Exemple #1
0
def main(args):
    # load and preprocess dataset
    data = load_data(args)
    features = torch.FloatTensor(data.features)
    labels = torch.LongTensor(data.labels)
    train_mask = torch.ByteTensor(data.train_mask)
    val_mask = torch.ByteTensor(data.val_mask)
    test_mask = torch.ByteTensor(data.test_mask)
    num_feats = features.shape[1]
    n_classes = data.num_labels
    n_edges = data.graph.number_of_edges()
    print("""----Data statistics------'
      #Edges %d
      #Classes %d 
      #Train samples %d
      #Val samples %d
      #Test samples %d""" %
          (n_edges, n_classes,
           train_mask.sum().item(),
           val_mask.sum().item(),
           test_mask.sum().item()))

    if args.gpu < 0:
        cuda = False
    else:
        cuda = True
        torch.cuda.set_device(args.gpu)
        features = features.cuda()
        labels = labels.cuda()
        train_mask = train_mask.cuda()
        val_mask = val_mask.cuda()
        test_mask = test_mask.cuda()

    g = data.graph
    # add self loop
    g.remove_edges_from(g.selfloop_edges())
    g = DGLGraph(g)
    g.add_edges(g.nodes(), g.nodes())
    n_edges = g.number_of_edges()
    # create model
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]
    model = GAT(g,
                args.num_layers,
                num_feats,
                args.num_hidden,
                n_classes,
                heads,
                F.elu,
                args.in_drop,
                args.attn_drop,
                args.negative_slope,
                args.residual)
    print(model)
    stopper = EarlyStopping(patience=100)
    if cuda:
        model.cuda()
    loss_fcn = torch.nn.CrossEntropyLoss()

    # use optimizer
    optimizer = torch.optim.Adam(
        model.parameters(), lr=args.lr, weight_decay=args.weight_decay)

    # initialize graph
    dur = []
    for epoch in range(args.epochs):
        model.train()
        if epoch >= 3:
            t0 = time.time()
        # forward
        logits = model(features)
        loss = loss_fcn(logits[train_mask], labels[train_mask])

        optimizer.zero_grad()
        loss.backward()
        optimizer.step()

        if epoch >= 3:
            dur.append(time.time() - t0)

        train_acc = accuracy(logits[train_mask], labels[train_mask])

        if args.fastmode:
            val_acc = accuracy(logits[val_mask], labels[val_mask])
        else:
            val_acc = evaluate(model, features, labels, val_mask)
            if stopper.step(val_acc, model):
                break

        print("Epoch {:05d} | Time(s) {:.4f} | Loss {:.4f} | TrainAcc {:.4f} |"
              " ValAcc {:.4f} | ETputs(KTEPS) {:.2f}".
              format(epoch, np.mean(dur), loss.item(), train_acc,
                     val_acc, n_edges / np.mean(dur) / 1000))

    print()
    model.load_state_dict(torch.load('es_checkpoint.pt'))
    acc = evaluate(model, features, labels, test_mask)
    print("Test Accuracy {:.4f}".format(acc))
def main(args):
    # load and preprocess dataset
    g, graph_labels = load_graphs(
        '/yushi/dataset/Amazon2M/Amazon2M_dglgraph.bin')
    assert len(g) == 1
    g = g[0]
    data = g.ndata
    features = torch.FloatTensor(data['feat'])
    labels = torch.LongTensor(data['label'])
    if hasattr(torch, 'BoolTensor'):
        train_mask = data['train_mask'].bool()
        val_mask = data['val_mask'].bool()
        test_mask = data['test_mask'].bool()
    num_feats = features.shape[1]
    n_classes = 47
    n_edges = g.number_of_edges()
    print("""----Data statistics------'
      #Edges %d
      #Classes %d 
      #Train samples %d
      #Val samples %d
      #Test samples %d""" %
          (n_edges, n_classes, train_mask.int().sum().item(),
           val_mask.int().sum().item(), test_mask.int().sum().item()))

    if args.gpu < 0:
        cuda = False
    else:
        cuda = True
        torch.cuda.set_device(args.gpu)
        features = features.cuda()
        labels = labels.cuda()
        train_mask = train_mask.cuda()
        val_mask = val_mask.cuda()
        test_mask = test_mask.cuda()

