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  • graph-tool 练习

    • 如何使用graph-tool模块,如何导入?如何使用graph,使用其算法?
    • 如何使用Boost Graph库,安装,测试?

    1 创建和操纵图

    • 如何创建空图?
      g = Graph()

    • 如何精准的创建有向图和无向图?
      ug = Graph(directed=False)

    • 如何切换有向和无向?
      ug.set_directed(False)

    • 如何查询图的有向和无向属性?
      assert(ug.is_directed() == False)

    • 如何通过一个已有的图创建新图?
      g1 = Graph()
      g2 = Graph(g1)

    • 如何添加顶点?
      v1 = g.add_vertex()
      v2 = g.add_vertex()

    • 如何创建边?
      e = g.add_edge(v1, v2)

    • 如何浏览显示已有的图?
      graph_draw(g, vertex_text=g.vertex_index, vertex_font_size=18,output_size=(200, 200), output="two-nodes.png")

    • 如何获得顶点的出度?
      print(v1.out_degree())

    • 怎么返回一条边的source和target?
      print(e.source(), e.target())

    • 如何创建顶点,创建指定数量的顶点?
      vlist = g.add_vertex(10)
      print(len(list(vlist)))

    • 如何获得顶点的索引?
      v = g.add_vertex()
      print(g.vertex_index[v])
      print(int(v))

    • 怎么将顶点和边删除?fast == True选项如何使用?set_fast_edge_removal()如何使用?
      g.remove_edge(e)
      g.remove_vertex(v2)

    • 如何通过索引获得顶点?
      v = g.vertex(8)

    • 如何通过索引获得边?
      g.add_edge(g.vertex(2), g.vertex(3))
      e = g.edge(2, 3)

    • 如何显示边的索引?
      e = g.add_edge(g.vertex(0), g.vertex(1))
      print(g.edge_index[e])

    1.1 遍历顶点和边

    1.1.1 遍历所有顶点或边

    • 如何遍历图所有的顶点或边?
      vertices()
      edges()
    for v in g.vertices():
        print(v)
    for e in g.edges():
        print(e)
    

    1.1.2 遍历一个顶点的neighbourhood

    • 如何遍历顶点的出/入边以及出/入邻接点
      out_edges()
      in_edges()
      out_neighbours()
      in_neighbours()
    from itertools import izip
    for v in g.vertices():
    for e in v.out_edges():
        print(e)
    for w in v.out_neighbours():
        print(w)
    
    # the edge and neighbours order always match
    for e,w in izip(v.out_edges(), v.out_neighbours()):
        assert(e.target() == w)
    

    2 属性映射

    • 什么是属性映射?有哪几种类型?由哪个类操作?属性映射的值得类型有哪几种?
      一种将额外信息与顶点、边或图本身相关联的方式。
      顶点、边和图。
      PropertyMap类
      bool、int16_t、int32_t、int64_t、double、long double、string、vector bool
      vector uint8_t、vector int16_t、vector int32_t、vector int64_t、vector double
      vector long double、vector string、python::object

    • 如何为图创建新的属性映射?
      new_vertex_property()
      new_edge_property()
      new_graph_property()

    • 如何访问属性映射?
      通过顶点或边的描述符或图本身,来访问该值(属性映射描述符[顶点、边或图])
      vprop_double = g.new_vertex_property("double") 顶点的属性映射
      vprop_double[g.vertex(10)] = 3.1416
      .
      vprop_vint = g.new_vertex_property("vector<int>") 顶点的属性映射
      vprop_vint[g.vertex(40)] = [1, 3, 42, 54]
      .
      eprop_dict = g.new_edge_property("object") 边的属性映射
      eprop_dict[g.edges().next()] = {"foo": "bar", "gnu": 42}
      .
      gprop_bool = g.new_graph_property("bool") 图的属性映射
      gprop_bool[g] = True

    • 属性映射访问的其他形式?
      vprop_double.get_array()[:] = random(g.num_vertices()) get_array()方法
      vprop_double.a = random(g.num_vertices()) a属性

    2.1 内部属性映射

    • 什么是内部属性映射?
      被复制并和图一起被保存到一个文件,属性被内在化

    • 怎么使用内部属性映射?
      属性映射必须有一个唯一的名称,相当于一个类型,可以产生具体的实例,即具体的属性
      vertex_properties vp
      edge_properties ep
      graph_properties gp

    • 区分类型,名字和值!!!

