work and you have handled one item. Repeat until both lists are exhausted.

Some details... First, putting the item back in the list just to pull it back out again is obviously silly, but it makes the explanation easier. Next - one input list will be exhausted before the other, so you need to cope with that (basically just empty out the rest of the other list and add it to the output). Finally - you don't actually have to remove items from the input lists - again, that's just the explanation. You can just step through them.