    # add self loop
    g = add_self_loop(g)
    # g.remove_edges_from(nx.selfloop_edges(g))
    # g = DGLGraph(g)
    # g.add_edges(g.nodes(), g.nodes())
    n_edges = g.number_of_edges()
    # create model
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]
    model = GAT(g, args.num_layers, num_feats, args.num_hidden, n_classes,
                heads, F.elu, args.in_drop, args.attn_drop,
                args.negative_slope, args.residual)
    print(model)
    if args.early_stop:
        stopper = EarlyStopping(patience=100)
    if cuda:
        model.cuda()
    loss_fcn = torch.nn.CrossEntropyLoss()

    # use optimizer
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=args.lr,
                                 weight_decay=args.weight_decay)

    # initialize graph
    dur = []
    start = time.time()
    for epoch in range(args.epochs):
        model.train()
        if epoch >= 3:
            t0 = time.time()
        # forward
        logits = model(features)
        loss = loss_fcn(logits[train_mask], labels[train_mask])

        optimizer.zero_grad()
        loss.backward()
        optimizer.step()

        if epoch >= 3:
            dur.append(time.time() - t0)

        train_acc = accuracy(logits[train_mask], labels[train_mask])

        if args.fastmode:
            val_acc = accuracy(logits[val_mask], labels[val_mask])
        else:
            val_acc = evaluate(model, features, labels, val_mask)
            if args.early_stop:
                if stopper.step(val_acc, model):
                    break

        print("Epoch {:05d} | Time(s) {:.4f} | Loss {:.4f} | TrainAcc {:.4f} |"
              " ValAcc {:.4f} | ETputs(KTEPS) {:.2f}".format(
                  epoch, np.mean(dur), loss.item(), train_acc, val_acc,
                  n_edges / np.mean(dur) / 1000))

    print()
    if args.early_stop:
        model.load_state_dict(torch.load('es_checkpoint.pt'))
    acc = evaluate(model, features, labels, test_mask)
    print("Test Accuracy {:.4f}".format(acc))
    print(f"Time Consuming {np.sum(dur)}, Overall time {time.time() - start}")
Exemple #3
0
def main(args):
    # load and preprocess dataset
    if args.dataset == 'cora':
        data = CoraGraphDataset()
    elif args.dataset == 'citeseer':
        data = CiteseerGraphDataset()
    elif args.dataset == 'pubmed':
        data = PubmedGraphDataset()
    else:
        raise ValueError('Unknown dataset: {}'.format(args.dataset))

    g = data[0]
    if args.gpu < 0:
        cuda = False
    else:
        cuda = True
        g = g.int().to(args.gpu)

    features = g.ndata['feat']
    labels = g.ndata['label']
    train_mask = g.ndata['train_mask']
    val_mask = g.ndata['val_mask']
    test_mask = g.ndata['test_mask']
    num_feats = features.shape[1]
    n_classes = data.num_labels
    n_edges = data.graph.number_of_edges()
    print("""----Data statistics------'
      #Edges %d
      #Classes %d
      #Train samples %d
      #Val samples %d
      #Test samples %d""" %
          (n_edges, n_classes, train_mask.int().sum().item(),
           val_mask.int().sum().item(), test_mask.int().sum().item()))

    # add self loop
    g = dgl.remove_self_loop(g)
    g = dgl.add_self_loop(g)
    n_edges = g.number_of_edges()
    # create model
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]
    model = GAT(g, args.num_layers, num_feats, args.num_hidden, n_classes,
                heads, F.elu, args.in_drop, args.attn_drop,
                args.negative_slope, args.residual)
    print(model)
    if args.early_stop:
        stopper = EarlyStopping(patience=100)
    if cuda:
        model.cuda()
    loss_fcn = torch.nn.CrossEntropyLoss()

    # use optimizer
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=args.lr,
                                 weight_decay=args.weight_decay)

    # initialize graph
    dur = []
    for epoch in range(args.epochs):
        model.train()
        if epoch >= 3:
            t0 = time.time()
        # forward
        logits = model(features)
        loss = loss_fcn(logits[train_mask], labels[train_mask])

        optimizer.zero_grad()
        loss.backward()
        optimizer.step()

        if epoch >= 3:
            dur.append(time.time() - t0)

        train_acc = accuracy(logits[train_mask], labels[train_mask])

        if args.fastmode:
            val_acc = accuracy(logits[val_mask], labels[val_mask])
        else:
            val_acc = evaluate(model, features, labels, val_mask)
            if args.early_stop:
                if stopper.step(val_acc, model):
                    break

        print("Epoch {:05d} | Time(s) {:.4f} | Loss {:.4f} | TrainAcc {:.4f} |"
              " ValAcc {:.4f} | ETputs(KTEPS) {:.2f}".format(
                  epoch, np.mean(dur), loss.item(), train_acc, val_acc,
                  n_edges / np.mean(dur) / 1000))

