Algorithmes de graphes Python
这篇文章主要介绍了Python图算法,结合实例形式详细分析了Python数据结构与算法中的图算法实现技巧,需要的朋友可以参考下
本文实例讲述了Python图算法。分享给大家供大家参考,具体如下:
#encoding=utf-8 import networkx,heapq,sys from matplotlib import pyplot from collections import defaultdict,OrderedDict from numpy import array # Data in graphdata.txt: # a b 4 # a h 8 # b c 8 # b h 11 # h i 7 # h g 1 # g i 6 # g f 2 # c f 4 # c i 2 # c d 7 # d f 14 # d e 9 # f e 10 def Edge(): return defaultdict(Edge) class Graph: def __init__(self): self.Link = Edge() self.FileName = '' self.Separator = '' def MakeLink(self,filename,separator): self.FileName = filename self.Separator = separator graphfile = open(filename,'r') for line in graphfile: items = line.split(separator) self.Link[items[0]][items[1]] = int(items[2]) self.Link[items[1]][items[0]] = int(items[2]) graphfile.close() def LocalClusteringCoefficient(self,node): neighbors = self.Link[node] if len(neighbors) <= 1: return 0 links = 0 for j in neighbors: for k in neighbors: if j in self.Link[k]: links += 0.5 return 2.0*links/(len(neighbors)*(len(neighbors)-1)) def AverageClusteringCoefficient(self): total = 0.0 for node in self.Link.keys(): total += self.LocalClusteringCoefficient(node) return total/len(self.Link.keys()) def DeepFirstSearch(self,start): visitedNodes = [] todoList = [start] while todoList: visit = todoList.pop(0) if visit not in visitedNodes: visitedNodes.append(visit) todoList = self.Link[visit].keys() + todoList return visitedNodes def BreadthFirstSearch(self,start): visitedNodes = [] todoList = [start] while todoList: visit = todoList.pop(0) if visit not in visitedNodes: visitedNodes.append(visit) todoList = todoList + self.Link[visit].keys() return visitedNodes def ListAllComponent(self): allComponent = [] visited = {} for node in self.Link.iterkeys(): if node not in visited: oneComponent = self.MakeComponent(node,visited) allComponent.append(oneComponent) return allComponent def CheckConnection(self,node1,node2): return True if node2 in self.MakeComponent(node1,{}) else False def MakeComponent(self,node,visited): visited[node] = True component = [node] for neighbor in self.Link[node]: if neighbor not in visited: component += self.MakeComponent(neighbor,visited) return component def MinimumSpanningTree_Kruskal(self,start): graphEdges = [line.strip('\n').split(self.Separator) for line in open(self.FileName,'r')] nodeSet = {} for idx,node in enumerate(self.MakeComponent(start,{})): nodeSet[node] = idx edgeNumber = 0; totalEdgeNumber = len(nodeSet)-1 for oneEdge in sorted(graphEdges,key=lambda x:int(x[2]),reverse=False): if edgeNumber == totalEdgeNumber: break nodeA,nodeB,cost = oneEdge if nodeA in nodeSet and nodeSet[nodeA] != nodeSet[nodeB]: nodeBSet = nodeSet[nodeB] for node in nodeSet.keys(): if nodeSet[node] == nodeBSet: nodeSet[node] = nodeSet[nodeA] print nodeA,nodeB,cost edgeNumber += 1 def MinimumSpanningTree_Prim(self,start): expandNode = set(self.MakeComponent(start,{})) distFromTreeSoFar = {}.fromkeys(expandNode,sys.maxint); distFromTreeSoFar[start] = 0 linkToNode = {}.fromkeys(expandNode,'');linkToNode[start] = start while expandNode: # Find the closest dist node closestNode = ''; shortestdistance = sys.maxint; for node,dist in distFromTreeSoFar.iteritems(): if node in expandNode and dist < shortestdistance: closestNode,shortestdistance = node,dist expandNode.remove(closestNode) print linkToNode[closestNode],closestNode,shortestdistance for neighbor in self.Link[closestNode].iterkeys(): recomputedist = self.Link[closestNode][neighbor] if recomputedist < distFromTreeSoFar[neighbor]: distFromTreeSoFar[neighbor] = recomputedist linkToNode[neighbor] = closestNode def ShortestPathOne2One(self,start,end): pathFromStart = {} pathFromStart[start] = [start] todoList = [start] while todoList: current = todoList.pop(0) for neighbor in self.Link[current]: if neighbor not in pathFromStart: pathFromStart[neighbor] = pathFromStart[current] + [neighbor] if neighbor == end: return pathFromStart[end] todoList.append(neighbor) return [] def Centrality(self,node): path2All = self.ShortestPathOne2All(node) # The average of