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spKernel.py 12 kB

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  1. """
  2. @author: linlin
  3. @references: Borgwardt KM, Kriegel HP. Shortest-path kernels on graphs. InData
  4. Mining, Fifth IEEE International Conference on 2005 Nov 27 (pp. 8-pp). IEEE.
  5. """
  6. import sys
  7. import time
  8. from itertools import product
  9. from functools import partial
  10. from multiprocessing import Pool
  11. from tqdm import tqdm
  12. import networkx as nx
  13. import numpy as np
  14. from pygraph.utils.utils import getSPGraph
  15. from pygraph.utils.graphdataset import get_dataset_attributes
  16. from pygraph.utils.parallel import parallel_gm
  17. sys.path.insert(0, "../")
  18. def spkernel(*args,
  19. node_label='atom',
  20. edge_weight=None,
  21. node_kernels=None,
  22. n_jobs=None,
  23. verbose=True):
  24. """Calculate shortest-path kernels between graphs.
  25. Parameters
  26. ----------
  27. Gn : List of NetworkX graph
  28. List of graphs between which the kernels are calculated.
  29. /
  30. G1, G2 : NetworkX graphs
  31. 2 graphs between which the kernel is calculated.
  32. node_label : string
  33. node attribute used as label. The default node label is atom.
  34. edge_weight : string
  35. Edge attribute name corresponding to the edge weight.
  36. node_kernels: dict
  37. A dictionary of kernel functions for nodes, including 3 items: 'symb'
  38. for symbolic node labels, 'nsymb' for non-symbolic node labels, 'mix'
  39. for both labels. The first 2 functions take two node labels as
  40. parameters, and the 'mix' function takes 4 parameters, a symbolic and a
  41. non-symbolic label for each the two nodes. Each label is in form of 2-D
  42. dimension array (n_samples, n_features). Each function returns an
  43. number as the kernel value. Ignored when nodes are unlabeled.
  44. Return
  45. ------
  46. Kmatrix : Numpy matrix
  47. Kernel matrix, each element of which is the sp kernel between 2 praphs.
  48. """
  49. # pre-process
  50. Gn = args[0] if len(args) == 1 else [args[0], args[1]]
  51. weight = None
  52. if edge_weight is None:
  53. print('\n None edge weight specified. Set all weight to 1.\n')
  54. else:
  55. try:
  56. some_weight = list(
  57. nx.get_edge_attributes(Gn[0], edge_weight).values())[0]
  58. if isinstance(some_weight, (float, int)):
  59. weight = edge_weight
  60. else:
  61. print(
  62. '\n Edge weight with name %s is not float or integer. Set all weight to 1.\n'
  63. % edge_weight)
  64. except:
  65. print(
  66. '\n Edge weight with name "%s" is not found in the edge attributes. Set all weight to 1.\n'
  67. % edge_weight)
  68. ds_attrs = get_dataset_attributes(
  69. Gn,
  70. attr_names=['node_labeled', 'node_attr_dim', 'is_directed'],
  71. node_label=node_label)
  72. # remove graphs with no edges, as no sp can be found in their structures,
  73. # so the kernel between such a graph and itself will be zero.
  74. len_gn = len(Gn)
  75. Gn = [(idx, G) for idx, G in enumerate(Gn) if nx.number_of_edges(G) != 0]
  76. idx = [G[0] for G in Gn]
  77. Gn = [G[1] for G in Gn]
  78. if len(Gn) != len_gn:
  79. print('\n %d graphs are removed as they don\'t contain edges.\n' %
  80. (len_gn - len(Gn)))
  81. start_time = time.time()
  82. pool = Pool(n_jobs)
  83. # get shortest path graphs of Gn
  84. getsp_partial = partial(wrapper_getSPGraph, weight)
  85. itr = zip(Gn, range(0, len(Gn)))
  86. if len(Gn) < 100 * n_jobs:
  87. # # use default chunksize as pool.map when iterable is less than 100
  88. # chunksize, extra = divmod(len(Gn), n_jobs * 4)
  89. # if extra:
  90. # chunksize += 1