    print()
    if args.early_stop:
        model.load_state_dict(torch.load('es_checkpoint.pt'))
    acc = evaluate(model, features, labels, test_mask)
    print("Test Accuracy {:.4f}".format(acc))
Exemple #4
0
def main(args):
    if args.gpu < 0:
        device = torch.device("cpu")
    else:
        device = torch.device("cuda:" + str(args.gpu))

    batch_size = args.batch_size
    cur_step = 0
    patience = args.patience
    best_score = -1
    best_loss = 10000
    # define loss function
    loss_fcn = torch.nn.BCEWithLogitsLoss()
    # create the dataset
    train_dataset = LegacyPPIDataset(mode='train')
    valid_dataset = LegacyPPIDataset(mode='valid')
    test_dataset = LegacyPPIDataset(mode='test')
    train_dataloader = DataLoader(train_dataset,
                                  batch_size=batch_size,
                                  collate_fn=collate)
    valid_dataloader = DataLoader(valid_dataset,
                                  batch_size=batch_size,
                                  collate_fn=collate)
    test_dataloader = DataLoader(test_dataset,
                                 batch_size=batch_size,
                                 collate_fn=collate)
    n_classes = train_dataset.labels.shape[1]
    num_feats = train_dataset.features.shape[1]
    g = train_dataset.graph
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]
    # define the model
    model = GAT(g, args.num_layers, num_feats, args.num_hidden, n_classes,
                heads, F.elu, args.in_drop, args.attn_drop, args.alpha,
                args.residual)
    # define the optimizer
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=args.lr,
                                 weight_decay=args.weight_decay)
    model = model.to(device)
    for epoch in range(args.epochs):
        model.train()
        loss_list = []
        for batch, data in enumerate(train_dataloader):
            subgraph, feats, labels = data
            feats = feats.to(device)
            labels = labels.to(device)
            model.g = subgraph
            for layer in model.gat_layers:
                layer.g = subgraph
            logits = model(feats.float())
            loss = loss_fcn(logits, labels.float())
            optimizer.zero_grad()
            loss.backward()
            optimizer.step()
            loss_list.append(loss.item())
        loss_data = np.array(loss_list).mean()
        print("Epoch {:05d} | Loss: {:.4f}".format(epoch + 1, loss_data))
        if epoch % 5 == 0:
            score_list = []
            val_loss_list = []
            for batch, valid_data in enumerate(valid_dataloader):
                subgraph, feats, labels = valid_data
                feats = feats.to(device)
                labels = labels.to(device)
                score, val_loss = evaluate(feats.float(), model, subgraph,
                                           labels.float(), loss_fcn)
                score_list.append(score)
                val_loss_list.append(val_loss)
            mean_score = np.array(score_list).mean()
            mean_val_loss = np.array(val_loss_list).mean()
            print("F1-Score: {:.4f} ".format(mean_score))
            # early stop
            if mean_score > best_score or best_loss > mean_val_loss:
                if mean_score > best_score and best_loss > mean_val_loss:
                    val_early_loss = mean_val_loss
                    val_early_score = mean_score
                best_score = np.max((mean_score, best_score))
                best_loss = np.min((best_loss, mean_val_loss))
                cur_step = 0
            else:
                cur_step += 1
                if cur_step == patience:
                    break
    test_score_list = []
    for batch, test_data in enumerate(test_dataloader):
        subgraph, feats, labels = test_data
        feats = feats.to(device)
        labels = labels.to(device)
        test_score_list.append(
            evaluate(feats, model, subgraph, labels.float(), loss_fcn)[0])
    print("F1-Score: {:.4f}".format(np.array(test_score_list).mean()))
def main(args):
    # load and preprocess dataset
    g, features, labels, n_classes, train_mask, val_mask, test_mask, lp_dict, ind_features, ind_labels = load_reg_data(args)
    num_feats = features.shape[1]
    n_edges = g.number_of_edges()

    print("""----Data statistics------'
      #use cuda: %d
      #Edges %d
      #Classes %d 
      #Train samples %d
      #Val samples %d
      #Test samples %d""" %
          (args.gpu, n_edges, n_classes,
           train_mask.int().sum().item(),
           val_mask.int().sum().item(),
           test_mask.int().sum().item()))
    
    if args.gpu < 0:
        cuda = False
    else:
        cuda = True
        torch.cuda.set_device(args.gpu)
        features = features.cuda()
        ind_features = ind_features.cuda()
        labels = labels.cuda()
        ind_labels = ind_labels.cuda()
        train_mask = train_mask.cuda()
        val_mask = val_mask.cuda()
        test_mask = test_mask.cuda()

