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dataset.py 20 kB

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  1. #!/usr/bin/env python3
  2. # -*- coding: utf-8 -*-
  3. """
  4. Created on Thu Mar 26 18:48:27 2020
  5. @author: ljia
  6. """
  7. import numpy as np
  8. import networkx as nx
  9. from gklearn.utils.graph_files import load_dataset
  10. import os
  11. class Dataset(object):
  12. def __init__(self, filename=None, filename_targets=None, **kwargs):
  13. if filename is None:
  14. self.__graphs = None
  15. self.__targets = None
  16. self.__node_labels = None
  17. self.__edge_labels = None
  18. self.__node_attrs = None
  19. self.__edge_attrs = None
  20. else:
  21. self.load_dataset(filename, filename_targets=filename_targets, **kwargs)
  22. self.__substructures = None
  23. self.__node_label_dim = None
  24. self.__edge_label_dim = None
  25. self.__directed = None
  26. self.__dataset_size = None
  27. self.__total_node_num = None
  28. self.__ave_node_num = None
  29. self.__min_node_num = None
  30. self.__max_node_num = None
  31. self.__total_edge_num = None
  32. self.__ave_edge_num = None
  33. self.__min_edge_num = None
  34. self.__max_edge_num = None
  35. self.__ave_node_degree = None
  36. self.__min_node_degree = None
  37. self.__max_node_degree = None
  38. self.__ave_fill_factor = None
  39. self.__min_fill_factor = None
  40. self.__max_fill_factor = None
  41. self.__node_label_nums = None
  42. self.__edge_label_nums = None
  43. self.__node_attr_dim = None
  44. self.__edge_attr_dim = None
  45. self.__class_number = None
  46. def load_dataset(self, filename, filename_targets=None, **kwargs):
  47. self.__graphs, self.__targets, label_names = load_dataset(filename, filename_targets=filename_targets, **kwargs)
  48. self.__node_labels = label_names['node_labels']
  49. self.__node_attrs = label_names['node_attrs']
  50. self.__edge_labels = label_names['edge_labels']
  51. self.__edge_attrs = label_names['edge_attrs']
  52. def load_graphs(self, graphs, targets=None):
  53. # this has to be followed by set_labels().
  54. self.__graphs = graphs
  55. self.__targets = targets
  56. # self.set_labels_attrs()
  57. def load_predefined_dataset(self, ds_name):
  58. current_path = os.path.dirname(os.path.realpath(__file__)) + '/'
  59. if ds_name == 'Letter-high': # node non-symb
  60. ds_file = current_path + '../../datasets/Letter-high/Letter-high_A.txt'
  61. self.__graphs, self.__targets, label_names = load_dataset(ds_file)
  62. elif ds_name == 'Letter-med': # node non-symb
  63. ds_file = current_path + '../../datasets/Letter-high/Letter-med_A.txt'
  64. self.__graphs, self.__targets, label_names = load_dataset(ds_file)
  65. elif ds_name == 'Letter-low': # node non-symb
  66. ds_file = current_path + '../../datasets/Letter-high/Letter-low_A.txt'
  67. self.__graphs, self.__targets, label_names = load_dataset(ds_file)
  68. elif ds_name == 'Fingerprint':
  69. ds_file = current_path + '../../datasets/Fingerprint/Fingerprint_A.txt'
  70. self.__graphs, self.__targets, label_names = load_dataset(ds_file)
  71. elif ds_name == 'SYNTHETIC':
  72. pass
  73. elif ds_name == 'SYNTHETICnew':
  74. ds_file = current_path + '../../datasets/SYNTHETICnew/SYNTHETICnew_A.txt'
  75. self.__graphs, self.__targets, label_names = load_dataset(ds_file)
  76. elif ds_name == 'Synthie':
  77. pass
  78. elif ds_name == 'COIL-DEL':
  79. ds_file = current_path + '../../datasets/COIL-DEL/COIL-DEL_A.txt'
  80. self.__graphs, self.__targets, label_names = load_dataset(ds_file)
  81. elif ds_name == 'COIL-RAG':
  82. pass
  83. elif ds_name == 'COLORS-3':
