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graph_files.py 29 kB

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  1. """ Utilities function to manage graph files
  2. """
  3. from os.path import dirname, splitext
  4. def load_dataset(filename, filename_targets=None, gformat=None, **kwargs):
  5. """Read graph data from filename and load them as NetworkX graphs.
  6. Parameters
  7. ----------
  8. filename : string
  9. The name of the file from where the dataset is read.
  10. filename_y : string
  11. The name of file of the targets corresponding to graphs.
  12. extra_params : dict
  13. Extra parameters only designated to '.mat' format.
  14. Return
  15. ------
  16. data : List of NetworkX graph.
  17. y : List
  18. Targets corresponding to graphs.
  19. Notes
  20. -----
  21. This function supports following graph dataset formats:
  22. 'ds': load data from .ds file. See comments of function loadFromDS for a example.
  23. 'cxl': load data from Graph eXchange Language file (.cxl file). See
  24. `here <http://www.gupro.de/GXL/Introduction/background.html>`__ for detail.
  25. 'sdf': load data from structured data file (.sdf file). See
  26. `here <http://www.nonlinear.com/progenesis/sdf-studio/v0.9/faq/sdf-file-format-guidance.aspx>`__
  27. for details.
  28. 'mat': Load graph data from a MATLAB (up to version 7.1) .mat file. See
  29. README in `downloadable file <http://mlcb.is.tuebingen.mpg.de/Mitarbeiter/Nino/WL/>`__
  30. for details.
  31. 'txt': Load graph data from a special .txt file. See
  32. `here <https://ls11-www.cs.tu-dortmund.de/staff/morris/graphkerneldatasets>`__
  33. for details. Note here filename is the name of either .txt file in
  34. the dataset directory.
  35. """
  36. extension = splitext(filename)[1][1:]
  37. if extension == "ds":
  38. data, y, label_names = load_from_ds(filename, filename_targets)
  39. elif extension == "cxl":
  40. dir_dataset = kwargs.get('dirname_dataset', None)
  41. data, y, label_names = load_from_xml(filename, dir_dataset)
  42. elif extension == 'xml':
  43. dir_dataset = kwargs.get('dirname_dataset', None)
  44. data, y, label_names = load_from_xml(filename, dir_dataset)
  45. elif extension == "mat":
  46. order = kwargs.get('order')
  47. data, y, label_names = load_mat(filename, order)
  48. elif extension == 'txt':
  49. data, y, label_names = load_tud(filename)
  50. return data, y, label_names
  51. def save_dataset(Gn, y, gformat='gxl', group=None, filename='gfile', **kwargs):
  52. """Save list of graphs.
  53. """
  54. import os
  55. dirname_ds = os.path.dirname(filename)
  56. if dirname_ds != '':
  57. dirname_ds += '/'
  58. if not os.path.exists(dirname_ds) :
  59. os.makedirs(dirname_ds)
  60. if 'graph_dir' in kwargs:
  61. graph_dir = kwargs['graph_dir'] + '/'
  62. if not os.path.exists(graph_dir):
  63. os.makedirs(graph_dir)
  64. del kwargs['graph_dir']
  65. else:
  66. graph_dir = dirname_ds
  67. if group == 'xml' and gformat == 'gxl':
  68. with open(filename + '.xml', 'w') as fgroup:
  69. fgroup.write("<?xml version=\"1.0\"?>")
  70. fgroup.write("\n<!DOCTYPE GraphCollection SYSTEM \"http://www.inf.unibz.it/~blumenthal/dtd/GraphCollection.dtd\">")
  71. fgroup.write("\n<GraphCollection>")
  72. for idx, g in enumerate(Gn):
  73. fname_tmp = "graph" + str(idx) + ".gxl"
  74. save_gxl(g, graph_dir + fname_tmp, **kwargs)
  75. fgroup.write("\n\t<graph file=\"" + fname_tmp + "\" class=\"" + str(y[idx]) + "\"/>")
  76. fgroup.write("\n</GraphCollection>")
  77. fgroup.close()
  78. def load_ct(filename): # @todo: this function is only tested on CTFile V2000; header not considered; only simple cases (atoms and bonds are considered.)
  79. """load data from a Chemical Table (.ct) file.
  80. Notes
  81. ------
  82. a typical example of data in .ct is like this:
  83. 3 2 <- number of nodes and edges
  84. 0.0000 0.0000 0.0000 C <- each line describes a node (x,y,z + label)
  85. 0.0000 0.0000 0.0000 C
  86. 0.0000 0.0000 0.0000 O
  87. 1 3 1 1 <- each line describes an edge : to, from, bond type, bond stereo
  88. 2 3 1 1
  89. Check `CTFile Formats file <https://www.google.com/url?sa=t&rct=j&q=&esrc=s&source=web&cd=10&ved=2ahUKEwivhaSdjsTlAhVhx4UKHczHA8gQFjAJegQIARAC&url=https%3A%2F%2Fwww.daylight.com%2Fmeetings%2Fmug05%2FKappler%2Fctfile.pdf&usg=AOvVaw1cDNrrmMClkFPqodlF2inS>`__
  90. for detailed format discription.
