13

This is not a homework.

I'm using a small "priority queue" (implemented as array at the moment) for storing last N items with smallest value. This is a bit slow - O(N) item insertion time. Current implementation keeps track of largest item in array and discards any items that wouldn't fit into array, but I still would like to reduce number of operations further.

looking for a priority queue algorithm that matches following requirements:

  1. queue can be implemented as array, which has fixed size and _cannot_ grow. Dynamic memory allocation during any queue operation is strictly forbidden.
  2. Anything that doesn't fit into array is discarded, but queue keeps all smallest elements ever encountered.
  3. O(log(N)) insertion time (i.e. adding element into queue should take up to O(log(N))).
  4. (optional) O(1) access for *largest* item in queue (queue stores *smallest* items, so the largest item will be discarded first and I'll need them to reduce number of operations)
  5. Easy to implement/understand. Ideally - something similar to binary search - once you understand it, you remember it forever.
  6. Elements need not to be sorted in any way. I just need to keep N smallest value ever encountered. When I'll need them, I'll access all of them at once. So technically it doesn't have to be a queue, I just need N last smallest values to be stored.

I initially thought about using binary heaps (they can be easily implemented via arrays), but apparently they don't behave well when array can't grow anymore. Linked lists and arrays will require extra time for moving things around. stl priority queue grows and uses dynamic allocation (I may be wrong about it, though).

So, any other ideas?

--EDIT--
I'm not interested in STL implementation. STL implementation (suggested by a few people) works a bit slower than currently used linear array due to high number of function calls.

I'm interested in priority queue algorithms, not implemnetations.

6
  • How small is small? There's a good chance if it's under 100 items and you don't access it from within a tight loop you won't even notice the difference in performance. If it's a purely academic exercise then nvm =).
    – Roman
    May 29, 2010 at 4:17
  • @R0MANARMY: The array is currently 256, but insertion is called 400000+ times per 25 seconds and it walks entire array every time. It is within 3rd most called routine (i.e. it is 3rd in terms of total elapsed time) in the code. I would like to make array bigger (to 4096, for example) and reduce number of operations as well. Not an academic excercise - just playing around/experimenting with my own code.
    – SigTerm
    May 29, 2010 at 4:28
  • @SigTerm: What do you mean by "Linked lists require extra time for moving things around"? I guess linked list is the fastest way of "dynamic" queue implementation. BTW, you have control over allocator which is used for STL containers.
    – ony
    May 29, 2010 at 6:00
  • @ony: it is obvious. To make sure that list has less than N elements, you'll have to toss out largest one eventually. You'll have to walk list to find it, or to walk list to find next largest (if you're maintaining largest element), or you'll have to walk list upon insertion to maintain links "sorted". Each of those is O(N) operation instead of O(log(N)). While adding/removing element is quick, finding element to remove or finding insertion poistion will not be quick. Hence, it is not a solution.
    – SigTerm
    May 29, 2010 at 6:17
  • @SigTerm: Array based heaps seem ideal for your purpose. I don't know why you rejected them. Please see my answer. I hope that works for you. Good luck!
    – Aryabhatta
    May 29, 2010 at 17:36

8 Answers 8

19

Array based heaps seem ideal for your purpose. I am not sure why you rejected them.

You use a max-heap.

Say you have an N element heap (implemented as an array) which contains the N smallest elements seen so far.

When an element comes in you check against the max (O(1) time), and reject if it is greater.

If the value coming in is lower, you modify the root to be the new value and sift-down this changed value - worst case O(log N) time.

The sift-down process is simple: Starting at root, at each step you exchange this value with it's larger child until the max-heap property is restored.

So, you will not have to do any deletes which you probably will have to, if you use std::priority_queue. Depending on the implementation of std::priority_queue, this could cause memory allocation/deallocation.

So you can have the code as follows:

  • Allocated Array of size N.
  • Fill it up with the first N elements you see.
  • heapify (you should find this in standard text books, it uses sift-down). This is O(N).
  • Now any new element you get, you either reject it in O(1) time or insert by sifting-down in worst case O(logN) time.

On an average, though, you probably will not have to sift-down the new value all the way down and might get better than O(logn) average insert time (though I haven't tried proving it).

