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#!/usr/bin/env python3 |
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# -*- coding: utf-8 -*- |
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""" |
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Created on Thu Oct 17 19:05:07 2019 |
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Useful functions. |
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@author: ljia |
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""" |
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#import networkx as nx |
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import multiprocessing |
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import numpy as np |
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from gklearn.kernels.marginalizedKernel import marginalizedkernel |
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from gklearn.kernels.untilHPathKernel import untilhpathkernel |
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from gklearn.kernels.spKernel import spkernel |
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import functools |
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from gklearn.utils.kernels import deltakernel, gaussiankernel, kernelproduct, polynomialkernel |
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from gklearn.kernels.structuralspKernel import structuralspkernel |
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from gklearn.kernels.treeletKernel import treeletkernel |
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from gklearn.kernels.weisfeilerLehmanKernel import weisfeilerlehmankernel |
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from gklearn.utils import Dataset |
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import csv |
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import networkx as nx |
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import os |
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def generate_median_preimages_by_class(ds_name, mpg_options, kernel_options, ged_options, mge_options, save_results=True, save_medians=True, plot_medians=True, load_gm='auto', dir_save='', irrelevant_labels=None, edge_required=False, cut_range=None): |
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import os.path |
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from gklearn.preimage import MedianPreimageGenerator |
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from gklearn.utils import split_dataset_by_target |
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from gklearn.utils.graphfiles import saveGXL |
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# 1. get dataset. |
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print('1. getting dataset...') |
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dataset_all = Dataset() |
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dataset_all.load_predefined_dataset(ds_name) |
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dataset_all.trim_dataset(edge_required=edge_required) |
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if irrelevant_labels is not None: |
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dataset_all.remove_labels(**irrelevant_labels) |
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if cut_range is not None: |
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dataset_all.cut_graphs(cut_range) |
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datasets = split_dataset_by_target(dataset_all) |
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if save_results: |
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# create result files. |
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print('creating output files...') |
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fn_output_detail, fn_output_summary = __init_output_file_preimage(ds_name, kernel_options['name'], mpg_options['fit_method'], dir_save) |
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sod_sm_list = [] |
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sod_gm_list = [] |
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dis_k_sm_list = [] |
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dis_k_gm_list = [] |
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dis_k_gi_min_list = [] |
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time_optimize_ec_list = [] |
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time_generate_list = [] |
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time_total_list = [] |
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itrs_list = [] |
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converged_list = [] |
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num_updates_ecc_list = [] |
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mge_decrease_order_list = [] |
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mge_increase_order_list = [] |
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mge_converged_order_list = [] |
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nb_sod_sm2gm = [0, 0, 0] |
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nb_dis_k_sm2gm = [0, 0, 0] |
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nb_dis_k_gi2sm = [0, 0, 0] |
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nb_dis_k_gi2gm = [0, 0, 0] |
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dis_k_max_list = [] |
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dis_k_min_list = [] |
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dis_k_mean_list = [] |
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if load_gm == 'auto': |
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gm_fname = dir_save + 'gram_matrix_unnorm.' + ds_name + '.' + kernel_options['name'] + '.gm.npz' |
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gmfile_exist = os.path.isfile(os.path.abspath(gm_fname)) |
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if gmfile_exist: |
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gmfile = np.load(gm_fname, allow_pickle=True) # @todo: may not be safe. |