  91. chunksize = int(len(Gn) / n_jobs) + 1
  92. else:
  93. chunksize = 100
  94. for i, g in tqdm(
  95. pool.imap_unordered(getsp_partial, itr, chunksize),
  96. desc='getting sp graphs', file=sys.stdout):
  97. Gn[i] = g
  98. pool.close()
  99. pool.join()
  100. # # ---- direct running, normally use single CPU core. ----
  101. # for i in tqdm(range(len(Gn)), desc='getting sp graphs', file=sys.stdout):
  102. # i, Gn[i] = wrapper_getSPGraph(weight, (Gn[i], i))
  103. # # ---- use pool.map to parallel ----
  104. # result_sp = pool.map(getsp_partial, range(0, len(Gn)))
  105. # for i in result_sp:
  106. # Gn[i[0]] = i[1]
  107. # or
  108. # getsp_partial = partial(wrap_getSPGraph, Gn, weight)
  109. # for i, g in tqdm(
  110. # pool.map(getsp_partial, range(0, len(Gn))),
  111. # desc='getting sp graphs',
  112. # file=sys.stdout):
  113. # Gn[i] = g
  114. # # ---- only for the Fast Computation of Shortest Path Kernel (FCSP)
  115. # sp_ml = [0] * len(Gn) # shortest path matrices
  116. # for i in result_sp:
  117. # sp_ml[i[0]] = i[1]
  118. # edge_x_g = [[] for i in range(len(sp_ml))]
  119. # edge_y_g = [[] for i in range(len(sp_ml))]
  120. # edge_w_g = [[] for i in range(len(sp_ml))]
  121. # for idx, item in enumerate(sp_ml):
  122. # for i1 in range(len(item)):
  123. # for i2 in range(i1 + 1, len(item)):
  124. # if item[i1, i2] != np.inf:
  125. # edge_x_g[idx].append(i1)
  126. # edge_y_g[idx].append(i2)
  127. # edge_w_g[idx].append(item[i1, i2])
  128. # print(len(edge_x_g[0]))
  129. # print(len(edge_y_g[0]))
  130. # print(len(edge_w_g[0]))
  131. Kmatrix = np.zeros((len(Gn), len(Gn)))
  132. # ---- use pool.imap_unordered to parallel and track progress. ----
  133. def init_worker(gn_toshare):
  134. global G_gn
  135. G_gn = gn_toshare
  136. do_partial = partial(wrapper_sp_do, ds_attrs, node_label, node_kernels)
  137. parallel_gm(do_partial, Kmatrix, Gn, init_worker=init_worker,
  138. glbv=(Gn,), n_jobs=n_jobs, verbose=verbose)
  139. # # ---- use pool.map to parallel. ----
  140. # # result_perf = pool.map(do_partial, itr)
  141. # do_partial = partial(spkernel_do, Gn, ds_attrs, node_label, node_kernels)
  142. # itr = combinations_with_replacement(range(0, len(Gn)), 2)
  143. # for i, j, kernel in tqdm(
  144. # pool.map(do_partial, itr), desc='calculating kernels',
  145. # file=sys.stdout):
  146. # Kmatrix[i][j] = kernel
  147. # Kmatrix[j][i] = kernel
  148. # pool.close()
  149. # pool.join()
  150. # # ---- use joblib.Parallel to parallel and track progress. ----
  151. # result_perf = Parallel(
  152. # n_jobs=n_jobs, verbose=10)(
  153. # delayed(do_partial)(ij)
  154. # for ij in combinations_with_replacement(range(0, len(Gn)), 2))
  155. # result_perf = [
  156. # do_partial(ij)
  157. # for ij in combinations_with_replacement(range(0, len(Gn)), 2)
  158. # ]
  159. # for i in result_perf:
  160. # Kmatrix[i[0]][i[1]] = i[2]
  161. # Kmatrix[i[1]][i[0]] = i[2]
  162. # # ---- direct running, normally use single CPU core. ----
  163. # from itertools import combinations_with_replacement
  164. # itr = combinations_with_replacement(range(0, len(Gn)), 2)
  165. # for i, j in tqdm(itr, desc='calculating kernels', file=sys.stdout):
  166. # kernel = spkernel_do(Gn[i], Gn[j], ds_attrs, node_label, node_kernels)
  167. # Kmatrix[i][j] = kernel
  168. # Kmatrix[j][i] = kernel
  169. run_time = time.time() - start_time
  170. print(
  171. "\n --- shortest path kernel matrix of size %d built in %s seconds ---"
  172. % (len(Gn), run_time))
  173. return Kmatrix, run_time, idx
  174. def spkernel_do(g1, g2, ds_attrs, node_label, node_kernels):
  175. kernel = 0
  176. # compute shortest path matrices first, method borrowed from FCSP.