  84. ds_file = current_path + '../../datasets/COLORS-3/COLORS-3_A.txt'
  85. self.__graphs, self.__targets, label_names = load_dataset(ds_file)
  86. elif ds_name == 'FRANKENSTEIN':
  87. ds_file = current_path + '../../datasets/FRANKENSTEIN/FRANKENSTEIN_A.txt'
  88. self.__graphs, self.__targets, label_names = load_dataset(ds_file)
  89. self.__node_labels = label_names['node_labels']
  90. self.__node_attrs = label_names['node_attrs']
  91. self.__edge_labels = label_names['edge_labels']
  92. self.__edge_attrs = label_names['edge_attrs']
  93. def set_labels(self, node_labels=[], node_attrs=[], edge_labels=[], edge_attrs=[]):
  94. self.__node_labels = node_labels
  95. self.__node_attrs = node_attrs
  96. self.__edge_labels = edge_labels
  97. self.__edge_attrs = edge_attrs
  98. def set_labels_attrs(self, node_labels=None, node_attrs=None, edge_labels=None, edge_attrs=None):
  99. # @todo: remove labels which have only one possible values.
  100. if node_labels is None:
  101. self.__node_labels = self.__graphs[0].graph['node_labels']
  102. # # graphs are considered node unlabeled if all nodes have the same label.
  103. # infos.update({'node_labeled': is_nl if node_label_num > 1 else False})
  104. if node_attrs is None:
  105. self.__node_attrs = self.__graphs[0].graph['node_attrs']
  106. # for G in Gn:
  107. # for n in G.nodes(data=True):
  108. # if 'attributes' in n[1]:
  109. # return len(n[1]['attributes'])
  110. # return 0
  111. if edge_labels is None:
  112. self.__edge_labels = self.__graphs[0].graph['edge_labels']
  113. # # graphs are considered edge unlabeled if all edges have the same label.
  114. # infos.update({'edge_labeled': is_el if edge_label_num > 1 else False})
  115. if edge_attrs is None:
  116. self.__edge_attrs = self.__graphs[0].graph['edge_attrs']
  117. # for G in Gn:
  118. # if nx.number_of_edges(G) > 0:
  119. # for e in G.edges(data=True):
  120. # if 'attributes' in e[2]:
  121. # return len(e[2]['attributes'])
  122. # return 0
  123. def get_dataset_infos(self, keys=None):
  124. """Computes and returns the structure and property information of the graph dataset.
  125. Parameters
  126. ----------
  127. keys : list
  128. List of strings which indicate which informations will be returned. The
  129. possible choices includes:
  130. 'substructures': sub-structures graphs contains, including 'linear', 'non
  131. linear' and 'cyclic'.
  132. 'node_label_dim': whether vertices have symbolic labels.
  133. 'edge_label_dim': whether egdes have symbolic labels.
  134. 'directed': whether graphs in dataset are directed.
  135. 'dataset_size': number of graphs in dataset.
  136. 'total_node_num': total number of vertices of all graphs in dataset.
  137. 'ave_node_num': average number of vertices of graphs in dataset.
  138. 'min_node_num': minimum number of vertices of graphs in dataset.
  139. 'max_node_num': maximum number of vertices of graphs in dataset.
  140. 'total_edge_num': total number of edges of all graphs in dataset.
  141. 'ave_edge_num': average number of edges of graphs in dataset.
  142. 'min_edge_num': minimum number of edges of graphs in dataset.
  143. 'max_edge_num': maximum number of edges of graphs in dataset.
  144. 'ave_node_degree': average vertex degree of graphs in dataset.
  145. 'min_node_degree': minimum vertex degree of graphs in dataset.
  146. 'max_node_degree': maximum vertex degree of graphs in dataset.
  147. 'ave_fill_factor': average fill factor (number_of_edges /
  148. (number_of_nodes ** 2)) of graphs in dataset.
  149. 'min_fill_factor': minimum fill factor of graphs in dataset.