    >>> gprop = g.new_graph_property("int")  #定义了一个类型
    >>> g.graph_properties["foo"] = gprop   # 定义了一个变量
    >>> g.graph_properties["foo"] = 42      # 为变量赋了一个值
    >>> print(g.graph_properties["foo"])   #输出变量的值
    42
    >>> del g.graph_properties["foo"]       # 删除了定义过的变量
    
    • 如何通过属性访问属性映射?
    >>> vprop = g.new_vertex_property("double")
    >>> g.vp.foo = vprop    # 等价于g.vertex_properties["foo"] = vprop
    >>> v = g.vertex(0)
    >>> g.vp.foo[v] = 3.14  #等价于v.vertex_properties["foo"] = 3.14
    >>> print(g.vp.foo[v])
    3.14
    

    图的I/O

    • 图保存和加载的四种格式?
      graphml、dot、gml和gt

    • 图从文件保存和加载的方法,从磁盘加载的方法?
      save()
      load()
      load_graph()
      .

    g = Graph()
    g.save("my_graph.xml.gz")
    g2 = load_graph("my_graph.xml.gz")
    

    .
    pickle模块

    一个例子:构建一个 Price网络

    • 如何看懂Price网络的代码?
    #! /usr/bin/env python
    
    # We will need some things from several places
    from __future__ import division, absolute_import, print_function
    import sys
    if sys.version_info < (3,):
        range = xrange
    import os
    from pylab import *  # for plotting
    from numpy.random import *  # for random sampling
    seed(42)
    
    # We need to import the graph_tool module itself
    from graph_tool.all import *
    
    # let's construct a Price network (the one that existed before Barabasi). It is
    # a directed network, with preferential attachment. The algorithm below is
    # very naive, and a bit slow, but quite simple.
    
    # We start with an empty, directed graph
    g = Graph()
    
    # We want also to keep the age information for each vertex and edge. For that
    # let's create some property maps
    v_age = g.new_vertex_property("int")
    e_age = g.new_edge_property("int")
    
    # The final size of the network
    N = 100000
    
    # We have to start with one vertex
    v = g.add_vertex()
    v_age[v] = 0
    
    # we will keep a list of the vertices. The number of times a vertex is in this
    # list will give the probability of it being selected.
    vlist = [v]
    
    # let's now add the new edges and vertices
    for i in range(1, N):
        # create our new vertex
        v = g.add_vertex()
        v_age[v] = i
    
        # we need to sample a new vertex to be the target, based on its in-degree +
        # 1. For that, we simply randomly sample it from vlist.
        i = randint(0, len(vlist))
        target = vlist[i]
    
        # add edge
        e = g.add_edge(v, target)
        e_age[e] = i
    
        # put v and target in the list
        vlist.append(target)
        vlist.append(v)
    
    # now we have a graph!
    
    # let's do a random walk on the graph and print the age of the vertices we find,
    # just for fun.
    
    v = g.vertex(randint(0, g.num_vertices()))
    while True:
        print("vertex:", int(v), "in-degree:", v.in_degree(), "out-degree:",
              v.out_degree(), "age:", v_age[v])
    
        if v.out_degree() == 0:
            print("Nowhere else to go... We found the main hub!")
            break
    
        n_list = []
        for w in v.out_neighbours():
            n_list.append(w)
        v = n_list[randint(0, len(n_list))]
    
    # let's save our graph for posterity. We want to save the age properties as
    # well... To do this, they must become "internal" properties:
    
    g.vertex_properties["age"] = v_age
    g.edge_properties["age"] = e_age
    
    # now we can save it
    g.save("price.xml.gz")
    
    
    # Let's plot its in-degree distribution
    in_hist = vertex_hist(g, "in")
    
    y = in_hist[0]
    err = sqrt(in_hist[0])
    err[err >= y] = y[err >= y] - 1e-2
    
    figure(figsize=(6,4))
    errorbar(in_hist[1][:-1], in_hist[0], fmt="o", yerr=err,
            label="in")
    gca().set_yscale("log")
    gca().set_xscale("log")
    gca().set_ylim(1e-1, 1e5)
    gca().set_xlim(0.8, 1e3)
    subplots_adjust(left=0.2, bottom=0.2)
    xlabel("$k_{in}$")
    ylabel("$NP(k_{in})$")
    tight_layout()
    savefig("price-deg-dist.pdf")
    savefig("price-deg-dist.png")
    
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  • 原文地址:https://www.cnblogs.com/leezx/p/5572935.html
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