  177. vk_dict = {} # shortest path matrices dict
  178. if ds_attrs['node_labeled']:
  179. # node symb and non-synb labeled
  180. if ds_attrs['node_attr_dim'] > 0:
  181. kn = node_kernels['mix']
  182. for n1, n2 in product(
  183. g1.nodes(data=True), g2.nodes(data=True)):
  184. vk_dict[(n1[0], n2[0])] = kn(
  185. n1[1][node_label], n2[1][node_label],
  186. n1[1]['attributes'], n2[1]['attributes'])
  187. # node symb labeled
  188. else:
  189. kn = node_kernels['symb']
  190. for n1 in g1.nodes(data=True):
  191. for n2 in g2.nodes(data=True):
  192. vk_dict[(n1[0], n2[0])] = kn(n1[1][node_label],
  193. n2[1][node_label])
  194. else:
  195. # node non-synb labeled
  196. if ds_attrs['node_attr_dim'] > 0:
  197. kn = node_kernels['nsymb']
  198. for n1 in g1.nodes(data=True):
  199. for n2 in g2.nodes(data=True):
  200. vk_dict[(n1[0], n2[0])] = kn(n1[1]['attributes'],
  201. n2[1]['attributes'])
  202. # node unlabeled
  203. else:
  204. for e1, e2 in product(
  205. g1.edges(data=True), g2.edges(data=True)):
  206. if e1[2]['cost'] == e2[2]['cost']:
  207. kernel += 1
  208. return kernel
  209. # compute graph kernels
  210. if ds_attrs['is_directed']:
  211. for e1, e2 in product(g1.edges(data=True), g2.edges(data=True)):
  212. if e1[2]['cost'] == e2[2]['cost']:
  213. nk11, nk22 = vk_dict[(e1[0], e2[0])], vk_dict[(e1[1],
  214. e2[1])]
  215. kn1 = nk11 * nk22
  216. kernel += kn1
  217. else:
  218. for e1, e2 in product(g1.edges(data=True), g2.edges(data=True)):
  219. if e1[2]['cost'] == e2[2]['cost']:
  220. # each edge walk is counted twice, starting from both its extreme nodes.
  221. nk11, nk12, nk21, nk22 = vk_dict[(e1[0], e2[0])], vk_dict[(
  222. e1[0], e2[1])], vk_dict[(e1[1],
  223. e2[0])], vk_dict[(e1[1],
  224. e2[1])]
  225. kn1 = nk11 * nk22
  226. kn2 = nk12 * nk21
  227. kernel += kn1 + kn2
  228. # # ---- exact implementation of the Fast Computation of Shortest Path Kernel (FCSP), reference [2], sadly it is slower than the current implementation
  229. # # compute vertex kernels
  230. # try:
  231. # vk_mat = np.zeros((nx.number_of_nodes(g1),
  232. # nx.number_of_nodes(g2)))
  233. # g1nl = enumerate(g1.nodes(data=True))
  234. # g2nl = enumerate(g2.nodes(data=True))
  235. # for i1, n1 in g1nl:
  236. # for i2, n2 in g2nl:
  237. # vk_mat[i1][i2] = kn(
  238. # n1[1][node_label], n2[1][node_label],
  239. # [n1[1]['attributes']], [n2[1]['attributes']])
  240. # range1 = range(0, len(edge_w_g[i]))
  241. # range2 = range(0, len(edge_w_g[j]))
  242. # for i1 in range1:
  243. # x1 = edge_x_g[i][i1]
  244. # y1 = edge_y_g[i][i1]
  245. # w1 = edge_w_g[i][i1]
  246. # for i2 in range2:
  247. # x2 = edge_x_g[j][i2]
  248. # y2 = edge_y_g[j][i2]
  249. # w2 = edge_w_g[j][i2]
  250. # ke = (w1 == w2)
  251. # if ke > 0:
  252. # kn1 = vk_mat[x1][x2] * vk_mat[y1][y2]
  253. # kn2 = vk_mat[x1][y2] * vk_mat[y1][x2]
  254. # kernel += kn1 + kn2
  255. return kernel
  256. def wrapper_sp_do(ds_attrs, node_label, node_kernels, itr):
  257. i = itr[0]
  258. j = itr[1]
  259. return i, j, spkernel_do(G_gn[i], G_gn[j], ds_attrs, node_label, node_kernels)
  260. #def wrapper_sp_do(ds_attrs, node_label, node_kernels, itr_item):
  261. # g1 = itr_item[0][0]
  262. # g2 = itr_item[0][1]
  263. # i = itr_item[1][0]
  264. # j = itr_item[1][1]
  265. # return i, j, spkernel_do(g1, g2, ds_attrs, node_label, node_kernels)
  266. def wrapper_getSPGraph(weight, itr_item):
  267. g = itr_item[0]
  268. i = itr_item[1]
  269. return i, getSPGraph(g, edge_weight=weight)
  270. # return i, nx.floyd_warshall_numpy(g, weight=weight)

A Python package for graph kernels, graph edit distances and graph pre-image problem.