  150. 'max_fill_factor': maximum fill factor of graphs in dataset.
  151. 'node_label_nums': list of numbers of symbolic vertex labels of graphs in dataset.
  152. 'edge_label_nums': list number of symbolic edge labels of graphs in dataset.
  153. 'node_attr_dim': number of dimensions of non-symbolic vertex labels.
  154. Extracted from the 'attributes' attribute of graph nodes.
  155. 'edge_attr_dim': number of dimensions of non-symbolic edge labels.
  156. Extracted from the 'attributes' attribute of graph edges.
  157. 'class_number': number of classes. Only available for classification problems.
  158. All informations above will be returned if `keys` is not given.
  159. Return
  160. ------
  161. dict
  162. Information of the graph dataset keyed by `keys`.
  163. """
  164. infos = {}
  165. if keys == None:
  166. keys = [
  167. 'substructures',
  168. 'node_label_dim',
  169. 'edge_label_dim',
  170. 'directed',
  171. 'dataset_size',
  172. 'total_node_num',
  173. 'ave_node_num',
  174. 'min_node_num',
  175. 'max_node_num',
  176. 'total_edge_num',
  177. 'ave_edge_num',
  178. 'min_edge_num',
  179. 'max_edge_num',
  180. 'ave_node_degree',
  181. 'min_node_degree',
  182. 'max_node_degree',
  183. 'ave_fill_factor',
  184. 'min_fill_factor',
  185. 'max_fill_factor',
  186. 'node_label_nums',
  187. 'edge_label_nums',
  188. 'node_attr_dim',
  189. 'edge_attr_dim',
  190. 'class_number',
  191. ]
  192. # dataset size
  193. if 'dataset_size' in keys:
  194. if self.__dataset_size is None:
  195. self.__dataset_size = self.__get_dataset_size()
  196. infos['dataset_size'] = self.__dataset_size
  197. # graph node number
  198. if any(i in keys for i in ['total_node_num', 'ave_node_num', 'min_node_num', 'max_node_num']):
  199. all_node_nums = self.__get_all_node_nums()
  200. if 'total_node_num' in keys:
  201. if self.__total_node_num is None:
  202. self.__total_node_num = self.__get_total_node_num(all_node_nums)
  203. infos['total_node_num'] = self.__total_node_num
  204. if 'ave_node_num' in keys:
  205. if self.__ave_node_num is None:
  206. self.__ave_node_num = self.__get_ave_node_num(all_node_nums)
  207. infos['ave_node_num'] = self.__ave_node_num
  208. if 'min_node_num' in keys:
  209. if self.__min_node_num is None:
  210. self.__min_node_num = self.__get_min_node_num(all_node_nums)
  211. infos['min_node_num'] = self.__min_node_num
  212. if 'max_node_num' in keys:
  213. if self.__max_node_num is None:
  214. self.__max_node_num = self.__get_max_node_num(all_node_nums)
  215. infos['max_node_num'] = self.__max_node_num
  216. # graph edge number
  217. if any(i in keys for i in ['total_edge_num', 'ave_edge_num', 'min_edge_num', 'max_edge_num']):
  218. all_edge_nums = self.__get_all_edge_nums()
  219. if 'total_edge_num' in keys:
  220. if self.__total_edge_num is None:
  221. self.__total_edge_num = self.__get_total_edge_num(all_edge_nums)
  222. infos['total_edge_num'] = self.__total_edge_num
  223. if 'ave_edge_num' in keys:
  224. if self.__ave_edge_num is None:
  225. self.__ave_edge_num = self.__get_ave_edge_num(all_edge_nums)
  226. infos['ave_edge_num'] = self.__ave_edge_num
  227. if 'max_edge_num' in keys:
  228. if self.__max_edge_num is None:
  229. self.__max_edge_num = self.__get_max_edge_num(all_edge_nums)
  230. infos['max_edge_num'] = self.__max_edge_num
  231. if 'min_edge_num' in keys:
  232. if self.__min_edge_num is None:
  233. self.__min_edge_num = self.__get_min_edge_num(all_edge_nums)
  234. infos['min_edge_num'] = self.__min_edge_num
  235. # label number
  236. if 'node_label_dim' in keys:
  237. if self.__node_label_dim is None:
