The element distinctness problem (which is at least as hard as your problem) is
O(nlogn) without using any extra space.
However, using hashing solutions that can actually be improved on average case.
Your suggested approach is actually one of the ways to implement intersection in Database systems:
k buckets (on disk), and iterate over the lists, and add each element
Once you are done, assuming there is enough space so each bucket is small enough to be loaded to memory1, you only need to load
bucket[i] for each list - and do in memory intersection (based on sort & iterate) for each bucket.
The result will yield you the answer for the intersection - which is common elements.
Another way it (intersection) is done in data base systems is by using external sort (usually a variation of merge sort) and iterating, or creating an index optimized for disks (such as B+ trees).
(1) It is usually the case, if it is not - repeat the process for each bucket (with different hash function) until you have small enough buckets.