コード例 #1
0
def validation(options, model, val_loader):
    """
    This function is defined to implement the cross validation stage with 4-Folds.
    :param options: the optional parameters (object of the ArgumentParser).
    :param model: the supervised-beta-VAE model, gain by the training stage.
    :param val_loader: the validation data loader.
    :return: the loss, f1 score and ER from the validation dataset.
    """
    latents_dim = 15
    beta = 3 * latents_dim / options.feature_dim
    lambda_ = 2 * options.num_events / latents_dim

    decoder_loss_fn = nn.BCELoss(reduction='none')
    disent_loss = DisentLoss(K=options.num_events, beta=beta)
    l_decoders = 0
    l_disents = 0
    loss_datas = 0
    n_batches = len(val_loader)
    with torch.no_grad():
        model.eval()
        detector_outs, y_datas = torch.Tensor(), torch.Tensor()
        r2s = 0
        for n_sample, (x_data, y_data) in enumerate(val_loader):
            dec_out, detectors_out, z_stars, alphas, (mu, log_var) = model(
                x_data.float().cuda())
            l_decoder = torch.mean(
                decoder_loss_fn(dec_out.reshape(len(x_data), -1),
                                x_data.float().cuda()))
            l_disent, (l_detector, _) = disent_loss(
                (detectors_out, z_stars, alphas, (mu, log_var)),
                y_data.float().cuda())
            loss = (l_decoder + lambda_ * l_disent).mean()
            l_decoders += l_decoder.mean().cpu().item()
            l_disents += l_disent.mean().cpu().item()
            loss_datas += loss.mean().cpu().item()
            detector_outs = torch.cat((detector_outs, detectors_out.cpu()))
            y_datas = torch.cat((y_datas, y_data.float().cpu()))
            r2s += r_square(dec_out.cpu().numpy(), x_data.float().numpy())

        detector_outs, y_datas = detector_outs.numpy(), y_datas.numpy()
        f1_score, error_rate = segment_metrics(inputs=detector_outs,
                                               targets=y_datas,
                                               K=options.num_events)
        binary_acc = binary_accurate(inputs=detector_outs.round(),
                                     targets=y_datas)
        loss_log = {
            'loss': loss_datas / n_batches,
            'loss recons': l_decoders / n_batches,
            'loss disents': l_disents / n_batches,
            'f1 score': f1_score,
            'error rate': error_rate,
            'r2': r2s / n_batches
        }
        loss_df = pd.DataFrame(data=loss_log, index=['validation'])
        print('******************************')
        print(loss_df)
        print('binary accurate', binary_acc)
        print('******************************')
        return loss_datas / n_batches, f1_score, error_rate
コード例 #2
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def test(options, model, test_loader, fold, weight='cp'):
    """
    This function defined the testing stage, which using the test dataset of the DCASE2017 dataset(Table 3 in paper) to
    evaluate our model.
    :param options: the same one with the other function.
    :param model: the selected model in the validation stage.
    :param test_loader: the test dataset loader.
    :param fold: the K-th fold.
    :return: f1 score and ER of the test dataset.
    """
    model.load_state_dict(
        torch.load(options.result_path + model.name + '/fold_' + str(fold) +
                   '_' + weight + '_weight.h5'))
    with torch.no_grad():
        model.eval()
        detector_outs, y_datas = torch.Tensor(), torch.Tensor()
        r2s = 0
        n_batches = len(test_loader)
        for n_sample, (x_data, y_data) in enumerate(test_loader):
            dec_out, detectors_out, z_stars, alphas, (mu, log_var) = model(
                x_data.float().cuda())
            detector_outs = torch.cat((detector_outs, detectors_out.cpu()))
            y_datas = torch.cat((y_datas, y_data.float().cpu()))
            r2s += r_square(dec_out.cpu().numpy(), x_data.float().numpy())

