1.图和超图
图作为一种数据结构,由节点和边组成,可由下图表示。其中一个边只能链接两个节点。一个图可表示为G=(v,e,w)
其中v表示节点,e表示边,w表示节点的特征。关于图的表示可参考,本文不再详述。
对于超图,其与图结构最主要的区别就是一条边可以连接多个节点,因此我们可以认为图是一种特殊的超图。超图结构如下图所示。
超图可表示为G=(υ,ε,ω)。其中υ为节点集合,ε为超边集合,ω为超边权重的对称矩阵。超图G可以关联矩阵H来表示,其词条定义为:
改公式可解释为如果某个节点属于某个超边,则关联矩阵H的值为1,否则为0。
对于单个节点v可定义为:
可解释为连接该节点的所有边乘上权重向量的和。
Dₑ和Dᵥ由d(v)和s(e)分别表示为超边和节点的对角矩阵。
单个边可定义为:
可以理解为该边包含的所有节点之和。
2.实例
下面举出一个具体实例帮助理解超图的构建。以该图为例
图中有8个节点,3个超边。超边的细化图如下:
假设权重&W&为全1矩阵,因为它对构建超图数据结果无影响,那么H为一个3行8列的矩阵,表示为:
h(1,1) = 0
h(2,1) = 1
h(3,1) = 0
h(4,1) = 1
h(5,1) = 0
h(6,1) = 0
h(7,1) = 0
h(8,1) = 1
h(1,2) = 1
h(2,2) = 0
h(3,2) = 0
h(4,2) = 0
h(5,2) = 0
h(6,2) = 1
h(7,2) = 1
h(8,2) = 0
h(1,3) = 0
h(2,3) = 0
h(3,3) = 1
h(4,3) = 0
h(5,3) = 1
h(6,3) = 0
h(7,3) = 1
h(8,3) = 0
De表示为:
d(1) = 1
d(2) = 1
d(3) = 1
d(4) = 1
d(5) = 1
d(6) = 1
d(7) = 2
d(8) = 1
Dv表示为:
s(1) = 3
s(2) = 3
s(3) = 3
3.代码实现
下面我们用python代码进行编程,我们的目标是在知道节点的特征W通过特征的距离来生成 G mathcal{G} G矩阵。路线为:W,H, G mathcal{G} G。主要代码如下:
import numpy as np #KNN生成H x = np.array([[1,0,0,0,1,0,1,0,0,0], [1,1,1,0,0,0,1,1,1,0], [1,1,1,0,0,1,1,1,1,0], [0,1,0,0,0,0,1,0,1,0], [1,1,1,1,0,0,1,1,0,1], [1,0,1,0,0,1,0,1,1,0], [0,1,0,0,1,0,1,1,1,0], [0,1,1,0,1,0,1,0,1,1]]) def Eu_dis(x): """ Calculate the distance among each raw of x :param x: N X D N: the object number D: Dimension of the feature :return: N X N distance matrix """ x = np.mat(x) aa = np.sum(np.multiply(x, x), 1) ab = x * x.T dist_mat = aa + aa.T - 2 * ab dist_mat[dist_mat < 0] = 0 dist_mat = np.sqrt(dist_mat) dist_mat = np.maximum(dist_mat, dist_mat.T) return dist_mat def hyperedge_concat(*H_list): """ Concatenate hyperedge group in H_list :param H_list: Hyperedge groups which contain two or more hypergraph incidence matrix :return: Fused hypergraph incidence matrix """ H = None for h in H_list: if h is not None and h != []: # for the first H appended to fused hypergraph incidence matrix if H is None: H = h else: if type(h) != list: H = np.hstack((H, h)) else: tmp = [] for a, b in zip(H, h): tmp.append(np.hstack((a, b))) H = tmp return H def construct_H_with_KNN_from_distance(dis_mat, k_neig, is_probH=True, m_prob=1): """ construct hypregraph incidence matrix from hypergraph node distance matrix :param dis_mat: node distance matrix :param k_neig: K nearest neighbor :param is_probH: prob Vertex-Edge matrix or binary :param m_prob: prob :return: N_object X N_hyperedge """ n_obj = dis_mat.shape[0] # construct hyperedge from the central feature space of each node n_edge = n_obj H = np.zeros((n_obj, n_edge)) for center_idx in range(n_obj): dis_mat[center_idx, center_idx] = 0 dis_vec = dis_mat[center_idx] nearest_idx = np.array(np.argsort(dis_vec)).squeeze() avg_dis = np.average(dis_vec) if not np.any(nearest_idx[:k_neig] == center_idx): nearest_idx[k_neig - 1] = center_idx for node_idx in nearest_idx[:k_neig]: if is_probH: H[node_idx, center_idx] = np.exp(-dis_vec[0, node_idx] ** 2 / (m_prob * avg_dis) ** 2) else: H[node_idx, center_idx] = 1.0 return H def construct_H_with_KNN(X, K_neigs=[10], split_diff_scale=False, is_probH=True, m_prob=1): """ init multi-scale hypergraph Vertex-Edge matrix from original node feature matrix :param X: N_object x feature_number :param K_neigs: the number of neighbor expansion :param split_diff_scale: whether split hyperedge group at different neighbor scale :param is_probH: prob Vertex-Edge matrix or binary :param m_prob: prob :return: N_object x N_hyperedge """ if len(X.shape) != 2: X = X.reshape(-1, X.shape[-1]) if type(K_neigs) == int: K_neigs = [K_neigs] dis_mat = Eu_dis(X) H = [] for k_neig in K_neigs: H_tmp = construct_H_with_KNN_from_distance(dis_mat, k_neig, is_probH, m_prob) if not split_diff_scale: H = hyperedge_concat(H, H_tmp) else: H.append(H_tmp) return H H = construct_H_with_KNN(x) #生成G def generate_G_from_H(H, variable_weight=False): """ calculate G from hypgraph incidence matrix H :param H: hypergraph incidence matrix H :param variable_weight: whether the weight of hyperedge is variable :return: G """ if type(H) != list: return _generate_G_from_H(H, variable_weight) else: G = [] for sub_H in H: G.append(generate_G_from_H(sub_H, variable_weight)) return G def _generate_G_from_H(H, variable_weight=False): """ calculate G from hypgraph incidence matrix H :param H: hypergraph incidence matrix H :param variable_weight: whether the weight of hyperedge is variable :return: G """ H = np.array(H) n_edge = H.shape[1] # the weight of the hyperedge W = np.ones(n_edge) # the degree of the node DV = np.sum(H * W, axis=1) # the degree of the hyperedge DE = np.sum(H, axis=0) invDE = np.mat(np.diag(np.power(DE, -1))) DV2 = np.mat(np.diag(np.power(DV, -0.5))) W = np.mat(np.diag(W)) H = np.mat(H) HT = H.T if variable_weight: DV2_H = DV2 * H invDE_HT_DV2 = invDE * HT * DV2 return DV2_H, W, invDE_HT_DV2 else: G = DV2 * H * W * invDE * HT * DV2 return G G = generate_G_from_H(H)
实验结果:
H
G
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原文链接:https://blog.csdn.net/weixin_44868393/article/details/115703062