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gram_matrix_unnorm_list = [item for item in gmfile['gram_matrix_unnorm_list']] |
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time_precompute_gm_list = gmfile['run_time_list'].tolist() |
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else: |
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gram_matrix_unnorm_list = [] |
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time_precompute_gm_list = [] |
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elif not load_gm: |
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gram_matrix_unnorm_list = [] |
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time_precompute_gm_list = [] |
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else: |
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gm_fname = dir_save + 'gram_matrix_unnorm.' + ds_name + '.' + kernel_options['name'] + '.gm.npz' |
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gmfile = np.load(gm_fname, allow_pickle=True) # @todo: may not be safe. |
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gram_matrix_unnorm_list = [item for item in gmfile['gram_matrix_unnorm_list']] |
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time_precompute_gm_list = gmfile['run_time_list'].tolist() |
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# repeats_better_sod_sm2gm = [] |
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# repeats_better_dis_k_sm2gm = [] |
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# repeats_better_dis_k_gi2sm = [] |
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# repeats_better_dis_k_gi2gm = [] |
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print('starting generating preimage for each class of target...') |
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idx_offset = 0 |
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for idx, dataset in enumerate(datasets): |
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target = dataset.targets[0] |
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print('\ntarget =', target, '\n') |
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# if target != 1: |
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# continue |
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num_graphs = len(dataset.graphs) |
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if num_graphs < 2: |
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print('\nnumber of graphs = ', num_graphs, ', skip.\n') |
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idx_offset += 1 |
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continue |
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# 2. set parameters. |
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print('2. initializing mpg and setting parameters...') |
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if load_gm: |
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if gmfile_exist: |
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mpg_options['gram_matrix_unnorm'] = gram_matrix_unnorm_list[idx - idx_offset] |
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mpg_options['runtime_precompute_gm'] = time_precompute_gm_list[idx - idx_offset] |
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mpg = MedianPreimageGenerator() |
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mpg.dataset = dataset |
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mpg.set_options(**mpg_options.copy()) |
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mpg.kernel_options = kernel_options.copy() |
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mpg.ged_options = ged_options.copy() |
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mpg.mge_options = mge_options.copy() |
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# 3. compute median preimage. |
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print('3. computing median preimage...') |
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mpg.run() |
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results = mpg.get_results() |
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# 4. compute pairwise kernel distances. |
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print('4. computing pairwise kernel distances...') |
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_, dis_k_max, dis_k_min, dis_k_mean = mpg.graph_kernel.compute_distance_matrix() |
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dis_k_max_list.append(dis_k_max) |
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dis_k_min_list.append(dis_k_min) |
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dis_k_mean_list.append(dis_k_mean) |
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# 5. save results (and median graphs). |
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print('5. saving results (and median graphs)...') |
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# write result detail. |
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if save_results: |
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print('writing results to files...') |
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sod_sm2gm = get_relations(np.sign(results['sod_gen_median'] - results['sod_set_median'])) |
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dis_k_sm2gm = get_relations(np.sign(results['k_dis_gen_median'] - results['k_dis_set_median'])) |
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dis_k_gi2sm = get_relations(np.sign(results['k_dis_set_median'] - results['k_dis_dataset'])) |
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dis_k_gi2gm = get_relations(np.sign(results['k_dis_gen_median'] - results['k_dis_dataset'])) |
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f_detail = open(dir_save + fn_output_detail, 'a') |
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csv.writer(f_detail).writerow([ds_name, kernel_options['name'], |
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ged_options['edit_cost'], ged_options['method'], |