    # create model
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]
    model = GAT(g,
                args.num_layers,
                num_feats,
                args.num_hidden,
                n_classes,
                heads,
                F.elu,
                args.in_drop,
                args.attn_drop,
                args.negative_slope,
                args.residual,
                args.bias)
    print(model)
    if args.early_stop:
        stopper = EarlyStopping(patience=100)
    if cuda:
        model.cuda()

    # use optimizer
    optimizer = torch.optim.Adam(
        model.parameters(), lr=args.lr, weight_decay=args.weight_decay)

    # initialize graph
    dur = []
    for epoch in range(args.epochs):
        model.train()
        if epoch >= 3:
            t0 = time.time()
        # forward
        pred = model(features)
        loss = loss_fcn(pred[train_mask], labels[train_mask])

        optimizer.zero_grad()
        loss.backward()
        optimizer.step()

        if epoch >= 3:
            dur.append(time.time() - t0)

        train_r2 = compute_r2(pred[train_mask], labels[train_mask])

        if args.fastmode:
            val_r2 = compute_r2(pred[val_mask], labels[val_mask])
        else:
            val_r2 = evaluate(model, features, labels, val_mask)
            if args.early_stop:
                if stopper.step(val_r2, model):
                    break

        if epoch > 3:
            print("Epoch {:05d} | Time(s) {:.4f} | Loss {:.4f} | TrainR2 {:.4f} |"
              " Val R2 {:.4f} | ETputs(KTEPS) {:.2f}".
              format(epoch, np.mean(dur), loss.item(), train_r2,
                     val_r2, n_edges / np.mean(dur) / 1000))

    print()
    if args.early_stop:
        model.load_state_dict(torch.load('es_checkpoint.pt'))
    evaluate_test(model, features, labels, test_mask, lp_dict, meta="2012")
    evaluate_test(model, ind_features, ind_labels, test_mask, lp_dict, meta="2016")
Exemple #6
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def main(args):
    # load and preprocess dataset
    if args.dataset == 'reddit':
        data = RedditDataset()
    elif args.dataset in ['photo', "computer"]:
        data = MsDataset(args)
    else:
        data = load_data(args)

    features = torch.FloatTensor(data.features)
    labels = torch.LongTensor(data.labels)
    train_mask = torch.ByteTensor(data.train_mask)
    val_mask = torch.ByteTensor(data.val_mask)
    test_mask = torch.ByteTensor(data.test_mask)
    num_feats = features.shape[1]
    n_classes = data.num_labels
    n_edges = data.graph.number_of_edges()
    current_time = time.strftime('%d_%H:%M:%S', localtime())
    writer = SummaryWriter(log_dir='runs/' + current_time + '_' + args.sess, flush_secs=30)

    print("""----Data statistics------'
      #Edges %d
      #Classes %d
      #Train samples %d
      #Val samples %d
      #Test samples %d""" %
          (n_edges, n_classes,
           train_mask.sum().item(),
           val_mask.sum().item(),
           test_mask.sum().item()))

    if args.gpu < 0:
        cuda = False
    else:
        cuda = True
        torch.cuda.set_device(args.gpu)
        features = features.cuda()
        labels = labels.cuda()
        train_mask = train_mask.bool().cuda()
        val_mask = val_mask.bool().cuda()
        test_mask = test_mask.bool().cuda()


    g = data.graph
    # add self loop
    if args.dataset != 'reddit':
        g.remove_edges_from(nx.selfloop_edges(g))
        g = DGLGraph(g)
    g.add_edges(g.nodes(), g.nodes())
    n_edges = g.number_of_edges()
    print('edge number %d'%(n_edges))
    # create model
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]

    model = GAT(g,
                args.num_layers,
                num_feats,
                args.num_hidden,
                n_classes,
                heads,
                F.elu,
                args.idrop,
                args.adrop,
                args.alpha,
                args.bias,
                args.residual, args.l0)
    print(model)
    if args.early_stop:
        stopper = EarlyStopping(patience=150)
    if cuda:
        model.cuda()
    loss_fcn = torch.nn.CrossEntropyLoss()