You only allocate size N array once and any insertion is done by exchanging elements of the array, so there is no dynamic memory allocation after that.

Check out the wiki page which has pseudo code for heapify and sift-down: http://en.wikipedia.org/wiki/Heapsort

3
  • This a solution I found myself after a bit of sleep.
    – SigTerm
    May 29, 2010 at 18:38
  • 1
    Actually, the average insert time will be O(log(n)), not better. Assume the heap is a complete binary tree. Half of the nodes are in the last row. That is, a constant fraction of the places you will may sift down to are at depth log(n). Even if you assume all other inserts are O(0), the average runtime is 1/2log(n), which is still O(log(n)). Mar 27, 2015 at 16:26
  • I may be late to the party, but I have a question and I need someone to discuss :) Max-heap work absolutely fine. I run a mock example to better understand it. What if I need to do a best-first knn search using a heap? The problem is that using a max-heap ruins the best-first attribute that a min-heap gives. I tried using two heap (a min and a max) but it was a mess. I cannot wrap my head around the solution and I am asking for suggestions. Thanks :)
    – mnmbs
    Aug 31, 2022 at 9:38
8

Use std::priority_queue with the largest item at the head. For each new item, discard it if it is >= the head item, otherwise pop the head item and insert the new item.

Side note: Standard containers will only grow if you make them grow. As long as you remove one item before inserting a new item (after it reaches its maximum size, of course), this won't happen.

5
  • Don't forget to put the first N items in the queue to prime it. That is, don't start tossing out elements til your queue is full. Otherwise, if you have 1 2 3 4 5 6 7 8, you'll wind up with only one element in the queue.
    – cHao
    May 29, 2010 at 5:56
  • @cHao, that's what I meant by, "(after it reaches its maximum size, of course)". May 29, 2010 at 6:39
  • std::priority_queue is no good, because it doesn't allow free access to queue. std::make_heap (it is used within priority_queue) with approach you suggested is too slow (even a bit slower than linear array) because of high number of function calls (operators, etc).
    – SigTerm
    May 29, 2010 at 7:35
  • I'm not going to use stl for queues, but I'll accept your answer, because the idea about using "largest-sorted" heap is good. Removing root this way will help to deal with limited space. Unfortunately, in this case operation will take O(2log(N)) (first remove root, then add new node), but it will be still better than walking entire array.
    – SigTerm
    May 29, 2010 at 8:29
  • 2
    FYI, Big-O notation generally ignores multipliers. O(2log(N)) is considered the same as O(log(N)). I understand the point you are making; just don't use Big-O to express it. BTW, I'm surprised about the performance issues. Are you compiling with optimisations on? May 29, 2010 at 10:06
1

Most priority queues I work are based on linked lists. If you have a pre-determined number of priority levels, you can easily create a priority queue with O(1) insertion by having an array of linked lists--one linked list per priority level. Items of the same priority will of course degenerate into either a FIFO, but that can be considered acceptable.

Adding and removal then becomes something like (your API may vary) ...

listItemAdd (&list[priLevel], &item);      /* Add to tail */
pItem = listItemRemove (&list[priLevel]);  /* Remove from head */

Getting the first item in the queue then becomes a problem of finding the non-empty linked-list with the highest priority. That may be O(N), but there are several tricks you can use to speed it up.

  1. In your priority queue structure, keep a pointer or index or something to the linked list with the current highest priority. This would need to be updated each time an item is added or removed from the priority queue.
  2. Use a bitmap to indicate which linked lists are not empty. Combined with a find most significant bit, or find least significant bit algorithm you can usually test up to 32 lists at once. Again, this would need to be updated on each add / remove.

Hope this helps.

2
  • 1
    Arent't most priority queues actually based on heaps? May 29, 2010 at 17:36
  • I can not speak for most; I can only speak of those on which I have worked.
    – Sparky
    May 29, 2010 at 22:59
0

If amount of priorities is small and fixed than you can use ring-buffer for each priority. That will lead to waste of the space if objects is big, but if their size is comparable with pointer/index than variants with storing additional pointers in objects may increase size of array in the same way.
Or you can use simple single-linked list inside array and store 2*M+1 pointers/indexes, one will point to first free node and other pairs will point to head and tail of each priority. In that cases you'll have to compare in avg. O(M) before taking out next node with O(1). And insertion will take O(1).