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ged_options['attr_distance'], mpg_options['fit_method'], |
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num_graphs, target, 1, |
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results['sod_set_median'], results['sod_gen_median'], |
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results['k_dis_set_median'], results['k_dis_gen_median'], |
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results['k_dis_dataset'], sod_sm2gm, dis_k_sm2gm, |
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dis_k_gi2sm, dis_k_gi2gm, results['edit_cost_constants'], |
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results['runtime_precompute_gm'], results['runtime_optimize_ec'], |
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results['runtime_generate_preimage'], results['runtime_total'], |
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results['itrs'], results['converged'], |
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results['num_updates_ecc'], |
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results['mge']['num_decrease_order'] > 0, # @todo: not suitable for multi-start mge |
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results['mge']['num_increase_order'] > 0, |
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results['mge']['num_converged_descents'] > 0]) |
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f_detail.close() |
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# compute result summary. |
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sod_sm_list.append(results['sod_set_median']) |
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sod_gm_list.append(results['sod_gen_median']) |
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dis_k_sm_list.append(results['k_dis_set_median']) |
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dis_k_gm_list.append(results['k_dis_gen_median']) |
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dis_k_gi_min_list.append(results['k_dis_dataset']) |
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time_precompute_gm_list.append(results['runtime_precompute_gm']) |
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time_optimize_ec_list.append(results['runtime_optimize_ec']) |
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time_generate_list.append(results['runtime_generate_preimage']) |
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time_total_list.append(results['runtime_total']) |
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itrs_list.append(results['itrs']) |
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converged_list.append(results['converged']) |
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num_updates_ecc_list.append(results['num_updates_ecc']) |
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mge_decrease_order_list.append(results['mge']['num_decrease_order'] > 0) |
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mge_increase_order_list.append(results['mge']['num_increase_order'] > 0) |
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mge_converged_order_list.append(results['mge']['num_converged_descents'] > 0) |
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# # SOD SM -> GM |
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if results['sod_set_median'] > results['sod_gen_median']: |
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nb_sod_sm2gm[0] += 1 |
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# repeats_better_sod_sm2gm.append(1) |
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elif results['sod_set_median'] == results['sod_gen_median']: |
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nb_sod_sm2gm[1] += 1 |
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elif results['sod_set_median'] < results['sod_gen_median']: |
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nb_sod_sm2gm[2] += 1 |
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# # dis_k SM -> GM |
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if results['k_dis_set_median'] > results['k_dis_gen_median']: |
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nb_dis_k_sm2gm[0] += 1 |
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# repeats_better_dis_k_sm2gm.append(1) |
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elif results['k_dis_set_median'] == results['k_dis_gen_median']: |
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nb_dis_k_sm2gm[1] += 1 |
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elif results['k_dis_set_median'] < results['k_dis_gen_median']: |
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nb_dis_k_sm2gm[2] += 1 |
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# # dis_k gi -> SM |
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if results['k_dis_dataset'] > results['k_dis_set_median']: |
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nb_dis_k_gi2sm[0] += 1 |
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# repeats_better_dis_k_gi2sm.append(1) |
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elif results['k_dis_dataset'] == results['k_dis_set_median']: |
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nb_dis_k_gi2sm[1] += 1 |
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elif results['k_dis_dataset'] < results['k_dis_set_median']: |
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nb_dis_k_gi2sm[2] += 1 |
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# # dis_k gi -> GM |
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if results['k_dis_dataset'] > results['k_dis_gen_median']: |
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nb_dis_k_gi2gm[0] += 1 |
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# repeats_better_dis_k_gi2gm.append(1) |
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elif results['k_dis_dataset'] == results['k_dis_gen_median']: |
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nb_dis_k_gi2gm[1] += 1 |
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elif results['k_dis_dataset'] < results['k_dis_gen_median']: |