  91. """
  92. import networkx as nx
  93. from os.path import basename
  94. g = nx.Graph()
  95. with open(filename) as f:
  96. content = f.read().splitlines()
  97. g = nx.Graph(name=str(content[0]), filename=basename(filename)) # set name of the graph
  98. # read the counts line.
  99. tmp = content[1].split(' ')
  100. tmp = [x for x in tmp if x != '']
  101. nb_atoms = int(tmp[0].strip()) # number of atoms
  102. nb_bonds = int(tmp[1].strip()) # number of bonds
  103. count_line_tags = ['number_of_atoms', 'number_of_bonds', 'number_of_atom_lists', '', 'chiral_flag', 'number_of_stext_entries', '', '', '', '', 'number_of_properties', 'CT_version']
  104. i = 0
  105. while i < len(tmp):
  106. if count_line_tags[i] != '': # if not obsoleted
  107. g.graph[count_line_tags[i]] = tmp[i].strip()
  108. i += 1
  109. # read the atom block.
  110. atom_tags = ['x', 'y', 'z', 'atom_symbol', 'mass_difference', 'charge', 'atom_stereo_parity', 'hydrogen_count_plus_1', 'stereo_care_box', 'valence', 'h0_designator', '', '', 'atom_atom_mapping_number', 'inversion_retention_flag', 'exact_change_flag']
  111. for i in range(0, nb_atoms):
  112. tmp = content[i + 2].split(' ')
  113. tmp = [x for x in tmp if x != '']
  114. g.add_node(i)
  115. j = 0
  116. while j < len(tmp):
  117. if atom_tags[j] != '':
  118. g.nodes[i][atom_tags[j]] = tmp[j].strip()
  119. j += 1
  120. # read the bond block.
  121. bond_tags = ['first_atom_number', 'second_atom_number', 'bond_type', 'bond_stereo', '', 'bond_topology', 'reacting_center_status']
  122. for i in range(0, nb_bonds):
  123. tmp = content[i + g.number_of_nodes() + 2].split(' ')
  124. tmp = [x for x in tmp if x != '']
  125. n1, n2 = int(tmp[0].strip()) - 1, int(tmp[1].strip()) - 1
  126. g.add_edge(n1, n2)
  127. j = 2
  128. while j < len(tmp):
  129. if bond_tags[j] != '':
  130. g.edges[(n1, n2)][bond_tags[j]] = tmp[j].strip()
  131. j += 1
  132. # get label names.
  133. label_names = {'node_labels': [], 'edge_labels': [], 'node_attrs': [], 'edge_attrs': []}
  134. atom_symbolic = [0, 0, 0, 1, 1, 1, 1, 1, 1, 1, 1, None, None, 1, 1, 1]
  135. for nd in g.nodes():
  136. for key in g.nodes[nd]:
  137. if atom_symbolic[atom_tags.index(key)] == 1:
  138. label_names['node_labels'].append(key)
  139. else:
  140. label_names['node_attrs'].append(key)
  141. break
  142. bond_symbolic = [None, None, 1, 1, None, 1, 1]
  143. for ed in g.edges():
  144. for key in g.edges[ed]:
  145. if bond_symbolic[bond_tags.index(key)] == 1:
  146. label_names['edge_labels'].append(key)
  147. else:
  148. label_names['edge_attrs'].append(key)
  149. break
  150. return g, label_names
  151. def load_gxl(filename): # @todo: directed graphs.
  152. from os.path import basename
  153. import networkx as nx
  154. import xml.etree.ElementTree as ET
  155. tree = ET.parse(filename)
  156. root = tree.getroot()
  157. index = 0
  158. g = nx.Graph(filename=basename(filename), name=root[0].attrib['id'])
  159. dic = {} # used to retrieve incident nodes of edges
  160. for node in root.iter('node'):
  161. dic[node.attrib['id']] = index
  162. labels = {}
  163. for attr in node.iter('attr'):
  164. labels[attr.attrib['name']] = attr[0].text
  165. g.add_node(index, **labels)
  166. index += 1
  167. for edge in root.iter('edge'):
  168. labels = {}
  169. for attr in edge.iter('attr'):
  170. labels[attr.attrib['name']] = attr[0].text
  171. g.add_edge(dic[edge.attrib['from']], dic[edge.attrib['to']], **labels)
  172. # get label names.
  173. label_names = {'node_labels': [], 'edge_labels': [], 'node_attrs': [], 'edge_attrs': []}
  174. for node in root.iter('node'):
  175. for attr in node.iter('attr'):
  176. if attr[0].tag == 'int': # @todo: this maybe wrong, and slow.
