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I am trying to implement the Hopcroft Karp algorithm in Python using networkx as graph representation.

Currently I am as far as this:

#Algorithms for bipartite graphs

import networkx as nx
import collections

class HopcroftKarp(object):
    INFINITY = -1

    def __init__(self, G):
        self.G = G

    def match(self):
        self.N1, self.N2 = self.partition()
        self.pair = {}
        self.dist = {}
        self.q = collections.deque()

        #init
        for v in self.G:
            self.pair[v] = None
            self.dist[v] = HopcroftKarp.INFINITY

        matching = 0

        while self.bfs():
            for v in self.N1:
                if self.pair[v] and self.dfs(v):
                    matching = matching + 1

        return matching

    def dfs(self, v):
        if v != None:
            for u in self.G.neighbors_iter(v):
                if self.dist[ self.pair[u] ] == self.dist[v] + 1 and self.dfs(self.pair[u]):
                    self.pair[u] = v
                    self.pair[v] = u

                    return True

            self.dist[v] = HopcroftKarp.INFINITY
            return False

        return True

    def bfs(self):
        for v in self.N1:
            if self.pair[v] == None:
                self.dist[v] = 0
                self.q.append(v)
            else:
                self.dist[v] = HopcroftKarp.INFINITY

        self.dist[None] = HopcroftKarp.INFINITY

        while len(self.q) > 0:
            v = self.q.pop()
            if v != None:
                for u in self.G.neighbors_iter(v):
                    if self.dist[ self.pair[u] ] == HopcroftKarp.INFINITY:
                        self.dist[ self.pair[u] ] = self.dist[v] + 1
                        self.q.append(self.pair[u])

        return self.dist[None] != HopcroftKarp.INFINITY


    def partition(self):
        return nx.bipartite_sets(self.G)

The algorithm is taken from http://en.wikipedia.org/wiki/Hopcroft%E2%80%93Karp_algorithm However it does not work. I use the following test code

G = nx.Graph([
(1,"a"), (1,"c"),
(2,"a"), (2,"b"),
(3,"a"), (3,"c"),
(4,"d"), (4,"e"),(4,"f"),(4,"g"),
(5,"b"), (5,"c"),
(6,"c"), (6,"d")
])

matching = HopcroftKarp(G).match()

print matching

Unfortunately this does not work, I end up in an endless loop :(. Can someone spot the error, I am out of ideas and I must admit that I have not yet fully understand the algorithm, so it is mostly an implementation of the pseudo code on wikipedia

share|improve this question

1 Answer 1

up vote 4 down vote accepted

The line

if self.pair[v] and self.dfs(v):

should be

if self.pair[v] is None and self.dfs(v):

as per the pseudo-code on the Wikipedia page. The only other problem I see is that you are using the deque as a stack and you want to use it as a queue. To remedy that, you just need to popleft rather than pop (which pops right). So the line

v = self.q.pop()

should be

v = self.q.popleft()

Hopefully everything else works. I was just checking that your Python code works in the same manner as the pseudocode on Wikipedia so hopefully that pseudocode is correct.

share|improve this answer
    
Thanks, it works now –  Simon Jan 15 '11 at 13:11
    
don't use == for None. You could use self.pair[v] is None instead. –  J.F. Sebastian Feb 17 '12 at 0:44
    
@J.F.Sebastian Yes, you're quite right. –  Justin Peel Feb 17 '12 at 3:16

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