        detector_outs, y_datas = detector_outs.numpy(), y_datas.numpy()
        f1_score, error_rate = segment_metrics(inputs=detector_outs,
                                               targets=y_datas,
                                               K=options.num_events)
        binary_acc = binary_accurate(inputs=detector_outs.round(),
                                     targets=y_datas)
        loss_log = {
            'fold': fold,
            'f1 score': f1_score,
            'error rate': error_rate,
            'r2': r2s / n_batches
        }
        loss_df = pd.DataFrame(data=loss_log, index=['test'])
        print('>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>')
        print(loss_df)
        print('binary accurate', binary_acc)
        print('>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>>')
        return f1_score, error_rate, binary_acc
コード例 #3
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def running(options):
    dh = DataHandler(options.dataset)
    # 1.First construct polyphonic datasets by mixing single event sound, and extract MFCCs features.
    if options.mix_data:
        dh.mix_data(nevents=5, isUnbalanced=True)
    batch_size = options.batch_size
    epoch = options.epoch
    lr = options.learning_rate
    K = 5
    beta = 3
    lambda_ = 1
    latents_dim = 15
    sb_vae = SBetaVAE(options).cuda()
    sb_vae.name = 'att_s_beta_vae_5'
    beta = beta * latents_dim / options.feature_dim
    lambda_ = lambda_ * options.num_events / latents_dim
    decoder_loss_fn = nn.BCELoss(reduction='none')
    disent_loss = DisentLoss(K=options.num_events, beta=beta)
    optimizer = torch.optim.Adam(sb_vae.parameters(), lr=lr)
    # 2.Load data.
    train_dataset = TorchDataset(options, type_='train', fold=1)
    train_loader = DataLoader(train_dataset,
                              pin_memory=True,
                              batch_size=batch_size,
                              num_workers=0,
                              shuffle=True)

    test_dataset = TorchDataset(options, type_='test', fold=1)
    test_loader = DataLoader(test_dataset,
                             pin_memory=True,
                             batch_size=batch_size,
                             num_workers=0,
                             shuffle=True)

    # 3.train the model with unbalanced data
    for e in range(epoch):
        sb_vae.train()
        l_decoders = 0
        l_detectors = 0
        l_disents = 0
        loss_datas = 0
        for n_sample, (x_data, y_data) in enumerate(train_loader):
            dec_out, detectors_out, z_stars, alphas, (mu, log_var) = sb_vae(
                x_data.float().cuda())
            l_decoder = torch.mean(
                decoder_loss_fn(dec_out.reshape(len(x_data), -1),
                                x_data.float().cuda()))
            l_disent, (l_detector, _) = disent_loss(
                (detectors_out, z_stars, alphas, (mu, log_var)),
                y_data.float().cuda())
            loss = (l_decoder + lambda_ * l_disent)
            l_decoders += l_decoder.cpu().mean().item()
            l_detectors += l_detector.cpu().mean().item()
            l_disents += l_disent.cpu().mean().item()
            loss_datas += loss.cpu().item()

            optimizer.zero_grad()
            loss.backward()
            optimizer.step()
            if n_sample % 500 == 0:
                print('--- epoch/epochs: %d/%d || batch/batches: %d/%d ---' %
                      (e, epoch, n_sample, len(train_loader)))
                binary_acc = binary_accurate(inputs=detectors_out.squeeze().
                                             detach().round().cpu().numpy(),
                                             targets=y_data.numpy().squeeze())

                r2 = r_square(dec_out.detach().cpu().numpy(), x_data.numpy())
                loss_log = {
                    'loss': loss_datas / (n_sample + 1),
                    'loss recons': l_decoders / (n_sample + 1),
                    'loss disents': l_disents / (n_sample + 1),
                    'loss detectors': l_detectors / (n_sample + 1),
                    'r2': r2
                }
                loss_df = pd.DataFrame(data=loss_log, index=['train'])
                print(loss_df)
                print('binary accurate', binary_acc)
                print()

    f1_test, er_test, binary_acc = test(options,
                                        model=sb_vae,
                                        test_loader=test_loader,
                                        fold=1)
    print('Before data augmentation: F1={}, ER={}'.format(f1_test, er_test))
    print('ACC: ', binary_acc)

    # 4. Now generate new data
    with torch.no_grad():
        train_loader = DataLoader(train_dataset,
                                  pin_memory=True,
                                  batch_size=1,
                                  num_workers=0,
                                  shuffle=True)
        x_augmented = torch.Tensor().cuda()
        y_augmented = torch.Tensor().cuda()
        count = 0
        for n_sample, (x_data, y_data) in enumerate(train_loader):
            if not y_data[0, 0] == 0:
                continue
            y_data_ = torch.zeros(y_data.shape)
            y_data_[0] = 1.
            dec_out, detectors_out, z_stars, alphas, (mu, log_var) = sb_vae(
                x_data.float().cuda())
            dec_x = sb_vae.decoder(
                z_stars[:, :, 0])  # we generate the first event default.
            x_augmented = torch.cat([x_augmented, dec_x])
            y_augmented = torch.cat([y_augmented, y_data_.cuda().float()])
            count += 1
            if count >= 1000:
                break