  177. label_names['node_labels'].append(attr.attrib['name'])
  178. else:
  179. label_names['node_attrs'].append(attr.attrib['name'])
  180. break
  181. for edge in root.iter('edge'):
  182. for attr in edge.iter('attr'):
  183. if attr[0].tag == 'int': # @todo: this maybe wrong, and slow.
  184. label_names['edge_labels'].append(attr.attrib['name'])
  185. else:
  186. label_names['edge_attrs'].append(attr.attrib['name'])
  187. break
  188. return g, label_names
  189. def save_gxl(graph, filename, method='default', node_labels=[], edge_labels=[], node_attrs=[], edge_attrs=[]):
  190. if method == 'default':
  191. gxl_file = open(filename, 'w')
  192. gxl_file.write("<?xml version=\"1.0\" encoding=\"UTF-8\"?>\n")
  193. gxl_file.write("<!DOCTYPE gxl SYSTEM \"http://www.gupro.de/GXL/gxl-1.0.dtd\">\n")
  194. gxl_file.write("<gxl xmlns:xlink=\"http://www.w3.org/1999/xlink\">\n")
  195. if 'name' in graph.graph:
  196. name = str(graph.graph['name'])
  197. else:
  198. name = 'dummy'
  199. gxl_file.write("<graph id=\"" + name + "\" edgeids=\"false\" edgemode=\"undirected\">\n")
  200. for v, attrs in graph.nodes(data=True):
  201. gxl_file.write("<node id=\"_" + str(v) + "\">")
  202. for l_name in node_labels:
  203. gxl_file.write("<attr name=\"" + l_name + "\"><int>" +
  204. str(attrs[l_name]) + "</int></attr>")
  205. for a_name in node_attrs:
  206. gxl_file.write("<attr name=\"" + a_name + "\"><float>" +
  207. str(attrs[a_name]) + "</float></attr>")
  208. gxl_file.write("</node>\n")
  209. for v1, v2, attrs in graph.edges(data=True):
  210. gxl_file.write("<edge from=\"_" + str(v1) + "\" to=\"_" + str(v2) + "\">")
  211. for l_name in edge_labels:
  212. gxl_file.write("<attr name=\"" + l_name + "\"><int>" +
  213. str(attrs[l_name]) + "</int></attr>")
  214. for a_name in edge_attrs:
  215. gxl_file.write("<attr name=\"" + a_name + "\"><float>" +
  216. str(attrs[a_name]) + "</float></attr>")
  217. gxl_file.write("</edge>\n")
  218. gxl_file.write("</graph>\n")
  219. gxl_file.write("</gxl>")
  220. gxl_file.close()
  221. elif method == 'benoit':
  222. import xml.etree.ElementTree as ET
  223. root_node = ET.Element('gxl')
  224. attr = dict()
  225. attr['id'] = str(graph.graph['name'])
  226. attr['edgeids'] = 'true'
  227. attr['edgemode'] = 'undirected'
  228. graph_node = ET.SubElement(root_node, 'graph', attrib=attr)
  229. for v in graph:
  230. current_node = ET.SubElement(graph_node, 'node', attrib={'id': str(v)})
  231. for attr in graph.nodes[v].keys():
  232. cur_attr = ET.SubElement(
  233. current_node, 'attr', attrib={'name': attr})
  234. cur_value = ET.SubElement(cur_attr,
  235. graph.nodes[v][attr].__class__.__name__)
  236. cur_value.text = graph.nodes[v][attr]
  237. for v1 in graph:
  238. for v2 in graph[v1]:
  239. if (v1 < v2): # Non oriented graphs
  240. cur_edge = ET.SubElement(
  241. graph_node,
  242. 'edge',
  243. attrib={
  244. 'from': str(v1),
  245. 'to': str(v2)
  246. })
  247. for attr in graph[v1][v2].keys():
  248. cur_attr = ET.SubElement(
  249. cur_edge, 'attr', attrib={'name': attr})
  250. cur_value = ET.SubElement(
  251. cur_attr, graph[v1][v2][attr].__class__.__name__)
  252. cur_value.text = str(graph[v1][v2][attr])
  253. tree = ET.ElementTree(root_node)
  254. tree.write(filename)
  255. elif method == 'gedlib':
  256. # reference: https://github.com/dbblumenthal/gedlib/blob/master/data/generate_molecules.py#L22
  257. # pass
  258. gxl_file = open(filename, 'w')
  259. gxl_file.write("<?xml version=\"1.0\" encoding=\"UTF-8\"?>\n")
  260. gxl_file.write("<!DOCTYPE gxl SYSTEM \"http://www.gupro.de/GXL/gxl-1.0.dtd\">\n")
  261. gxl_file.write("<gxl xmlns:xlink=\"http://www.w3.org/1999/xlink\">\n")