1
  • Not a solution. Linked list eventually requires to walk entire list. There are 2^31 possible priorities, ringbuffers are not possible. I already have O(N) comparisons with linear array, I'm looking for something else.
    – SigTerm
    May 29, 2010 at 6:30
0

If you construct an STL priority queue at the maximum size (perhaps from a vector initialized with placeholders), and then check the size before inserting (removing an item if necessary beforehand) you'll never have dynamic allocation during insert operations. The STL implementation is quite efficient.

1
  • tried it, it is even a bit slower than currently used linear array due to the number of function it calls.
    – SigTerm
    May 29, 2010 at 7:36
0

Matters Computational see page 158. The implementation itself is quite well, and you can even tweak it a little without making it less readable. For example, when you compute the left child like:

int left = i / 2;

You can compute the rightchild like so:

int right = left + 1;
0

Found a solution ("difference" means "priority" in the code, and maxRememberedResults is 255 (could be any (2^n - 1)):

template <typename T> inline void swap(T& a, T& b){
    T c = a;
    a = b;
    b = c;
}


struct MinDifferenceArray{
    enum{maxSize = maxRememberedResults};
    int size;
    DifferenceData data[maxSize];
    void add(const DifferenceData& val){
        if (size >= maxSize){
            if(data[0].difference <= val.difference)
                return;

            data[0] = val;

            for (int i = 0; (2*i+1) < maxSize; ){
                int next = 2*i + 1;
                if (data[next].difference < data[next+1].difference)
                    next++;
                if (data[i].difference < data[next].difference)
                    swap(data[i], data[next]);
                else
                    break;
                i = next;
            }
        }
        else{
            data[size++] = val;
            for (int i = size - 1; i > 0;){
                int parent = (i-1)/2;
                if (data[parent].difference < data[i].difference){
                    swap(data[parent], data[i]);
                    i = parent;
                }
                else
                    break;
            }
        }
    }

    void clear(){
        size = 0;
    }

    MinDifferenceArray()
        :size(0){
    }
};
  1. build max-based queue (root is largest)
  2. until it is full, fill up normally
  3. when it is full, for every new element
    1. Check if new element is smaller than root.
    2. if it is larger or equal than root, reject.
    3. otherwise, replace root with new element and perform normal heap "sift-down".

And we get O(log(N)) insert as a worst case scenario.

It is the same solution as the one provided by user with nickname "Moron". Thanks to everyone for replies.

P.S. Apparently programming without sleeping enough wasn't a good idea.

0
0

It's better to implement your own class using std::array and heap algorithms.

  `template<class T, int fixed_size = 5>
   class fixed_size_arr_pqueue_v2
   {
     std::array<T, fixed_size> _data;
     int _size = 0;

     int parent(int i)
     {
       return (i - 1)/2;
     }

     void heapify(int i, bool downward = false)
     {
       int l = 2*i + 1;
       int r = 2*i + 2;
       int largest = 0;
       if (l < size() && _data[l] > _data[i])
        largest = l;
       else
        largest = i;

       if (r < size() && _data[r] > _data[largest])
        largest = r;   

       if (largest != i)
       {
         std::swap(_data[largest], _data[i]);
         if (!downward)
           heapify(parent(i));
         else
           heapify(largest, true);
       }
    }

    public:

    void push(T &d)
    {
       if (_size == fixed_size)
       {
          //min elements in a max heap lies at leaves only. 
          auto minItr = std::min_element(begin(_data) + _size/2, end(_data));
          auto minPos {minItr - _data.begin()};
          auto min { *minItr};

          if (d > min)
          {
             _data.at(minPos) = d;
             if (_data[parent(minPos)] > d)
             { 
                //this is unlikely to happen in our case? as this position is  a leaf?
                heapify(minPos, true);
             }  
             else
                heapify(parent(minPos));
           }           

          return ;
       }

       _data.at(_size++) = d;
       std::push_heap(_data.begin(), _data.begin() + _size);
    }

    T pop()
    {
       T d = _data.front();
       std::pop_heap(_data.begin(), _data.begin() + _size);
       _size--;
       return d;
    }

    T top()
    {
       return _data.front();
    }

    int size() const
    {
       return _size;
    }
 };`

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.