问题
I need a data structure that always holds the n
largest items inserted so far (in no particular order).
So, if n
is 3, we could have the following session where I insert a few numbers and the content of the container changes:
[] // now insert 1
[1] // now insert 0
[1,0] // now insert 4
[1,0,4] // now insert 3
[1,4,3] // now insert 0
[1,4,3] // now insert 3
[4,3,3]
You get the idea. What's the name of the data structure? What's the best way to implement this? Or is this in some library?
I am thinking to use a container that has a priority_queue
for its elements (delegation), which uses the reverse comparison, so pop
will remove the smallest element. So the insert
function first checks if the new element to be inserted is greater than the smallest. If so, we throw that smallest out and push the new element.
(I have a C++
implementation in mind, but the question is language-agnostic nevertheless.)
回答1:
The specific datastructure you want is probably the implicit heap. The raw datastructure is just an array; for convenience, say that it is N=2^n elements in size, and that you want to maintain the largest N-1 elements.
The idea is to treat the array (call it A) as a complete binary tree of depth n:
- ignore A[0]; treat A[1] as the root node
- for each node A[k], the children are A[2*k] and A[2*k+1]
- nodes A[N/2..N-1] are the leaves
To maintain the tree as a "heap", you need to ensure that each node is smaller than (or equal to) its children. This is called the "heap condition":
- A[k] <= A[2*k]
- A[k] <= A[2*k+1]
To use the heap to maintain the largest N elements:
- note that the root A[1] is the smallest element in the heap.
- compare each new element (x) to the root: if it is smaller (x<A[1]), reject it.
- otherwise, insert the new element into the heap, as follows:
- remove the root (A[1], the smallest element) from the heap, and reject it
- replace it with the new element (A[1]:= x)
- now, restore the heap condition:
- if x is less than or equal to both of its children, you're done
- otherwise, swap x with the smallest child
- repeat the test&swap at each new position until the heap condition is met
Basically, this will cause any replacement element to "filter up" the tree until it achieves its natural place. This will take at most n=log2(N) steps, which is as good as you can get. Also, the implicit form of the tree allows a very fast implementation; existing bounded-priority-queue libraries will most likely use an implicit heap.
回答2:
In Java you can use a SortedSet implemented e.g. by a TreeSet. After each insertion check if the set is too large, if yes remove the last element.
This is reasonably efficient, I have used it successfully for solving several Project Euler problems.
回答3:
A priority_queue is the closest thing in C++ with STL. You could wrap it in another class to create your own implementation that trims the size automatically.
Language-agnostically (although maybe not memory-fragmentation-safely):
- Insert data
- Sort
- Delete everything after the nth element
std::priority_queue does step 2 for you.
回答4:
A bounded priority queue, I think... Java has something like this in its standard library. EDIT: it's called LinkedBlockingQueue. I'm not sure if the C++ STL includes something similar.
回答5:
Isn't it possible to just take the first n elements from a sorted collection?
回答6:
yes you can maintain a minimal head of size N then you compare new item with the root item on each insertion pop the root and insert the item if it's "greater" than the root finally you end up with N largest items
回答7:
In Pyhton, use heapq. Create a small wrapper around it, something like this:
class TopN_Queue:
def __init__(self, n):
self.max_sz = n
self.data = []
def add(self, x):
if len(self.data) == self.max_sz:
heapq.heappushpop(self.data, x)
else:
heapq.heappush(self.data, x)
...
回答8:
Create a min-heap, also store a counter.
Whenever the counter is reached; extract-min.
You can do this in: O(1) insert, get-min and O(log log n) extract-min.[1]
Alternatively you can do this with O(log n) insert and O(1) for the other mentioned operations.[2]
[1]
M. Thorup, “Integer priority queues with decrease key in constant time and the single source shortest paths problem,” in Proceedings of the thirty-fifth annual ACM symposium on Theory of computing, New York, NY, USA, 2003, pp. 149–158.
[2]
G. S. Brodal, G. Lagogiannis, C. Makris, A. Tsakalidis, and K. Tsichlas, “Optimal finger search trees in the pointer machine,” J. Comput. Syst. Sci., vol. 67, no. 2, pp. 381–418, Sep. 2003.
来源:https://stackoverflow.com/questions/564112/data-structure-that-always-keeps-n-best-elements