  262. gxl_file.write("<graph id=\"" + str(graph.graph['name']) + "\" edgeids=\"true\" edgemode=\"undirected\">\n")
  263. for v, attrs in graph.nodes(data=True):
  264. gxl_file.write("<node id=\"_" + str(v) + "\">")
  265. gxl_file.write("<attr name=\"" + "chem" + "\"><int>" + str(attrs['chem']) + "</int></attr>")
  266. gxl_file.write("</node>\n")
  267. for v1, v2, attrs in graph.edges(data=True):
  268. gxl_file.write("<edge from=\"_" + str(v1) + "\" to=\"_" + str(v2) + "\">")
  269. gxl_file.write("<attr name=\"valence\"><int>" + str(attrs['valence']) + "</int></attr>")
  270. # gxl_file.write("<attr name=\"valence\"><int>" + "1" + "</int></attr>")
  271. gxl_file.write("</edge>\n")
  272. gxl_file.write("</graph>\n")
  273. gxl_file.write("</gxl>")
  274. gxl_file.close()
  275. elif method == 'gedlib-letter':
  276. # reference: https://github.com/dbblumenthal/gedlib/blob/master/data/generate_molecules.py#L22
  277. # and https://github.com/dbblumenthal/gedlib/blob/master/data/datasets/Letter/HIGH/AP1_0000.gxl
  278. gxl_file = open(filename, 'w')
  279. gxl_file.write("<?xml version=\"1.0\" encoding=\"UTF-8\"?>\n")
  280. gxl_file.write("<!DOCTYPE gxl SYSTEM \"http://www.gupro.de/GXL/gxl-1.0.dtd\">\n")
  281. gxl_file.write("<gxl xmlns:xlink=\"http://www.w3.org/1999/xlink\">\n")
  282. gxl_file.write("<graph id=\"" + str(graph.graph['name']) + "\" edgeids=\"false\" edgemode=\"undirected\">\n")
  283. for v, attrs in graph.nodes(data=True):
  284. gxl_file.write("<node id=\"_" + str(v) + "\">")
  285. gxl_file.write("<attr name=\"x\"><float>" + str(attrs['attributes'][0]) + "</float></attr>")
  286. gxl_file.write("<attr name=\"y\"><float>" + str(attrs['attributes'][1]) + "</float></attr>")
  287. gxl_file.write("</node>\n")
  288. for v1, v2, attrs in graph.edges(data=True):
  289. gxl_file.write("<edge from=\"_" + str(v1) + "\" to=\"_" + str(v2) + "\"/>\n")
  290. gxl_file.write("</graph>\n")
  291. gxl_file.write("</gxl>")
  292. gxl_file.close()
  293. # def loadSDF(filename):
  294. # """load data from structured data file (.sdf file).
  295. # Notes
  296. # ------
  297. # A SDF file contains a group of molecules, represented in the similar way as in MOL format.
  298. # Check `here <http://www.nonlinear.com/progenesis/sdf-studio/v0.9/faq/sdf-file-format-guidance.aspx>`__ for detailed structure.
  299. # """
  300. # import networkx as nx
  301. # from os.path import basename
  302. # from tqdm import tqdm
  303. # import sys
  304. # data = []
  305. # with open(filename) as f:
  306. # content = f.read().splitlines()
  307. # index = 0
  308. # pbar = tqdm(total=len(content) + 1, desc='load SDF', file=sys.stdout)
  309. # while index < len(content):
  310. # index_old = index
  311. # g = nx.Graph(name=content[index].strip()) # set name of the graph
  312. # tmp = content[index + 3]
  313. # nb_nodes = int(tmp[:3]) # number of the nodes
  314. # nb_edges = int(tmp[3:6]) # number of the edges
  315. # for i in range(0, nb_nodes):
  316. # tmp = content[i + index + 4]
  317. # g.add_node(i, atom=tmp[31:34].strip())
  318. # for i in range(0, nb_edges):
  319. # tmp = content[i + index + g.number_of_nodes() + 4]
  320. # tmp = [tmp[i:i + 3] for i in range(0, len(tmp), 3)]
  321. # g.add_edge(
  322. # int(tmp[0]) - 1, int(tmp[1]) - 1, bond_type=tmp[2].strip())
  323. # data.append(g)
  324. # index += 4 + g.number_of_nodes() + g.number_of_edges()
  325. # while content[index].strip() != '$$$$': # seperator
  326. # index += 1
  327. # index += 1
  328. # pbar.update(index - index_old)
  329. # pbar.update(1)
  330. # pbar.close()
  331. # return data
  332. def load_mat(filename, order): # @todo: need to be updated (auto order) or deprecated.
  333. """Load graph data from a MATLAB (up to version 7.1) .mat file.