  238. self.__node_label_dim = self.__get_node_label_dim()
  239. infos['node_label_dim'] = self.__node_label_dim
  240. if 'node_label_nums' in keys:
  241. if self.__node_label_nums is None:
  242. self.__node_label_nums = {}
  243. for node_label in self.__node_labels:
  244. self.__node_label_nums[node_label] = self.get_node_label_num(node_label)
  245. infos['node_label_nums'] = self.__node_label_nums
  246. if 'edge_label_dim' in keys:
  247. if self.__edge_label_dim is None:
  248. self.__edge_label_dim = self.__get_edge_label_dim()
  249. infos['edge_label_dim'] = self.__edge_label_dim
  250. if 'edge_label_nums' in keys:
  251. if self.__edge_label_nums is None:
  252. self.__edge_label_nums = {}
  253. for edge_label in self.__edge_labels:
  254. self.__edge_label_nums[edge_label] = self.get_edge_label_num(edge_label)
  255. infos['edge_label_nums'] = self.__edge_label_nums
  256. if 'directed' in keys or 'substructures' in keys:
  257. if self.__directed is None:
  258. self.__directed = self.__is_directed()
  259. infos['directed'] = self.__directed
  260. # node degree
  261. if any(i in keys for i in ['ave_node_degree', 'max_node_degree', 'min_node_degree']):
  262. all_node_degrees = self.__get_all_node_degrees()
  263. if 'ave_node_degree' in keys:
  264. if self.__ave_node_degree is None:
  265. self.__ave_node_degree = self.__get_ave_node_degree(all_node_degrees)
  266. infos['ave_node_degree'] = self.__ave_node_degree
  267. if 'max_node_degree' in keys:
  268. if self.__max_node_degree is None:
  269. self.__max_node_degree = self.__get_max_node_degree(all_node_degrees)
  270. infos['max_node_degree'] = self.__max_node_degree
  271. if 'min_node_degree' in keys:
  272. if self.__min_node_degree is None:
  273. self.__min_node_degree = self.__get_min_node_degree(all_node_degrees)
  274. infos['min_node_degree'] = self.__min_node_degree
  275. # fill factor
  276. if any(i in keys for i in ['ave_fill_factor', 'max_fill_factor', 'min_fill_factor']):
  277. all_fill_factors = self.__get_all_fill_factors()
  278. if 'ave_fill_factor' in keys:
  279. if self.__ave_fill_factor is None:
  280. self.__ave_fill_factor = self.__get_ave_fill_factor(all_fill_factors)
  281. infos['ave_fill_factor'] = self.__ave_fill_factor
  282. if 'max_fill_factor' in keys:
  283. if self.__max_fill_factor is None:
  284. self.__max_fill_factor = self.__get_max_fill_factor(all_fill_factors)
  285. infos['max_fill_factor'] = self.__max_fill_factor
  286. if 'min_fill_factor' in keys:
  287. if self.__min_fill_factor is None:
  288. self.__min_fill_factor = self.__get_min_fill_factor(all_fill_factors)
  289. infos['min_fill_factor'] = self.__min_fill_factor
  290. if 'substructures' in keys:
  291. if self.__substructures is None:
  292. self.__substructures = self.__get_substructures()
  293. infos['substructures'] = self.__substructures
  294. if 'class_number' in keys:
  295. if self.__class_number is None:
  296. self.__class_number = self.__get_class_number()
  297. infos['class_number'] = self.__class_number
  298. if 'node_attr_dim' in keys:
  299. if self.__node_attr_dim is None:
  300. self.__node_attr_dim = self.__get_node_attr_dim()
  301. infos['node_attr_dim'] = self.__node_attr_dim
  302. if 'edge_attr_dim' in keys:
  303. if self.__edge_attr_dim is None:
  304. self.__edge_attr_dim = self.__get_edge_attr_dim()
  305. infos['edge_attr_dim'] = self.__edge_attr_dim
  306. return infos
  307. def print_graph_infos(self, infos):
  308. from collections import OrderedDict
  309. keys = list(infos.keys())
  310. print(OrderedDict(sorted(infos.items(), key=lambda i: keys.index(i[0]))))