the distances of all the reachable nodes return float(sum([len(path)-1 for path in path2All.itervalues()]))/len(path2All) def SingleSourceShortestPath_Dijkstra(self,start): expandNode = set(self.MakeComponent(start,{})) distFromSourceSoFar = {}.fromkeys(expandNode,sys.maxint); distFromSourceSoFar[start] = 0 while expandNode: # Find the closest dist node closestNode = ''; shortestdistance = sys.maxint; for node,dist in distFromSourceSoFar.iteritems(): if node in expandNode and dist < shortestdistance: closestNode,shortestdistance = node,dist expandNode.remove(closestNode) for neighbor in self.Link[closestNode].iterkeys(): recomputedist = distFromSourceSoFar[closestNode] + self.Link[closestNode][neighbor] if recomputedist < distFromSourceSoFar[neighbor]: distFromSourceSoFar[neighbor] = recomputedist for node in distFromSourceSoFar: print start,node,distFromSourceSoFar[node] def AllpairsShortestPaths_MatrixMultiplication(self,start): nodeIdx = {}; idxNode = {}; for idx,node in enumerate(self.MakeComponent(start,{})): nodeIdx[node] = idx; idxNode[idx] = node matrixSize = len(nodeIdx) MaxInt = 1000 nodeMatrix = array([[MaxInt]*matrixSize]*matrixSize) for node in nodeIdx.iterkeys(): nodeMatrix[nodeIdx[node]][nodeIdx[node]] = 0 for line in open(self.FileName,'r'): nodeA,nodeB,cost = line.strip('\n').split(self.Separator) if nodeA in nodeIdx: nodeMatrix[nodeIdx[nodeA]][nodeIdx[nodeB]] = int(cost) nodeMatrix[nodeIdx[nodeB]][nodeIdx[nodeA]] = int(cost) result = array([[0]*matrixSize]*matrixSize) for i in xrange(matrixSize): for j in xrange(matrixSize): result[i][j] = nodeMatrix[i][j] for itertime in xrange(2,matrixSize): for i in xrange(matrixSize): for j in xrange(matrixSize): if i==j: result[i][j] = 0 continue result[i][j] = MaxInt for k in xrange(matrixSize): result[i][j] = min(result[i][j],result[i][k]+nodeMatrix[k][j]) for i in xrange(matrixSize): for j in xrange(matrixSize): if result[i][j] != MaxInt: print idxNode[i],idxNode[j],result[i][j] def ShortestPathOne2All(self,start): pathFromStart = {} pathFromStart[start] = [start] todoList = [start] while todoList: current = todoList.pop(0) for neighbor in self.Link[current]: if neighbor not in pathFromStart: pathFromStart[neighbor] = pathFromStart[current] + [neighbor] todoList.append(neighbor) return pathFromStart def NDegreeNode(self,start,n): pathFromStart = {} pathFromStart[start] = [start] pathLenFromStart = {} pathLenFromStart[start] = 0 todoList = [start] while todoList: current = todoList.pop(0) for neighbor in self.Link[current]: if neighbor not in pathFromStart: pathFromStart[neighbor] = pathFromStart[current] + [neighbor] pathLenFromStart[neighbor] = pathLenFromStart[current] + 1 if pathLenFromStart[neighbor] <= n+1: todoList.append(neighbor) for node in pathFromStart.keys(): if len(pathFromStart[node]) != n+1: del pathFromStart[node] return pathFromStart def Draw(self): G = networkx.Graph() nodes = self.Link.keys() edges = [(node,neighbor) for node in nodes for neighbor in self.Link[node]] G.add_edges_from(edges) networkx.draw(G) pyplot.show() if __name__=='__main__': separator = '\t' filename = 'C:\\Users\\Administrator\\Desktop\\graphdata.txt' resultfilename = 'C:\\Users\\Administrator\\Desktop\\result.txt' myGraph = Graph() myGraph.MakeLink(filename,separator) print 'LocalClusteringCoefficient',myGraph.LocalClusteringCoefficient('a') print 'AverageClusteringCoefficient',myGraph.AverageClusteringCoefficient() print 'DeepFirstSearch',myGraph.DeepFirstSearch('a') print 'BreadthFirstSearch',myGraph.BreadthFirstSearch('a') print 'ShortestPathOne2One',myGraph.ShortestPathOne2One('a','d') print 'ShortestPathOne2All',myGraph.ShortestPathOne2All('a') print 'NDegreeNode',myGraph.NDegreeNode('a',3).keys() print 'ListAllComponent',myGraph.ListAllComponent() print 'CheckConnection',myGraph.CheckConnection('a','f') print 'Centrality',myGraph.Centrality('c') myGraph.MinimumSpanningTree_Kruskal('a') myGraph.AllpairsShortestPaths_MatrixMultiplication('a') myGraph.MinimumSpanningTree_Prim('a') myGraph.SingleSourceShortestPath_Dijkstra('a') # myGraph.Draw()
更多Python图算法相关文章请关注PHP中文网!