  334. Notes
  335. ------
  336. A MAT file contains a struct array containing graphs, and a column vector lx containing a class label for each graph.
  337. Check README in `downloadable file <http://mlcb.is.tuebingen.mpg.de/Mitarbeiter/Nino/WL/>`__ for detailed structure.
  338. """
  339. from scipy.io import loadmat
  340. import numpy as np
  341. import networkx as nx
  342. data = []
  343. content = loadmat(filename)
  344. # print(content)
  345. # print('----')
  346. for key, value in content.items():
  347. if key[0] == 'l': # class label
  348. y = np.transpose(value)[0].tolist()
  349. # print(y)
  350. elif key[0] != '_':
  351. # print(value[0][0][0])
  352. # print()
  353. # print(value[0][0][1])
  354. # print()
  355. # print(value[0][0][2])
  356. # print()
  357. # if len(value[0][0]) > 3:
  358. # print(value[0][0][3])
  359. # print('----')
  360. # if adjacency matrix is not compressed / edge label exists
  361. if order[1] == 0:
  362. for i, item in enumerate(value[0]):
  363. # print(item)
  364. # print('------')
  365. g = nx.Graph(name=i) # set name of the graph
  366. nl = np.transpose(item[order[3]][0][0][0]) # node label
  367. # print(item[order[3]])
  368. # print()
  369. for index, label in enumerate(nl[0]):
  370. g.add_node(index, label_1=str(label))
  371. el = item[order[4]][0][0][0] # edge label
  372. for edge in el:
  373. g.add_edge(edge[0] - 1, edge[1] - 1, label_1=str(edge[2]))
  374. data.append(g)
  375. else:
  376. # from scipy.sparse import csc_matrix
  377. for i, item in enumerate(value[0]):
  378. # print(item)
  379. # print('------')
  380. g = nx.Graph(name=i) # set name of the graph
  381. nl = np.transpose(item[order[3]][0][0][0]) # node label
  382. # print(nl)
  383. # print()
  384. for index, label in enumerate(nl[0]):
  385. g.add_node(index, label_1=str(label))
  386. sam = item[order[0]] # sparse adjacency matrix
  387. index_no0 = sam.nonzero()
  388. for col, row in zip(index_no0[0], index_no0[1]):
  389. # print(col)
  390. # print(row)
  391. g.add_edge(col, row)
  392. data.append(g)
  393. # print(g.edges(data=True))
  394. label_names = {'node_labels': ['label_1'], 'edge_labels': [], 'node_attrs': [], 'edge_attrs': []}
  395. if order[1] == 0:
  396. label_names['edge_labels'].append('label_1')
  397. return data, y, label_names
  398. def load_tud(filename):
  399. """Load graph data from TUD dataset files.
  400. Notes
  401. ------
  402. The graph data is loaded from separate files.
  403. Check README in `downloadable file <http://tiny.cc/PK_MLJ_data>`__, 2018 for detailed structure.
  404. """
  405. import networkx as nx
  406. from os import listdir
  407. from os.path import dirname, basename
  408. def get_infos_from_readme(frm): # @todo: add README (cuniform), maybe node/edge label maps.
  409. """Get information from DS_label_readme.txt file.
  410. """
  411. def get_label_names_from_line(line):
  412. """Get names of labels/attributes from a line.
  413. """
  414. str_names = line.split('[')[1].split(']')[0]
  415. names = str_names.split(',')
  416. names = [attr.strip() for attr in names]
  417. return names
  418. def get_class_label_map(label_map_strings):
  419. label_map = {}
  420. for string in label_map_strings:
  421. integer, label = string.split('\t')
  422. label_map[int(integer.strip())] = label.strip()
  423. return label_map
  424. label_names = {'node_labels': [], 'node_attrs': [],
  425. 'edge_labels': [], 'edge_attrs': []}
  426. class_label_map = None
  427. class_label_map_strings = []
  428. with open(frm) as rm:
  429. content_rm = rm.read().splitlines()
  430. i = 0
  431. while i < len(content_rm):
  432. line = content_rm[i].strip()
  433. # get node/edge labels and attributes.
  434. if line.startswith('Node labels:'):
  435. label_names['node_labels'] = get_label_names_from_line(line)
  436. elif line.startswith('Node attributes:'):
  437. label_names['node_attrs'] = get_label_names_from_line(line)
  438. elif line.startswith('Edge labels:'):
  439. label_names['edge_labels'] = get_label_names_from_line(line)
  440. elif line.startswith('Edge attributes:'):
  441. label_names['edge_attrs'] = get_label_names_from_line(line)
  442. # get class label map.
  443. elif line.startswith('Class labels were converted to integer values using this map:'):
  444. i += 2
  445. line = content_rm[i].strip()
  446. while line != '' and i < len(content_rm):
  447. class_label_map_strings.append(line)
  448. i += 1
  449. line = content_rm[i].strip()
  450. class_label_map = get_class_label_map(class_label_map_strings)
  451. i += 1
  452. return label_names, class_label_map
  453. # get dataset name.
