You can not select more than 25 topics Topics must start with a chinese character,a letter or number, can include dashes ('-') and can be up to 35 characters long.

run_spkernel.py 4.4 kB

1234567891011121314151617181920212223242526272829303132333435363738394041424344454647484950515253545556575859606162636465666768697071727374757677
  1. import functools
  2. from libs import *
  3. import multiprocessing
  4. from sklearn.metrics.pairwise import rbf_kernel
  5. from pygraph.kernels.spKernel import spkernel
  6. from pygraph.utils.kernels import deltakernel, kernelproduct
  7. #from pygraph.utils.model_selection_precomputed import trial_do
  8. dslist = [
  9. {'name': 'Acyclic', 'dataset': '../datasets/acyclic/dataset_bps.ds',
  10. 'task': 'regression'}, # node symb
  11. {'name': 'Alkane', 'dataset': '../datasets/Alkane/dataset.ds', 'task': 'regression',
  12. 'dataset_y': '../datasets/Alkane/dataset_boiling_point_names.txt', }, # contains single node graph, node symb
  13. {'name': 'MAO', 'dataset': '../datasets/MAO/dataset.ds', }, # node/edge symb
  14. {'name': 'PAH', 'dataset': '../datasets/PAH/dataset.ds', }, # unlabeled
  15. {'name': 'MUTAG', 'dataset': '../datasets/MUTAG/MUTAG.mat',
  16. 'extra_params': {'am_sp_al_nl_el': [0, 0, 3, 1, 2]}}, # node/edge symb
  17. {'name': 'Letter-med', 'dataset': '../datasets/Letter-med/Letter-med_A.txt'},
  18. # node symb/nsymb
  19. {'name': 'ENZYMES', 'dataset': '../datasets/ENZYMES_txt/ENZYMES_A_sparse.txt'},
  20. # node/edge symb
  21. # {'name': 'Mutagenicity', 'dataset': '../datasets/Mutagenicity/Mutagenicity_A.txt'},
  22. # {'name': 'D&D', 'dataset': '../datasets/D&D/DD.mat',
  23. # 'extra_params': {'am_sp_al_nl_el': [0, 1, 2, 1, -1]}}, # node symb
  24. # {'name': 'COIL-DEL', 'dataset': '../datasets/COIL-DEL/COIL-DEL_A.txt'}, # edge symb, node nsymb
  25. # # # {'name': 'BZR', 'dataset': '../datasets/BZR_txt/BZR_A_sparse.txt'}, # node symb/nsymb
  26. # # # {'name': 'COX2', 'dataset': '../datasets/COX2_txt/COX2_A_sparse.txt'}, # node symb/nsymb
  27. # {'name': 'Fingerprint', 'dataset': '../datasets/Fingerprint/Fingerprint_A.txt'},
  28. #
  29. # # {'name': 'DHFR', 'dataset': '../datasets/DHFR_txt/DHFR_A_sparse.txt'}, # node symb/nsymb
  30. # # {'name': 'SYNTHETIC', 'dataset': '../datasets/SYNTHETIC_txt/SYNTHETIC_A_sparse.txt'}, # node symb/nsymb
  31. # # {'name': 'MSRC9', 'dataset': '../datasets/MSRC_9_txt/MSRC_9_A.txt'}, # node symb
  32. # # {'name': 'MSRC21', 'dataset': '../datasets/MSRC_21_txt/MSRC_21_A.txt'}, # node symb
  33. # # {'name': 'FIRSTMM_DB', 'dataset': '../datasets/FIRSTMM_DB/FIRSTMM_DB_A.txt'}, # node symb/nsymb ,edge nsymb
  34. # # {'name': 'PROTEINS', 'dataset': '../datasets/PROTEINS_txt/PROTEINS_A_sparse.txt'}, # node symb/nsymb
  35. # # {'name': 'PROTEINS_full', 'dataset': '../datasets/PROTEINS_full_txt/PROTEINS_full_A_sparse.txt'}, # node symb/nsymb
  36. # # {'name': 'AIDS', 'dataset': '../datasets/AIDS/AIDS_A.txt'}, # node symb/nsymb, edge symb
  37. # {'name': 'NCI1', 'dataset': '../datasets/NCI1/NCI1.mat',
  38. # 'extra_params': {'am_sp_al_nl_el': [1, 1, 2, 0, -1]}}, # node symb
  39. # {'name': 'NCI109', 'dataset': '../datasets/NCI109/NCI109.mat',
  40. # 'extra_params': {'am_sp_al_nl_el': [1, 1, 2, 0, -1]}}, # node symb
  41. # {'name': 'NCI-HIV', 'dataset': '../datasets/NCI-HIV/AIDO99SD.sdf',
  42. # 'dataset_y': '../datasets/NCI-HIV/aids_conc_may04.txt',}, # node/edge symb
  43. # # not working below
  44. # {'name': 'PTC_FM', 'dataset': '../datasets/PTC/Train/FM.ds',},
  45. # {'name': 'PTC_FR', 'dataset': '../datasets/PTC/Train/FR.ds',},
  46. # {'name': 'PTC_MM', 'dataset': '../datasets/PTC/Train/MM.ds',},
  47. # {'name': 'PTC_MR', 'dataset': '../datasets/PTC/Train/MR.ds',},
  48. ]
  49. estimator = spkernel
  50. mixkernel = functools.partial(kernelproduct, deltakernel, rbf_kernel)
  51. param_grid_precomputed = {'node_kernels': [
  52. {'symb': deltakernel, 'nsymb': rbf_kernel, 'mix': mixkernel}]}
  53. param_grid = [{'C': np.logspace(-10, 3, num=27, base=10)},
  54. {'alpha': np.logspace(-10, 10, num=41, base=10)}]
  55. for ds in dslist:
  56. print()
  57. print(ds['name'])
  58. model_selection_for_precomputed_kernel(
  59. ds['dataset'],
  60. estimator,
  61. param_grid_precomputed,
  62. (param_grid[1] if ('task' in ds and ds['task']
  63. == 'regression') else param_grid[0]),
  64. (ds['task'] if 'task' in ds else 'classification'),
  65. NUM_TRIALS=30,
  66. datafile_y=(ds['dataset_y'] if 'dataset_y' in ds else None),
  67. extra_params=(ds['extra_params'] if 'extra_params' in ds else None),
  68. ds_name=ds['name'],
  69. n_jobs=multiprocessing.cpu_count(),
  70. read_gm_from_file=False)
  71. print()

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