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nb_dis_k_gi2gm[2] += 1 |
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# write result summary for each letter. |
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f_summary = open(dir_save + fn_output_summary, 'a') |
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csv.writer(f_summary).writerow([ds_name, kernel_options['name'], |
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ged_options['edit_cost'], ged_options['method'], |
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ged_options['attr_distance'], mpg_options['fit_method'], |
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num_graphs, target, |
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results['sod_set_median'], results['sod_gen_median'], |
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results['k_dis_set_median'], results['k_dis_gen_median'], |
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results['k_dis_dataset'], sod_sm2gm, dis_k_sm2gm, |
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dis_k_gi2sm, dis_k_gi2gm, |
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results['runtime_precompute_gm'], results['runtime_optimize_ec'], |
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results['runtime_generate_preimage'], results['runtime_total'], |
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results['itrs'], results['converged'], |
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results['num_updates_ecc'], |
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results['mge']['num_decrease_order'] > 0, # @todo: not suitable for multi-start mge |
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results['mge']['num_increase_order'] > 0, |
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results['mge']['num_converged_descents'] > 0, |
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nb_sod_sm2gm, |
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nb_dis_k_sm2gm, nb_dis_k_gi2sm, nb_dis_k_gi2gm]) |
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f_summary.close() |
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# save median graphs. |
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if save_medians: |
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if not os.path.exists(dir_save + 'medians/'): |
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os.makedirs(dir_save + 'medians/') |
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print('Saving median graphs to files...') |
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fn_pre_sm = dir_save + 'medians/set_median.' + mpg_options['fit_method'] + '.nbg' + str(num_graphs) + '.y' + str(target) + '.repeat' + str(1) |
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saveGXL(mpg.set_median, fn_pre_sm + '.gxl', method='default', |
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node_labels=dataset.node_labels, edge_labels=dataset.edge_labels, |
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node_attrs=dataset.node_attrs, edge_attrs=dataset.edge_attrs) |
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fn_pre_gm = dir_save + 'medians/gen_median.' + mpg_options['fit_method'] + '.nbg' + str(num_graphs) + '.y' + str(target) + '.repeat' + str(1) |
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saveGXL(mpg.gen_median, fn_pre_gm + '.gxl', method='default', |
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node_labels=dataset.node_labels, edge_labels=dataset.edge_labels, |
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node_attrs=dataset.node_attrs, edge_attrs=dataset.edge_attrs) |
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fn_best_dataset = dir_save + 'medians/g_best_dataset.' + mpg_options['fit_method'] + '.nbg' + str(num_graphs) + '.y' + str(target) + '.repeat' + str(1) |
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saveGXL(mpg.best_from_dataset, fn_best_dataset + '.gxl', method='default', |
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node_labels=dataset.node_labels, edge_labels=dataset.edge_labels, |
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node_attrs=dataset.node_attrs, edge_attrs=dataset.edge_attrs) |
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# plot median graphs. |
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if plot_medians and save_medians: |
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if ged_options['edit_cost'] == 'LETTER2' or ged_options['edit_cost'] == 'LETTER' or ds_name == 'Letter-high' or ds_name == 'Letter-med' or ds_name == 'Letter-low': |
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draw_Letter_graph(mpg.set_median, fn_pre_sm) |
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draw_Letter_graph(mpg.gen_median, fn_pre_gm) |
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draw_Letter_graph(mpg.best_from_dataset, fn_best_dataset) |
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if (load_gm == 'auto' and not gmfile_exist) or not load_gm: |
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gram_matrix_unnorm_list.append(mpg.gram_matrix_unnorm) |
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# write result summary for each class. |
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if save_results: |
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sod_sm_mean = np.mean(sod_sm_list) |
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sod_gm_mean = np.mean(sod_gm_list) |
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dis_k_sm_mean = np.mean(dis_k_sm_list) |
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dis_k_gm_mean = np.mean(dis_k_gm_list) |
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dis_k_gi_min_mean = np.mean(dis_k_gi_min_list) |
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time_precompute_gm_mean = np.mean(time_precompute_gm_list) |
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time_optimize_ec_mean = np.mean(time_optimize_ec_list) |
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time_generate_mean = np.mean(time_generate_list) |
