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    python计算最小优先级队列代码分享

    作者:admin 时间:2021-02-20 06:42

    复制代码 代码如下:

    # -*- coding: utf-8 -*-

    class Heap(object):

        @classmethod
        def parent(cls, i):
            """父结点下标"""
            return int((i - 1) >> 1);

        @classmethod
        def left(cls, i):
            """左儿子下标"""
            return (i << 1) + 1;

        @classmethod
        def right(cls, i):
            """右儿子下标"""
            return (i << 1) + 2;

    class MinPriorityQueue(list, Heap):

        @classmethod
        def min_heapify(cls, A, i, heap_size):
            """最小堆化A[i]为根的子树"""
            l, r = cls.left(i), cls.right(i)
            if l < heap_size and A[l] < A[i]:
                least = l
            else:
                least = i
            if r < heap_size and A[r] < A[least]:
                least = r
            if least != i:
                A[i], A[least] = A[least], A[i]
                cls.min_heapify(A, least, heap_size)

        def minimum(self):
            """返回最小元素,伪码如下:
            HEAP-MINIMUM(A)
            1  return A[1]

            T(n) = O(1)
            """
            return self[0]

        def extract_min(self):
            """去除并返回最小元素,伪码如下:
            HEAP-EXTRACT-MIN(A)
            1  if heap-size[A] < 1
            2    then error "heap underflow"
            3  min ← A[1]
            4  A[1] ← A[heap-size[A]] // 尾元素放到第一位
            5  heap-size[A] ← heap-size[A] - 1 // 减小heap-size[A]
            6  MIN-HEAPIFY(A, 1) // 保持最小堆性质
            7  return min

            T(n) = θ(lgn)
            """
            heap_size = len(self)
            assert heap_size > 0, "heap underflow"
            val = self[0]
            tail = heap_size - 1
            self[0] = self[tail]
            self.min_heapify(self, 0, tail)
            self.pop(tail)
            return val

        def decrease_key(self, i, key):
            """将i处的值减少到key,伪码如下:
            HEAP-DECREASE-KEY(A, i, key)
            1  if key > A[i]
            2    then error "new key is larger than current key"
            3  A[i] ← key
            4  while i > 1 and A[PARENT(i)] > A[i] // 不是根结点且父结点更大时
            5    do exchange A[i] ↔ A[PARENT(i)] // 交换两元素
            6       i ← PARENT(i) // 指向父结点位置

            T(n) = θ(lgn)
            """
            val = self[i]
            assert key <= val, "new key is larger than current key"
            self[i] = key
            parent = self.parent
            while i > 0 and self[parent(i)] > self[i]:
                self[i], self[parent(i)] = self[parent(i)], self[i]
                i = parent(i)

        def insert(self, key):
            """将key插入A,伪码如下:
            MIN-HEAP-INSERT(A, key)
            1  heap-size[A] ← heap-size[A] + 1 // 对元素个数增加
            2  A[heap-size[A]] ← +∞ // 初始新增加元素为+∞
            3  HEAP-DECREASE-KEY(A, heap-size[A], key) // 将新增元素减少到key

            T(n) = θ(lgn)
            """
            self.append(float('inf'))
            self.decrease_key(len(self) - 1, key)

    if __name__ == '__main__':
        import random

        keys = range(10)
        random.shuffle(keys)
        print(keys)

        queue = MinPriorityQueue() # 插入方式建最小堆
        for i in keys:
            queue.insert(i)
        print(queue)

        print('*' * 30)

        for i in range(len(queue)):
            val = i % 3
            if val == 0:
                val = queue.extract_min() # 去除并返回最小元素
            elif val == 1:
                val = queue.minimum() # 返回最小元素
            else:
                val = queue[1] - 10
                queue.decrease_key(1, val) # queue[1]减少10
            print(queue, val)

        print([queue.extract_min() for i in range(len(queue))])

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