    # 5. Retrain a new model and evaluate it
    train_dataset.x_data = np.concatenate(
        [train_dataset.x_data,
         x_augmented.cpu().float().numpy()])
    train_dataset.y_data = np.concatenate(
        [train_dataset.y_data,
         y_augmented.cpu().float().numpy()])
    # sb_vae = SBetaVAE(options).cuda()
    for e in range(5):
        sb_vae.train()
        l_decoders = 0
        l_detectors = 0
        l_disents = 0
        loss_datas = 0
        train_loader = DataLoader(train_dataset,
                                  pin_memory=True,
                                  batch_size=batch_size,
                                  num_workers=0,
                                  shuffle=True)
        for n_sample, (x_data, y_data) in enumerate(train_loader):
            dec_out, detectors_out, z_stars, alphas, (mu, log_var) = sb_vae(
                x_data.float().cuda())
            l_decoder = torch.mean(
                decoder_loss_fn(dec_out.reshape(len(x_data), -1),
                                x_data.float().cuda()))
            l_disent, (l_detector, _) = disent_loss(
                (detectors_out, z_stars, alphas, (mu, log_var)),
                y_data.float().cuda())
            loss = (l_decoder + lambda_ * l_disent)
            l_decoders += l_decoder.cpu().mean().item()
            l_detectors += l_detector.cpu().mean().item()
            l_disents += l_disent.cpu().mean().item()
            loss_datas += loss.cpu().item()

            optimizer.zero_grad()
            loss.backward()
            optimizer.step()
            if n_sample % 500 == 0:
                print('--- epoch/epochs: %d/%d || batch/batches: %d/%d ---' %
                      (e, epoch, n_sample, len(train_loader)))
                binary_acc = binary_accurate(inputs=detectors_out.squeeze().
                                             detach().round().cpu().numpy(),
                                             targets=y_data.numpy().squeeze())

                r2 = r_square(dec_out.detach().cpu().numpy(), x_data.numpy())
                loss_log = {
                    'loss': loss_datas / (n_sample + 1),
                    'loss recons': l_decoders / (n_sample + 1),
                    'loss disents': l_disents / (n_sample + 1),
                    'loss detectors': l_detectors / (n_sample + 1),
                    'r2': r2
                }
                loss_df = pd.DataFrame(data=loss_log, index=['train'])
                print(loss_df)
                print('binary accurate', binary_acc)
                print()
    torch.save(
        sb_vae.state_dict(), options.result_path + sb_vae.name + '/fold_' +
        str(1) + '_DA_weight.h5')
    f1_test, er_test, binary_acc = test(options,
                                        model=sb_vae,
                                        test_loader=test_loader,
                                        fold=1,
                                        weight='DA')
    print('After data augmentation: F1={}, ER={}'.format(f1_test, er_test))
    print('ACC: ', binary_acc)
コード例 #4
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def running(options):
    dh = DataHandler('freesound')
    folds = options.nfolds
    batch_size = options.batch_size
    epoch = options.epoch
    lr = options.learning_rate
    K = options.num_events
    if options.mix_data:
        dh.mix_data(K)
    if K == 5:
        beta = 3
        lambda_ = 1
        latents_dim = 15
    elif K == 10:
        beta = 4
        lambda_ = 2
        latents_dim = 30
    elif K == 15:
        beta = 5
        lambda_ = 3
        latents_dim = 45
    elif K == 20:
        beta = 5
        lambda_ = 3
        latents_dim = 60
    else:
        return
    beta = beta * latents_dim / options.feature_dim
    lambda_ = lambda_ * options.num_events / latents_dim

    decoder_loss_fn = nn.BCELoss(reduction='none')
    disent_loss = DisentLoss(K=options.num_events, beta=beta)

