If your data are not sorted, then you have no choice but to check every point since you cannot know if there exists another point for which y is greater than that of all other points and for which `x > x_min`

. In short: you can't know if another point should be included if you don't check them all.

In that case, I would assume that it would be impossible to check in **sub**linear time as you ask for, since you have to check them all. Best case for searching all would be linear.

If your data are sorted, then your best case will be constant time (all n points are those with the greatest y), and worst case would be linear (all n points are those with least y). Average case would be closer to constant I think if your x and x_min are both roughly random within a specific range.

If you want this to scale (that is, you could have large values of n), you will want to keep your resultant set sorted as well since you will need to check new potential points against it and to drop the lowest value when you insert (if size > n). Using a tree, this can be log time.

So, to do the entire thing, worst case is for unsorted points, in which case you're looking at nlog(n) time. Sorted points is better, in which case you're looking at average case of log(n) time (again, assuming roughly randomly distributed values for x and x_min), which yes is sub-linear.

In case it isn't at first obvious why sorted points will have have constant time to search through, I will go over that here quickly.

If the n points with the greatest y values all had `x > x_min`

(the best case) then you are just grabbing what you need off the top, so that case is obvious.

For the average case, assuming roughly randomly distributed x and x_min, the odds that `x > x_min`

are basically half. For any two random numbers a and b, `a > b`

is just as likely to be true as `b > a`

. This is the same thing with x and x_min; `x > x_min`

is equally as likely to be true as `x_min > x`

, meaning 0.5 probability. This means that, for your points, on average every second point checked will meet your `x > x_min`

requirement, so on average you will check 2n points to find the n highest points that meet your criteria. So the best case was c time, average is 2c which is still constant.

Note, however, that for values of n approaching the size of the set this hides the fact that you are going through the entire set, essentially bringing it right back up to linear time. So my assertion that it is constant time does not hold true if you assume random values of n within the range of the size of your set.

If this is not a purely academic question and is prompted by some actual need, then it depends on the situation.

(edit)
I just realized that my constant-time assertions were assuming a data structure where you have direct access to the highest value and can go sequentially to lower values. If the data structure that those are provided to you in does not fit that description, then obviously that will not be the case.

`y`

, the first`n`

points.