  311. def remove_labels(self, node_labels=[], edge_labels=[], node_attrs=[], edge_attrs=[]):
  312. for g in self.__graphs:
  313. for nd in g.nodes():
  314. for nl in node_labels:
  315. del g.nodes[nd][nl]
  316. for na in node_attrs:
  317. del g.nodes[nd][na]
  318. for ed in g.edges():
  319. for el in edge_labels:
  320. del g.edges[ed][el]
  321. for ea in edge_attrs:
  322. del g.edges[ed][ea]
  323. if len(node_labels) > 0:
  324. self.__node_labels = [nl for nl in self.__node_labels if nl not in node_labels]
  325. if len(edge_labels) > 0:
  326. self.__edge_labels = [el for el in self.__edge_labels if el not in edge_labels]
  327. if len(node_attrs) > 0:
  328. self.__node_attrs = [na for na in self.__node_attrs if na not in node_attrs]
  329. if len(edge_attrs) > 0:
  330. self.__edge_attrs = [ea for ea in self.__edge_attrs if ea not in edge_attrs]
  331. def cut_graphs(self, range_):
  332. self.__graphs = [self.__graphs[i] for i in range_]
  333. if self.__targets is not None:
  334. self.__targets = [self.__targets[i] for i in range_]
  335. # @todo
  336. # self.set_labels_attrs()
  337. def trim_dataset(self, edge_required=False):
  338. if edge_required:
  339. trimed_pairs = [(idx, g) for idx, g in enumerate(self.__graphs) if (nx.number_of_nodes(g) != 0 and nx.number_of_edges(g) != 0)]
  340. else:
  341. trimed_pairs = [(idx, g) for idx, g in enumerate(self.__graphs) if nx.number_of_nodes(g) != 0]
  342. idx = [p[0] for p in trimed_pairs]
  343. self.__graphs = [p[1] for p in trimed_pairs]
  344. self.__targets = [self.__targets[i] for i in idx]
  345. # @todo
  346. # self.set_labels_attrs()
  347. def __get_dataset_size(self):
  348. return len(self.__graphs)
  349. def __get_all_node_nums(self):
  350. return [nx.number_of_nodes(G) for G in self.__graphs]
  351. def __get_total_node_nums(self, all_node_nums):
  352. return np.sum(all_node_nums)
  353. def __get_ave_node_num(self, all_node_nums):
  354. return np.mean(all_node_nums)
  355. def __get_min_node_num(self, all_node_nums):
  356. return np.amin(all_node_nums)
  357. def __get_max_node_num(self, all_node_nums):
  358. return np.amax(all_node_nums)
  359. def __get_all_edge_nums(self):
  360. return [nx.number_of_edges(G) for G in self.__graphs]
  361. def __get_total_edge_nums(self, all_edge_nums):
  362. return np.sum(all_edge_nums)
  363. def __get_ave_edge_num(self, all_edge_nums):
  364. return np.mean(all_edge_nums)
  365. def __get_min_edge_num(self, all_edge_nums):
  366. return np.amin(all_edge_nums)
  367. def __get_max_edge_num(self, all_edge_nums):
  368. return np.amax(all_edge_nums)
  369. def __get_node_label_dim(self):
  370. return len(self.__node_labels)
  371. def __get_node_label_num(self, node_label):
  372. nl = set()
  373. for G in self.__graphs:
  374. nl = nl | set(nx.get_node_attributes(G, node_label).values())
  375. return len(nl)
  376. def __get_edge_label_dim(self):
  377. return len(self.__edge_labels)
  378. def __get_edge_label_num(self, edge_label):
  379. el = set()
  380. for G in self.__graphs:
  381. el = el | set(nx.get_edge_attributes(G, edge_label).values())
  382. return len(el)
  383. def __is_directed(self):
  384. return nx.is_directed(self.__graphs[0])
  385. def __get_all_node_degrees(self):
  386. return [np.mean(list(dict(G.degree()).values())) for G in self.__graphs]
  387. def __get_ave_node_degree(self, all_node_degrees):
  388. return np.mean(all_node_degrees)
  389. def __get_max_node_degree(self, all_node_degrees):
  390. return np.amax(all_node_degrees)
  391. def __get_min_node_degree(self, all_node_degrees):
  392. return np.amin(all_node_degrees)
  393. def __get_all_fill_factors(self):
  394. """