    f1_list, er_list, fold_list = [], [], []
    for k in range(1, folds + 1):
        sb_vae = SBetaVAE(options).cuda()
        sb_vae.name = 'att_s_beta_vae_' + str(K)
        optimizer = torch.optim.Adam(sb_vae.parameters(), lr=lr)
        # 2.Load data.
        train_dataset = TorchDataset(options, type_='train', fold=k)
        train_loader = DataLoader(train_dataset,
                                  pin_memory=True,
                                  batch_size=batch_size,
                                  num_workers=0,
                                  shuffle=True)

        val_dataset = TorchDataset(options, type_='val', fold=k)
        val_loader = DataLoader(val_dataset,
                                pin_memory=True,
                                batch_size=batch_size,
                                num_workers=8,
                                shuffle=True)

        test_dataset = TorchDataset(options, type_='test', fold=k)
        test_loader = DataLoader(test_dataset,
                                 pin_memory=True,
                                 batch_size=batch_size,
                                 num_workers=4,
                                 shuffle=True)

        best_f1, best_er, best_e = 0, 0, 0
        min_loss = 1000
        for e in range(epoch):
            sb_vae.train()
            l_decoders = 0
            l_detectors = 0
            l_disents = 0
            loss_datas = 0

            for n_sample, (x_data, y_data) in enumerate(train_loader):
                dec_out, detectors_out, z_stars, alphas, (
                    mu, log_var) = sb_vae(x_data.float().cuda())
                l_decoder = torch.mean(
                    decoder_loss_fn(dec_out.reshape(len(x_data), -1),
                                    x_data.float().cuda()))
                l_disent, (l_detector, _) = disent_loss(
                    (detectors_out, z_stars, alphas, (mu, log_var)),
                    y_data.float().cuda())
                loss = (l_decoder + lambda_ * l_disent)
                l_decoders += l_decoder.cpu().mean().item()
                l_detectors += l_detector.cpu().mean().item()
                l_disents += l_disent.cpu().mean().item()
                loss_datas += loss.cpu().item()

                optimizer.zero_grad()
                loss.backward()
                optimizer.step()
                if n_sample % 500 == 0:
                    print(
                        '--- epoch/epochs: %d/%d || batch/batches: %d/%d ---' %
                        (e, epoch, n_sample, len(train_loader)))
                    binary_acc = binary_accurate(
                        inputs=detectors_out.squeeze().detach().round().cpu(
                        ).numpy(),
                        targets=y_data.numpy().squeeze())

                    r2 = r_square(dec_out.detach().cpu().numpy(),
                                  x_data.numpy())
                    loss_log = {
                        'loss': loss_datas / (n_sample + 1),
                        'loss recons': l_decoders / (n_sample + 1),
                        'loss disents': l_disents / (n_sample + 1),
                        'loss detectors': l_detectors / (n_sample + 1),
                        'r2': r2
                    }
                    loss_df = pd.DataFrame(data=loss_log, index=['train'])
                    print(loss_df)
                    print('binary accurate', binary_acc)
                    print()

            if epoch == 0:
                print('Testing ONLY...')
            else:
                val_loss, f1_score, error_rate = validation(
                    options, sb_vae, val_loader)
                if val_loss < min_loss:
                    print(
                        'Validation loss decreased from {} to {} at epoch {}.'.
                        format(min_loss, val_loss, str(e)))
                    min_loss = val_loss
                    best_e = e
                    torch.save(
                        sb_vae.state_dict(), options.result_path +
                        sb_vae.name + '/fold_' + str(k) + '_cp_weight.h5')
                else:
                    print('Validation loss dose not decreased than {}.'.format(
                        min_loss))

        if not epoch == 0:
            print('Fold ' + str(k) +
                  'trained done, best validation results is: loss={}, e={}'.
                  format(min_loss, best_e))

        f1_test, er_test = test(options,
                                model=sb_vae,
                                test_loader=test_loader,
                                fold=k)
        f1_list.append(f1_test)
        er_list.append(er_test)
        fold_list.append(k)
        torch.save(
            sb_vae.state_dict(), options.result_path + sb_vae.name + '/fold_' +
            str(k) + '_last_weight.h5')

    f1_list.append(np.mean(f1_list))
    er_list.append(np.mean(er_list))
    fold_list.append('AVR')
    result_df = pd.DataFrame({'F1': f1_list, 'ER': er_list}, index=fold_list)
    print(result_df)
    result_df.to_csv(options.result_path + options.name + '_' +
                     str(options.num_events) + '/K_Folds_results.csv')