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time_total_mean = np.mean(time_total_list) |
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itrs_mean = np.mean(itrs_list) |
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num_converged = np.sum(converged_list) |
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num_updates_ecc_mean = np.mean(num_updates_ecc_list) |
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num_mge_decrease_order = np.sum(mge_decrease_order_list) |
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num_mge_increase_order = np.sum(mge_increase_order_list) |
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num_mge_converged = np.sum(mge_converged_order_list) |
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sod_sm2gm_mean = get_relations(np.sign(sod_gm_mean - sod_sm_mean)) |
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dis_k_sm2gm_mean = get_relations(np.sign(dis_k_gm_mean - dis_k_sm_mean)) |
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dis_k_gi2sm_mean = get_relations(np.sign(dis_k_sm_mean - dis_k_gi_min_mean)) |
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dis_k_gi2gm_mean = get_relations(np.sign(dis_k_gm_mean - dis_k_gi_min_mean)) |
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f_summary = open(dir_save + fn_output_summary, 'a') |
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csv.writer(f_summary).writerow([ds_name, kernel_options['name'], |
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ged_options['edit_cost'], ged_options['method'], |
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ged_options['attr_distance'], mpg_options['fit_method'], |
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num_graphs, 'all', |
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sod_sm_mean, sod_gm_mean, dis_k_sm_mean, dis_k_gm_mean, |
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dis_k_gi_min_mean, sod_sm2gm_mean, dis_k_sm2gm_mean, |
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dis_k_gi2sm_mean, dis_k_gi2gm_mean, |
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time_precompute_gm_mean, time_optimize_ec_mean, |
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time_generate_mean, time_total_mean, itrs_mean, |
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num_converged, num_updates_ecc_mean, |
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num_mge_decrease_order, num_mge_increase_order, |
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num_mge_converged]) |
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f_summary.close() |
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# save total pairwise kernel distances. |
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dis_k_max = np.max(dis_k_max_list) |
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dis_k_min = np.min(dis_k_min_list) |
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dis_k_mean = np.mean(dis_k_mean_list) |
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print('The maximum pairwise distance in kernel space:', dis_k_max) |
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print('The minimum pairwise distance in kernel space:', dis_k_min) |
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print('The average pairwise distance in kernel space:', dis_k_mean) |
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# write Gram matrices to file. |
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if (load_gm == 'auto' and not gmfile_exist) or not load_gm: |
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np.savez(dir_save + 'gram_matrix_unnorm.' + ds_name + '.' + kernel_options['name'] + '.gm', gram_matrix_unnorm_list=gram_matrix_unnorm_list, run_time_list=time_precompute_gm_list) |
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print('\ncomplete.\n') |
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def __init_output_file_preimage(ds_name, gkernel, fit_method, dir_output): |
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if not os.path.exists(dir_output): |
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os.makedirs(dir_output) |
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# fn_output_detail = 'results_detail.' + ds_name + '.' + gkernel + '.' + fit_method + '.csv' |
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fn_output_detail = 'results_detail.' + ds_name + '.' + gkernel + '.csv' |
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f_detail = open(dir_output + fn_output_detail, 'a') |
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csv.writer(f_detail).writerow(['dataset', 'graph kernel', 'edit cost', |
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'GED method', 'attr distance', 'fit method', 'num graphs', |
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'target', 'repeat', 'SOD SM', 'SOD GM', 'dis_k SM', 'dis_k GM', |
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'min dis_k gi', 'SOD SM -> GM', 'dis_k SM -> GM', 'dis_k gi -> SM', |
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'dis_k gi -> GM', 'edit cost constants', 'time precompute gm', |
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'time optimize ec', 'time generate preimage', 'time total', |
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'itrs', 'converged', 'num updates ecc', 'mge decrease order', |
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'mge increase order', 'mge converged']) |
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f_detail.close() |
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# fn_output_summary = 'results_summary.' + ds_name + '.' + gkernel + '.' + fit_method + '.csv' |
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fn_output_summary = 'results_summary.' + ds_name + '.' + gkernel + '.csv' |
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f_summary = open(dir_output + fn_output_summary, 'a') |
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csv.writer(f_summary).writerow(['dataset', 'graph kernel', 'edit cost', |