  454. dirname_dataset = dirname(filename)
  455. filename = basename(filename)
  456. fn_split = filename.split('_A')
  457. ds_name = fn_split[0].strip()
  458. # load data file names
  459. for name in listdir(dirname_dataset):
  460. if ds_name + '_A' in name:
  461. fam = dirname_dataset + '/' + name
  462. elif ds_name + '_graph_indicator' in name:
  463. fgi = dirname_dataset + '/' + name
  464. elif ds_name + '_graph_labels' in name:
  465. fgl = dirname_dataset + '/' + name
  466. elif ds_name + '_node_labels' in name:
  467. fnl = dirname_dataset + '/' + name
  468. elif ds_name + '_edge_labels' in name:
  469. fel = dirname_dataset + '/' + name
  470. elif ds_name + '_edge_attributes' in name:
  471. fea = dirname_dataset + '/' + name
  472. elif ds_name + '_node_attributes' in name:
  473. fna = dirname_dataset + '/' + name
  474. elif ds_name + '_graph_attributes' in name:
  475. fga = dirname_dataset + '/' + name
  476. elif ds_name + '_label_readme' in name:
  477. frm = dirname_dataset + '/' + name
  478. # this is supposed to be the node attrs, make sure to put this as the last 'elif'
  479. elif ds_name + '_attributes' in name:
  480. fna = dirname_dataset + '/' + name
  481. # get labels and attributes names.
  482. if 'frm' in locals():
  483. label_names, class_label_map = get_infos_from_readme(frm)
  484. else:
  485. label_names = {'node_labels': [], 'node_attrs': [],
  486. 'edge_labels': [], 'edge_attrs': []}
  487. class_label_map = None
  488. with open(fgi) as gi:
  489. content_gi = gi.read().splitlines() # graph indicator
  490. with open(fam) as am:
  491. content_am = am.read().splitlines() # adjacency matrix
  492. # load targets.
  493. if 'fgl' in locals():
  494. with open(fgl) as gl:
  495. content_targets = gl.read().splitlines() # targets (classification)
  496. targets = [float(i) for i in content_targets]
  497. elif 'fga' in locals():
  498. with open(fga) as ga:
  499. content_targets = ga.read().splitlines() # targets (regression)
  500. targets = [int(i) for i in content_targets]
  501. else:
  502. raise Exception('Can not find targets file. Please make sure there is a "', ds_name, '_graph_labels.txt" or "', ds_name, '_graph_attributes.txt"', 'file in your dataset folder.')
  503. if class_label_map is not None:
  504. targets = [class_label_map[t] for t in targets]
  505. # create graphs and add nodes
  506. data = [nx.Graph(name=str(i)) for i in range(0, len(content_targets))]
  507. if 'fnl' in locals():
  508. with open(fnl) as nl:
  509. content_nl = nl.read().splitlines() # node labels
  510. for idx, line in enumerate(content_gi):
  511. # transfer to int first in case of unexpected blanks
  512. data[int(line) - 1].add_node(idx)
  513. labels = [l.strip() for l in content_nl[idx].split(',')]
  514. if label_names['node_labels'] == []: # @todo: need fix bug.
  515. for i, label in enumerate(labels):
  516. l_name = 'label_' + str(i)
  517. data[int(line) - 1].nodes[idx][l_name] = label
  518. label_names['node_labels'].append(l_name)
  519. else:
  520. for i, l_name in enumerate(label_names['node_labels']):
  521. data[int(line) - 1].nodes[idx][l_name] = labels[i]
  522. else:
  523. for i, line in enumerate(content_gi):
  524. data[int(line) - 1].add_node(i)
  525. # add edges
  526. for line in content_am:
  527. tmp = line.split(',')
  528. n1 = int(tmp[0]) - 1
  529. n2 = int(tmp[1]) - 1
  530. # ignore edge weight here.