  395. Get fill factor, the number of non-zero entries in the adjacency matrix.
  396. Returns
  397. -------
  398. list[float]
  399. List of fill factors for all graphs.
  400. """
  401. return [nx.number_of_edges(G) / (nx.number_of_nodes(G) ** 2) for G in self.__graphs]
  402. def __get_ave_fill_factor(self, all_fill_factors):
  403. return np.mean(all_fill_factors)
  404. def __get_max_fill_factor(self, all_fill_factors):
  405. return np.amax(all_fill_factors)
  406. def __get_min_fill_factor(self, all_fill_factors):
  407. return np.amin(all_fill_factors)
  408. def __get_substructures(self):
  409. subs = set()
  410. for G in self.__graphs:
  411. degrees = list(dict(G.degree()).values())
  412. if any(i == 2 for i in degrees):
  413. subs.add('linear')
  414. if np.amax(degrees) >= 3:
  415. subs.add('non linear')
  416. if 'linear' in subs and 'non linear' in subs:
  417. break
  418. if self.__directed:
  419. for G in self.__graphs:
  420. if len(list(nx.find_cycle(G))) > 0:
  421. subs.add('cyclic')
  422. break
  423. # else:
  424. # # @todo: this method does not work for big graph with large amount of edges like D&D, try a better way.
  425. # upper = np.amin([nx.number_of_edges(G) for G in Gn]) * 2 + 10
  426. # for G in Gn:
  427. # if (nx.number_of_edges(G) < upper):
  428. # cyc = list(nx.simple_cycles(G.to_directed()))
  429. # if any(len(i) > 2 for i in cyc):
  430. # subs.add('cyclic')
  431. # break
  432. # if 'cyclic' not in subs:
  433. # for G in Gn:
  434. # cyc = list(nx.simple_cycles(G.to_directed()))
  435. # if any(len(i) > 2 for i in cyc):
  436. # subs.add('cyclic')
  437. # break
  438. return subs
  439. def __get_class_num(self):
  440. return len(set(self.__targets))
  441. def __get_node_attr_dim(self):
  442. return len(self.__node_attrs)
  443. def __get_edge_attr_dim(self):
  444. return len(self.__edge_attrs)
  445. @property
  446. def graphs(self):
  447. return self.__graphs
  448. @property
  449. def targets(self):
  450. return self.__targets
  451. @property
  452. def node_labels(self):
  453. return self.__node_labels
  454. @property
  455. def edge_labels(self):
  456. return self.__edge_labels
  457. @property
  458. def node_attrs(self):
  459. return self.__node_attrs
  460. @property
  461. def edge_attrs(self):
  462. return self.__edge_attrs
  463. def split_dataset_by_target(dataset):
  464. from gklearn.preimage.utils import get_same_item_indices
  465. graphs = dataset.graphs
  466. targets = dataset.targets
  467. datasets = []
  468. idx_targets = get_same_item_indices(targets)
  469. for key, val in idx_targets.items():
  470. sub_graphs = [graphs[i] for i in val]
  471. sub_dataset = Dataset()
  472. sub_dataset.load_graphs(sub_graphs, [key] * len(val))
  473. sub_dataset.set_labels(node_labels=dataset.node_labels, node_attrs=dataset.node_attrs, edge_labels=dataset.edge_labels, edge_attrs=dataset.edge_attrs)
  474. datasets.append(sub_dataset)
  475. return datasets

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