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'GED method', 'attr distance', 'fit method', 'num graphs', |
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'target', 'SOD SM', 'SOD GM', 'dis_k SM', 'dis_k GM', |
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'min dis_k gi', 'SOD SM -> GM', 'dis_k SM -> GM', 'dis_k gi -> SM', |
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'dis_k gi -> GM', 'time precompute gm', 'time optimize ec', |
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'time generate preimage', 'time total', 'itrs', 'num converged', |
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'num updates ecc', 'mge num decrease order', 'mge num increase order', |
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'mge num converged', '# SOD SM -> GM', '# dis_k SM -> GM', |
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'# dis_k gi -> SM', '# dis_k gi -> GM']) |
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# 'repeats better SOD SM -> GM', |
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# 'repeats better dis_k SM -> GM', 'repeats better dis_k gi -> SM', |
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# 'repeats better dis_k gi -> GM']) |
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f_summary.close() |
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return fn_output_detail, fn_output_summary |
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def get_relations(sign): |
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if sign == -1: |
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return 'better' |
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elif sign == 0: |
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return 'same' |
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elif sign == 1: |
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return 'worse' |
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#Dessin median courrant |
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def draw_Letter_graph(graph, file_prefix): |
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import matplotlib |
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matplotlib.use('agg') |
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import matplotlib.pyplot as plt |
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plt.figure() |
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pos = {} |
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for n in graph.nodes: |
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pos[n] = np.array([float(graph.nodes[n]['x']),float(graph.nodes[n]['y'])]) |
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nx.draw_networkx(graph, pos) |
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plt.savefig(file_prefix + '.eps', format='eps', dpi=300) |
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# plt.show() |
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plt.clf() |
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plt.close() |
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def remove_edges(Gn): |
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for G in Gn: |
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for _, _, attrs in G.edges(data=True): |
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attrs.clear() |
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def dis_gstar(idx_g, idx_gi, alpha, Kmatrix, term3=0, withterm3=True): |
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term1 = Kmatrix[idx_g, idx_g] |
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term2 = 0 |
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for i, a in enumerate(alpha): |
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term2 += a * Kmatrix[idx_g, idx_gi[i]] |
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term2 *= 2 |
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if withterm3 == False: |
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for i1, a1 in enumerate(alpha): |
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for i2, a2 in enumerate(alpha): |
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term3 += a1 * a2 * Kmatrix[idx_gi[i1], idx_gi[i2]] |
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return np.sqrt(term1 - term2 + term3) |
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def compute_k_dis(idx_g, idx_gi, alphas, Kmatrix, term3=0, withterm3=True): |
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term1 = Kmatrix[idx_g, idx_g] |
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term2 = 0 |
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for i, a in enumerate(alphas): |
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term2 += a * Kmatrix[idx_g, idx_gi[i]] |
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term2 *= 2 |
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if withterm3 == False: |
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for i1, a1 in enumerate(alphas): |
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for i2, a2 in enumerate(alphas): |
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term3 += a1 * a2 * Kmatrix[idx_gi[i1], idx_gi[i2]] |
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return np.sqrt(term1 - term2 + term3) |
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def compute_kernel(Gn, graph_kernel, node_label, edge_label, verbose, parallel='imap_unordered'): |
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if graph_kernel == 'marginalizedkernel': |
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Kmatrix, _ = marginalizedkernel(Gn, node_label=node_label, edge_label=edge_label, |
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p_quit=0.03, n_iteration=10, remove_totters=False, |
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n_jobs=multiprocessing.cpu_count(), verbose=verbose) |
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elif graph_kernel == 'untilhpathkernel': |
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Kmatrix, _ = untilhpathkernel(Gn, node_label=node_label, edge_label=edge_label, |
