X-Git-Url: https://fleuret.org/cgi-bin/gitweb/gitweb.cgi?a=blobdiff_plain;f=mine_mnist.py;h=1d69640af452af658d5932d4723dccc38c10d056;hb=75267f198e8f6cf476cb73d2846653494d7164b6;hp=0c485b20ad4689f6652bbf4da6078f789f6e8950;hpb=99fab4ddc7ee5fedf7a898a9263e2c271ea7d721;p=pytorch.git diff --git a/mine_mnist.py b/mine_mnist.py index 0c485b2..1d69640 100755 --- a/mine_mnist.py +++ b/mine_mnist.py @@ -1,5 +1,22 @@ #!/usr/bin/env python +######################################################################### +# This program is free software: you can redistribute it and/or modify # +# it under the terms of the version 3 of the GNU General Public License # +# as published by the Free Software Foundation. # +# # +# This program is distributed in the hope that it will be useful, but # +# WITHOUT ANY WARRANTY; without even the implied warranty of # +# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU # +# General Public License for more details. # +# # +# You should have received a copy of the GNU General Public License # +# along with this program. If not, see . # +# # +# Written by and Copyright (C) Francois Fleuret # +# Contact for comments & bug reports # +######################################################################### + import argparse, math, sys from copy import deepcopy @@ -19,13 +36,28 @@ else: ###################################################################### parser = argparse.ArgumentParser( - description = 'An implementation of Mutual Information estimator with a deep model', + description = '''An implementation of a Mutual Information estimator with a deep model + +Three different toy data-sets are implemented: + + (1) Two MNIST images of same class. The "true" MI is the log of the + number of used MNIST classes. + + (2) One MNIST image and a pair of real numbers whose difference is + the class of the image. The "true" MI is the log of the number of + used MNIST classes. + + (3) Two 1d sequences, the first with a single peak, the second with + two peaks, and the height of the peak in the first is the + difference of timing of the peaks in the second. The "true" MI is + the log of the number of possible peak heights.''', + formatter_class = argparse.ArgumentDefaultsHelpFormatter ) parser.add_argument('--data', type = str, default = 'image_pair', - help = 'What data') + help = 'What data: image_pair, image_values_pair, sequence_pair') parser.add_argument('--seed', type = int, default = 0, @@ -47,22 +79,13 @@ parser.add_argument('--batch_size', type = int, default = 100, help = 'Batch size') -###################################################################### +parser.add_argument('--learning_rate', + type = float, default = 1e-3, + help = 'Batch size') -def entropy(target): - probas = [] - for k in range(target.max() + 1): - n = (target == k).sum().item() - if n > 0: probas.append(n) - probas = torch.tensor(probas).float() - probas /= probas.sum() - return - (probas * probas.log()).sum().item() +parser.add_argument('--independent', action = 'store_true', + help = 'Should the pair components be independent') -def robust_log_mean_exp(x): - # a = x.max() - # return (x-a).exp().mean().log() + a - # a = x.max() - return x.exp().mean().log() ###################################################################### @@ -75,6 +98,17 @@ used_MNIST_classes = torch.tensor(eval('[' + args.mnist_classes + ']'), device = ###################################################################### +def entropy(target): + probas = [] + for k in range(target.max() + 1): + n = (target == k).sum().item() + if n > 0: probas.append(n) + probas = torch.tensor(probas).float() + probas /= probas.sum() + return - (probas * probas.log()).sum().item() + +###################################################################### + train_set = torchvision.datasets.MNIST('./data/mnist/', train = True, download = True) train_input = train_set.train_data.view(-1, 1, 28, 28).to(device).float() train_target = train_set.train_labels.to(device) @@ -116,6 +150,9 @@ def create_image_pairs(train = False): c = torch.cat(uc, 0) perm = torch.randperm(a.size(0)) a = a[perm].contiguous() + + if args.independent: + perm = torch.randperm(a.size(0)) b = b[perm].contiguous() return a, b, c @@ -123,7 +160,7 @@ def create_image_pairs(train = False): ###################################################################### # Returns a triplet a, b, c where a are the standard MNIST images, c -# the classes, and b is a Nx2 tensor, eith for every n: +# the classes, and b is a Nx2 tensor, with for every n: # # b[n, 0] ~ Uniform(0, 10) # b[n, 1] ~ b[n, 0] + Uniform(0, 0.5) + c[n] @@ -150,7 +187,12 @@ def create_image_values_pairs(train = False): b = a.new(a.size(0), 2) b[:, 0].uniform_(0.0, 10.0) b[:, 1].uniform_(0.0, 0.5) - b[:, 1] += b[:, 0] + target.float() + + if args.independent: + b[:, 1] += b[:, 0] + \ + used_MNIST_classes[torch.randint(len(used_MNIST_classes), target.size())] + else: + b[:, 1] += b[:, 0] + target.float() return a, b, c @@ -161,8 +203,10 @@ def create_sequences_pairs(train = False): noise_level = 2e-2 ha = torch.randint(args.nb_classes, (nb, ), device = device) + 1 - # hb = torch.randint(args.nb_classes, (nb, ), device = device) - hb = ha + if args.independent: + hb = torch.randint(args.nb_classes, (nb, ), device = device) + else: + hb = ha pos = torch.empty(nb, device = device).uniform_(0.0, 0.9) a = torch.linspace(0, 1, length, device = device).view(1, -1).expand(nb, -1) @@ -177,6 +221,7 @@ def create_sequences_pairs(train = False): b1 = b1 - pos.view(nb, 1) b1 = (b1 >= 0).float() * torch.exp(-b1 * math.log(2) / 0.1) * 0.25 pos = pos + hb.float() / (args.nb_classes + 1) * 0.5 + # pos += pos.new(hb.size()).uniform_(0.0, 0.01) b2 = torch.linspace(0, 1, length, device = device).view(1, -1).expand(nb, -1) b2 = b2 - pos.view(nb, 1) b2 = (b2 >= 0).float() * torch.exp(-b2 * math.log(2) / 0.1) * 0.25 @@ -305,40 +350,43 @@ class NetForSequencePair(nn.Module): if args.data == 'image_pair': create_pairs = create_image_pairs model = NetForImagePair() + elif args.data == 'image_values_pair': create_pairs = create_image_values_pairs model = NetForImageValuesPair() + elif args.data == 'sequence_pair': create_pairs = create_sequences_pairs model = NetForSequencePair() - ###################################################################### + + ## Save for figures a, b, c = create_pairs() for k in range(10): - file = open(f'/tmp/train_{k:02d}.dat', 'w') + file = open(f'train_{k:02d}.dat', 'w') for i in range(a.size(1)): file.write(f'{a[k, i]:f} {b[k,i]:f}\n') file.close() - # exit(0) - ###################################################################### + else: raise Exception('Unknown data ' + args.data) ###################################################################### +# Train -print('nb_parameters %d' % sum(x.numel() for x in model.parameters())) +print(f'nb_parameters {sum(x.numel() for x in model.parameters())}') model.to(device) +input_a, input_b, classes = create_pairs(train = True) + for e in range(args.nb_epochs): - input_a, input_b, classes = create_pairs(train = True) + optimizer = torch.optim.Adam(model.parameters(), lr = args.learning_rate) input_br = input_b[torch.randperm(input_b.size(0))] acc_mi = 0.0 - optimizer = torch.optim.Adam(model.parameters(), lr = 1e-4) - for batch_a, batch_b, batch_br in zip(input_a.split(args.batch_size), input_b.split(args.batch_size), input_br.split(args.batch_size)): @@ -351,11 +399,12 @@ for e in range(args.nb_epochs): acc_mi /= (input_a.size(0) // args.batch_size) - print('%d %.04f %.04f' % (e + 1, acc_mi / math.log(2), entropy(classes) / math.log(2))) + print(f'{e+1} {acc_mi / math.log(2):.04f} {entropy(classes) / math.log(2):.04f}') sys.stdout.flush() ###################################################################### +# Test input_a, input_b, classes = create_pairs(train = False) @@ -371,6 +420,6 @@ for batch_a, batch_b, batch_br in zip(input_a.split(args.batch_size), acc_mi /= (input_a.size(0) // args.batch_size) -print('test %.04f %.04f'%(acc_mi / math.log(2), entropy(classes) / math.log(2))) +print(f'test {acc_mi / math.log(2):.04f} {entropy(classes) / math.log(2):.04f}') ######################################################################