Outils d'IA chauds

Undresser.AI Undress
Application basée sur l'IA pour créer des photos de nu réalistes

AI Clothes Remover
Outil d'IA en ligne pour supprimer les vêtements des photos.

Undress AI Tool
Images de déshabillage gratuites

Clothoff.io
Dissolvant de vêtements AI

Video Face Swap
Échangez les visages dans n'importe quelle vidéo sans effort grâce à notre outil d'échange de visage AI entièrement gratuit !

Article chaud

Outils chauds

Bloc-notes++7.3.1
Éditeur de code facile à utiliser et gratuit

SublimeText3 version chinoise
Version chinoise, très simple à utiliser

Envoyer Studio 13.0.1
Puissant environnement de développement intégré PHP

Dreamweaver CS6
Outils de développement Web visuel

SublimeText3 version Mac
Logiciel d'édition de code au niveau de Dieu (SublimeText3)

Sujets chauds

Solution aux problèmes d'autorisation Lors de la visualisation de la version Python dans Linux Terminal Lorsque vous essayez d'afficher la version Python dans Linux Terminal, entrez Python ...

Comment éviter d'être détecté lors de l'utilisation de FiddlereVerywhere pour les lectures d'homme dans le milieu lorsque vous utilisez FiddlereVerywhere ...

Lorsque vous utilisez la bibliothèque Pandas de Python, comment copier des colonnes entières entre deux frames de données avec différentes structures est un problème courant. Supposons que nous ayons deux dats ...

Comment Uvicorn écoute-t-il en permanence les demandes HTTP? Uvicorn est un serveur Web léger basé sur ASGI. L'une de ses fonctions principales est d'écouter les demandes HTTP et de procéder ...

Comment enseigner les bases de la programmation novice en informatique dans les 10 heures? Si vous n'avez que 10 heures pour enseigner à l'informatique novice des connaissances en programmation, que choisissez-vous d'enseigner ...

Utilisation de Python dans Linux Terminal ...

Fastapi ...

Comprendre la stratégie anti-rampe d'investissement.com, Beaucoup de gens essaient souvent de ramper les données d'actualités sur Investing.com (https://cn.investing.com/news/latest-news) ...