  531. g = int(content_gi[n1]) - 1
  532. data[g].add_edge(n1, n2)
  533. # add edge labels
  534. if 'fel' in locals():
  535. with open(fel) as el:
  536. content_el = el.read().splitlines()
  537. for idx, line in enumerate(content_el):
  538. labels = [l.strip() for l in line.split(',')]
  539. n = [int(i) - 1 for i in content_am[idx].split(',')]
  540. g = int(content_gi[n[0]]) - 1
  541. if label_names['edge_labels'] == []:
  542. for i, label in enumerate(labels):
  543. l_name = 'label_' + str(i)
  544. data[g].edges[n[0], n[1]][l_name] = label
  545. label_names['edge_labels'].append(l_name)
  546. else:
  547. for i, l_name in enumerate(label_names['edge_labels']):
  548. data[g].edges[n[0], n[1]][l_name] = labels[i]
  549. # add node attributes
  550. if 'fna' in locals():
  551. with open(fna) as na:
  552. content_na = na.read().splitlines()
  553. for idx, line in enumerate(content_na):
  554. attrs = [a.strip() for a in line.split(',')]
  555. g = int(content_gi[idx]) - 1
  556. if label_names['node_attrs'] == []:
  557. for i, attr in enumerate(attrs):
  558. a_name = 'attr_' + str(i)
  559. data[g].nodes[idx][a_name] = attr
  560. label_names['node_attrs'].append(a_name)
  561. else:
  562. for i, a_name in enumerate(label_names['node_attrs']):
  563. data[g].nodes[idx][a_name] = attrs[i]
  564. # add edge attributes
  565. if 'fea' in locals():
  566. with open(fea) as ea:
  567. content_ea = ea.read().splitlines()
  568. for idx, line in enumerate(content_ea):
  569. attrs = [a.strip() for a in line.split(',')]
  570. n = [int(i) - 1 for i in content_am[idx].split(',')]
  571. g = int(content_gi[n[0]]) - 1
  572. if label_names['edge_attrs'] == []:
  573. for i, attr in enumerate(attrs):
  574. a_name = 'attr_' + str(i)
  575. data[g].edges[n[0], n[1]][a_name] = attr
  576. label_names['edge_attrs'].append(a_name)
  577. else:
  578. for i, a_name in enumerate(label_names['edge_attrs']):
  579. data[g].edges[n[0], n[1]][a_name] = attrs[i]
  580. return data, targets, label_names
  581. def load_from_ds(filename, filename_targets):
  582. """Load data from .ds file.
  583. Possible graph formats include:
  584. '.ct': see function load_ct for detail.
  585. '.gxl': see dunction load_gxl for detail.
  586. Note these graph formats are checked automatically by the extensions of
  587. graph files.
  588. """
  589. dirname_dataset = dirname(filename)
  590. data = []
  591. y = []
  592. label_names = {'node_labels': [], 'edge_labels': [], 'node_attrs': [], 'edge_attrs': []}
  593. with open(filename) as fn:
  594. content = fn.read().splitlines()
  595. extension = splitext(content[0].split(' ')[0])[1][1:]
  596. if extension == 'ct':
  597. load_file_fun = load_ct
  598. elif extension == 'gxl' or extension == 'sdf': # @todo: .sdf not tested yet.
  599. load_file_fun = load_gxl
  600. if filename_targets is None or filename_targets == '':
  601. for i in range(0, len(content)):
  602. tmp = content[i].split(' ')
  603. # remove the '#'s in file names
  604. g, l_names = load_file_fun(dirname_dataset + '/' + tmp[0].replace('#', '', 1))
  605. data.append(g)
  606. _append_label_names(label_names, l_names)
  607. y.append(float(tmp[1]))
  608. else: # targets in a seperate file
  609. for i in range(0, len(content)):
  610. tmp = content[i]
  611. # remove the '#'s in file names
  612. g, l_names = load_file_fun(dirname_dataset + '/' + tmp.replace('#', '', 1))
  613. data.append(g)
  614. _append_label_names(label_names, l_names)
  615. with open(filename_targets) as fnt:
  616. content_y = fnt.read().splitlines()
  617. # assume entries in filename and filename_targets have the same order.
  618. for item in content_y:
  619. tmp = item.split(' ')
  620. # assume the 3rd entry in a line is y (for Alkane dataset)
  621. y.append(float(tmp[2]))
  622. return data, y, label_names
  623. # def load_from_cxl(filename):
  624. # import xml.etree.ElementTree as ET
  625. #
  626. # dirname_dataset = dirname(filename)
  627. # tree = ET.parse(filename)
  628. # root = tree.getroot()
  629. # data = []
  630. # y = []
  631. # for graph in root.iter('graph'):
  632. # mol_filename = graph.attrib['file']
  633. # mol_class = graph.attrib['class']
  634. # data.append(load_gxl(dirname_dataset + '/' + mol_filename))
  635. # y.append(mol_class)
  636. def load_from_xml(filename, dir_dataset=None):
  637. import xml.etree.ElementTree as ET
  638. if dir_dataset is not None:
  639. dir_dataset = dir_dataset
  640. else:
  641. dir_dataset = dirname(filename)
  642. tree = ET.parse(filename)
  643. root = tree.getroot()
  644. data = []
  645. y = []
  646. label_names = {'node_labels': [], 'edge_labels': [], 'node_attrs': [], 'edge_attrs': []}
  647. for graph in root.iter('graph'):
  648. mol_filename = graph.attrib['file']
  649. mol_class = graph.attrib['class']
  650. g, l_names = load_gxl(dir_dataset + '/' + mol_filename)
  651. data.append(g)
  652. _append_label_names(label_names, l_names)
  653. y.append(mol_class)
  654. return data, y, label_names
  655. def _append_label_names(label_names, new_names):
  656. for key, val in label_names.items():
  657. label_names[key] += [name for name in new_names[key] if name not in val]
  658. if __name__ == '__main__':
  659. # ### Load dataset from .ds file.
