练习 Dijkstra 最短路径算法。

练习 Dijkstra 最短路径算法。

#coding: utf-8

# Author: woodfox, Oct 14, 2014
# http://en.wikipedia.org/wiki/Dijkstra%27s_algorithm

"""
Let the node at which we are starting be called the initial node. Let the distance of node Y be the distance from the initial node to Y. Dijkstra's algorithm will assign some initial distance values and will try to improve them step by step.

1. Assign to every node a tentative distance value: set it to zero for our initial node and to infinity for all other nodes.

2. Mark all nodes unvisited. Set the initial node as current. Create a set of the unvisited nodes called the unvisited set consisting of all the nodes.

3. For the current node, consider all of its unvisited neighbors and calculate their tentative distances. Compare the newly calculated tentative distance to the current assigned value and assign the smaller one. For example, if the current node A is marked with a distance of 6, and the edge connecting it with a neighbor B has length 2, then the distance to B (through A) will be 6 + 2 = 8. If B was previously marked with a distance greater than 8 then change it to 8. Otherwise, keep the current value.

4. When we are done considering all of the neighbors of the current node, mark the current node as visited and remove it from the unvisited set. A visited node will never be checked again.

5. If the destination node has been marked visited (when planning a route between two specific nodes) or if the smallest tentative distance among the nodes in the unvisited set is infinity (when planning a complete traversal; occurs when there is no connection between the initial node and remaining unvisited nodes), then stop. The algorithm has finished.

6. Select the unvisited node that is marked with the smallest tentative distance, and set it as the new "current node" then go back to step 3.
"""

vertices = [1, 2, 3, 4, 5, 6]

# element structure is: [node1, node2, cost]
edges = [[1, 6, 14], [1, 2, 7], [1, 3, 9], [3, 6, 2], [2, 3, 10], [3, 4, 11], [2, 4, 15], [6, 5, 9], [5, 4, 6]]

def get_neighbors(node):
    # key is neighbor's node number, value is cost
    result = {}
    for edge in edges:
        if edge[0] == node:
            other = edge[1]
        elif edge[1] == node:
            other = edge[0]
        else:
            continue
        
        result[other] = edge[2] # cost
    return result

#print(get_neighbors(3))
#print(get_neighbors(5))

MAX_VALUE = 10000

def shorted_path(start, end):
    unvisited = []
    visited = []
    costs = {}
    #result_path = []
    
    for v in vertices:
        if v == start:
            costs[v] = 0
        else:
            costs[v] = MAX_VALUE
        unvisited.append(v)
    
    #print unvisited
    #print costs
    
    current = start
    #result_path.append(current)
    
    while True:
        neighbors = get_neighbors(current)
        min_cost_of_neighbor = MAX_VALUE
        min_cost_n = None
        
        if len(neighbors.keys()) > 0:
            for n, cost in neighbors.iteritems():
                if n in visited:
                    continue
                new_cost = costs[current] + cost
                if new_cost < costs[n]:
                    costs[n] = new_cost
                if costs[n] < min_cost_of_neighbor:
                    min_cost_of_neighbor = costs[n]
                    min_cost_n = n
        
        visited.append(current)
        #print visited, unvisited, current, min_cost_n
        unvisited.remove(current)
        
        if min_cost_n != None:
            current = min_cost_n
        
        if end in visited:
            break
    
    #print costs
    return costs[end]

print shorted_path(1, 5)

测试:

Running “dijkstra_test.py”…
Python 2.7.8teaser
Theme:  
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copy output
Program exited with code #0 after 0.05 seconds.
posted @ 2014-10-14 02:57  thomas888  阅读(411)  评论(0编辑  收藏  举报