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depth=7, k_func='MinMax', compute_method='trie', |
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parallel=parallel, |
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n_jobs=multiprocessing.cpu_count(), verbose=verbose) |
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elif graph_kernel == 'spkernel': |
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mixkernel = functools.partial(kernelproduct, deltakernel, gaussiankernel) |
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|
Kmatrix = np.empty((len(Gn), len(Gn))) |
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|
# Kmatrix[:] = np.nan |
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Kmatrix, _, idx = spkernel(Gn, node_label=node_label, node_kernels= |
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{'symb': deltakernel, 'nsymb': gaussiankernel, 'mix': mixkernel}, |
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n_jobs=multiprocessing.cpu_count(), verbose=verbose) |
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# for i, row in enumerate(idx): |
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# for j, col in enumerate(idx): |
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# Kmatrix[row, col] = Kmatrix_tmp[i, j] |
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|
elif graph_kernel == 'structuralspkernel': |
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|
mixkernel = functools.partial(kernelproduct, deltakernel, gaussiankernel) |
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|
sub_kernels = {'symb': deltakernel, 'nsymb': gaussiankernel, 'mix': mixkernel} |
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|
Kmatrix, _ = structuralspkernel(Gn, node_label=node_label, |
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|
edge_label=edge_label, node_kernels=sub_kernels, |
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|
edge_kernels=sub_kernels, |
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|
parallel=parallel, n_jobs=multiprocessing.cpu_count(), |
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|
|
verbose=verbose) |
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|
|
elif graph_kernel == 'treeletkernel': |
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|
|
pkernel = functools.partial(polynomialkernel, d=2, c=1e5) |
|
|
|
# pkernel = functools.partial(gaussiankernel, gamma=1e-6) |
|
|
|
mixkernel = functools.partial(kernelproduct, deltakernel, gaussiankernel) |
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|
|
Kmatrix, _ = treeletkernel(Gn, node_label=node_label, edge_label=edge_label, |
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|
|
sub_kernel=pkernel, parallel=parallel, |
|
|
|
n_jobs=multiprocessing.cpu_count(), verbose=verbose) |
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|
|
elif graph_kernel == 'weisfeilerlehmankernel': |
|
|
|
Kmatrix, _ = weisfeilerlehmankernel(Gn, node_label=node_label, edge_label=edge_label, |
|
|
|
height=4, base_kernel='subtree', parallel=None, |
|
|
|
n_jobs=multiprocessing.cpu_count(), verbose=verbose) |
|
|
|
else: |
|
|
|
raise Exception('The graph kernel "', graph_kernel, '" is not defined.') |
|
|
|
|
|
|
|
# normalization |
|
|
|
Kmatrix_diag = Kmatrix.diagonal().copy() |
|
|
|
for i in range(len(Kmatrix)): |
|
|
|
for j in range(i, len(Kmatrix)): |
|
|
|
Kmatrix[i][j] /= np.sqrt(Kmatrix_diag[i] * Kmatrix_diag[j]) |
|
|
|
Kmatrix[j][i] = Kmatrix[i][j] |
|
|
|
return Kmatrix |
|
|
|
|
|
|
|
|
|
|
|
def gram2distances(Kmatrix): |
|
|
|
dmatrix = np.zeros((len(Kmatrix), len(Kmatrix))) |
|
|
|
for i1 in range(len(Kmatrix)): |
|
|
|
for i2 in range(len(Kmatrix)): |
|
|
|
dmatrix[i1, i2] = Kmatrix[i1, i1] + Kmatrix[i2, i2] - 2 * Kmatrix[i1, i2] |
|
|
|
dmatrix = np.sqrt(dmatrix) |
|
|
|
return dmatrix |
|
|
|
|
|
|
|
|
|
|
|
def kernel_distance_matrix(Gn, node_label, edge_label, Kmatrix=None, |
|
|
|
gkernel=None, verbose=True): |
|
|
|
import warnings |
|
|
|
warnings.warn('gklearn.preimage.utils.kernel_distance_matrix is deprecated, use gklearn.kernels.graph_kernel.compute_distance_matrix or gklearn.utils.compute_distance_matrix instead', DeprecationWarning) |
|
|
|
dis_mat = np.empty((len(Gn), len(Gn))) |
|
|
|
if Kmatrix is None: |
|
|
|
Kmatrix = compute_kernel(Gn, gkernel, node_label, edge_label, verbose) |
|
|
|
for i in range(len(Gn)): |
|
|
|
for j in range(i, len(Gn)): |
|
|
|
dis = Kmatrix[i, i] + Kmatrix[j, j] - 2 * Kmatrix[i, j] |
|
|
|
if dis < 0: |
|
|
|
if dis > -1e-10: |
|
|
|
dis = 0 |
|
|
|
else: |
|
|
|
raise ValueError('The distance is negative.') |
|
|
|
dis_mat[i, j] = np.sqrt(dis) |
|
|
|
dis_mat[j, i] = dis_mat[i, j] |
|
|
|
dis_max = np.max(np.max(dis_mat)) |
|
|
|
dis_min = np.min(np.min(dis_mat[dis_mat != 0])) |
|
|
|
dis_mean = np.mean(np.mean(dis_mat)) |
|
|
|
return dis_mat, dis_max, dis_min, dis_mean |
|
|
|
|
|
|
|
|
|
|
|
def get_same_item_indices(ls): |
|
|
|
"""Get the indices of the same items in a list. Return a dict keyed by items. |
|
|
|
""" |
|
|
|
idx_dict = {} |
|
|
|
for idx, item in enumerate(ls): |
|
|
|
if item in idx_dict: |
|
|
|
idx_dict[item].append(idx) |
|
|
|
else: |
|
|
|
idx_dict[item] = [idx] |
|
|
|
return idx_dict |
|
|
|
|
|
|
|
|
|
|
|
def k_nearest_neighbors_to_median_in_kernel_space(Gn, Kmatrix=None, gkernel=None, |
|
|
|
node_label=None, edge_label=None): |
|
|
|
dis_k_all = [] # distance between g_star and each graph. |
|
|
|
alpha = [1 / len(Gn)] * len(Gn) |
|
|
|
if Kmatrix is None: |
|
|
|
Kmatrix = compute_kernel(Gn, gkernel, node_label, edge_label, True) |
|
|
|
term3 = 0 |
|
|
|
for i1, a1 in enumerate(alpha): |
|
|
|
for i2, a2 in enumerate(alpha): |
|
|
|
term3 += a1 * a2 * Kmatrix[idx_gi[i1], idx_gi[i2]] |
|
|
|
for ig, g in tqdm(enumerate(Gn_init), desc='computing distances', file=sys.stdout): |
|
|
|
dtemp = dis_gstar(ig, idx_gi, alpha, Kmatrix, term3=term3) |
|
|
|
dis_all.append(dtemp) |
|
|
|
|
|
|
|
|
|
|
|
def normalize_distance_matrix(D): |
|
|
|
max_value = np.amax(D) |
|
|
|
min_value = np.amin(D) |
|
|
|
return (D - min_value) / (max_value - min_value) |