  660. # # .ct files.
  661. # ds = {'name': 'Alkane', 'dataset': '../../datasets/Alkane/dataset.ds',
  662. # 'dataset_y': '../../datasets/Alkane/dataset_boiling_point_names.txt'}
  663. # Gn, y = loadDataset(ds['dataset'], filename_y=ds['dataset_y'])
  664. # ds_file = '../../datasets/Acyclic/dataset_bps.ds' # node symb
  665. # Gn, targets, label_names = load_dataset(ds_file)
  666. # ds_file = '../../datasets/MAO/dataset.ds' # node/edge symb
  667. # Gn, targets, label_names = load_dataset(ds_file)
  668. ## ds = {'name': 'PAH', 'dataset': '../../datasets/PAH/dataset.ds'} # unlabeled
  669. ## Gn, y = loadDataset(ds['dataset'])
  670. # print(Gn[1].graph)
  671. # print(Gn[1].nodes(data=True))
  672. # print(Gn[1].edges(data=True))
  673. # print(targets[1])
  674. # # .gxl file.
  675. # ds_file = '../../datasets/monoterpenoides/dataset_10+.ds' # node/edge symb
  676. # Gn, y, label_names = load_dataset(ds_file)
  677. # print(Gn[1].graph)
  678. # print(Gn[1].nodes(data=True))
  679. # print(Gn[1].edges(data=True))
  680. # print(y[1])
  681. # .mat file.
  682. ds_file = '../../datasets/MUTAG_mat/MUTAG.mat'
  683. order = [0, 0, 3, 1, 2]
  684. Gn, targets, label_names = load_dataset(ds_file, order=order)
  685. print(Gn[1].graph)
  686. print(Gn[1].nodes(data=True))
  687. print(Gn[1].edges(data=True))
  688. print(targets[1])
  689. # ### Convert graph from one format to another.
  690. # # .gxl file.
  691. # import networkx as nx
  692. # ds = {'name': 'monoterpenoides',
  693. # 'dataset': '../../datasets/monoterpenoides/dataset_10+.ds'} # node/edge symb
  694. # Gn, y = loadDataset(ds['dataset'])
  695. # y = [int(i) for i in y]
  696. # print(Gn[1].nodes(data=True))
  697. # print(Gn[1].edges(data=True))
  698. # print(y[1])
  699. # # Convert a graph to the proper NetworkX format that can be recognized by library gedlib.
  700. # Gn_new = []
  701. # for G in Gn:
  702. # G_new = nx.Graph()
  703. # for nd, attrs in G.nodes(data=True):
  704. # G_new.add_node(str(nd), chem=attrs['atom'])
  705. # for nd1, nd2, attrs in G.edges(data=True):
  706. # G_new.add_edge(str(nd1), str(nd2), valence=attrs['bond_type'])
  707. ## G_new.add_edge(str(nd1), str(nd2))
  708. # Gn_new.append(G_new)
  709. # print(Gn_new[1].nodes(data=True))
  710. # print(Gn_new[1].edges(data=True))
  711. # print(Gn_new[1])
  712. # filename = '/media/ljia/DATA/research-repo/codes/others/gedlib/tests_linlin/generated_datsets/monoterpenoides/gxl/monoterpenoides'
  713. # xparams = {'method': 'gedlib'}
  714. # saveDataset(Gn, y, gformat='gxl', group='xml', filename=filename, xparams=xparams)
  715. # save dataset.
  716. # ds = {'name': 'MUTAG', 'dataset': '../../datasets/MUTAG/MUTAG.mat',
  717. # 'extra_params': {'am_sp_al_nl_el': [0, 0, 3, 1, 2]}} # node/edge symb
  718. # Gn, y = loadDataset(ds['dataset'], extra_params=ds['extra_params'])
  719. # saveDataset(Gn, y, group='xml', filename='temp/temp')
  720. # test - new way to add labels and attributes.
  721. # dataset = '../../datasets/SYNTHETICnew/SYNTHETICnew_A.txt'
  722. # filename = '../../datasets/Fingerprint/Fingerprint_A.txt'
  723. # dataset = '../../datasets/Letter-med/Letter-med_A.txt'
  724. # dataset = '../../datasets/AIDS/AIDS_A.txt'
  725. # dataset = '../../datasets/ENZYMES_txt/ENZYMES_A_sparse.txt'
  726. # Gn, targets, label_names = load_dataset(filename)
  727. pass

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