    # use optimizer
    optimizer = torch.optim.Adam(model.parameters(), lr=args.lr, weight_decay=args.weight_decay)

    dur = []
    time_used = 0

    for epoch in range(args.epochs):
        model.train()
        if epoch >= 3:
            t0 = time.time()

        # forward
        logits = model(features)
        loss = loss_fcn(logits[train_mask], labels[train_mask])

        loss_l0 = args.loss_l0*( model.gat_layers[0].loss)
        optimizer.zero_grad()
        (loss + loss_l0).backward()
        optimizer.step()

        if epoch >= 3:
            dur.append(time.time() - t0)

        train_acc = accuracy(logits[train_mask], labels[train_mask])
        writer.add_scalar('edge_num/0', model.gat_layers[0].num, epoch)

        if args.fastmode:
            val_acc, loss = accuracy(logits[val_mask], labels[val_mask], loss_fcn)
        else:
            val_acc,_ = evaluate(model, features, labels, val_mask, loss_fcn)
            if args.early_stop:
                if stopper.step(val_acc, model):   
                    break

        print("Epoch {:05d} | Time(s) {:.4f} | Loss {:.4f} | TrainAcc {:.4f} |"
              " ValAcc {:.4f} | ETputs(KTEPS) {:.2f}".format(epoch, np.mean(dur), loss.item(), train_acc,
                     val_acc, n_edges / np.mean(dur) / 1000))
        writer.add_scalar('loss', loss.item(), epoch)
        writer.add_scalar('f1/train_f1_mic', train_acc, epoch)
        writer.add_scalar('f1/test_f1_mic', val_acc, epoch)
        writer.add_scalar('time/time', time_used, epoch)

    writer.close()
    if args.early_stop:
        model.load_state_dict(torch.load('es_checkpoint.pt'))
    acc, _ = evaluate(model,features, labels, test_mask, loss_fcn)
    print("Test Accuracy {:.4f}".format(acc))
Exemple #7
0
def train(args):

    data_dir = args.data_dir
    edge_dir = args.edge_dir
    gpu = args.gpu
    node_f_dim = 23
    edge_f_dim = 19
    batch_size = args.batch_size
    num_classes = args.num_classes
    num_hidden = args.num_hidden
    num_heads = args.num_heads
    num_out_heads = args.num_out_heads
    num_layers = args.num_layers
    residual = args.residual
    in_drop = args.in_drop
    attn_drop = args.attn_drop
    optim_type = args.optim_type
    momentum = args.momentum
    lr = args.lr
    patience = args.patience
    weight_decay = args.weight_decay
    alpha = args.alpha
    epochs = args.epochs
    smooth_eps = args.smooth_eps
    temperature = args.temperature
    edge_feature_attn = args.edge_feature_attn

    if gpu >= 0:
        device = th.device("cuda")
    else:
        device = th.device("cpu")

    trainset = StrokeDataset(data_dir, edge_dir, "train", num_classes)
    validset = StrokeDataset(data_dir, edge_dir, "valid", num_classes)
    testset = StrokeDataset(data_dir, edge_dir, "test", num_classes)

    train_loader = DataLoader(trainset,
                              batch_size=batch_size,
                              shuffle=True,
                              collate_fn=collate(device))

    valid_loader = DataLoader(validset,
                              batch_size=64,
                              shuffle=False,
                              collate_fn=collate(device))

    test_loader = DataLoader(testset,
                             batch_size=64,
                             shuffle=False,
                             collate_fn=collate(device))

    heads = ([num_heads] * num_layers) + [num_out_heads]

    model = GAT(num_layers,
                node_f_dim, edge_f_dim, num_hidden, num_classes, heads,
                nn.LeakyReLU(alpha), in_drop, attn_drop, alpha, temperature,
                edge_feature_attn, residual).to(device)
    # loss_func = nn.CrossEntropyLoss()
    loss_func = CrossEntropyLoss(smooth_eps=smooth_eps)
    if optim_type == 'adam':
        optimizer = optim.Adam(model.parameters(), lr=lr)
    elif optim_type == 'sgd':
        optimizer = optim.SGD(model.parameters(), lr=lr, momentum=momentum)

    scheduler = optim.lr_scheduler.ReduceLROnPlateau(optimizer,
                                                     'max',
                                                     patience=patience)

    epoch_losses = []
    best_valid_acc = 0
    best_test_acc = 0
    best_round = 0

    start = time.time()
    for epoch in range(epochs):
        epoch_loss = 0
        epoch_start = time.time()
        for it, (fg, lg) in enumerate(train_loader):
            logits = model(fg)
            labels = lg.ndata['y']
            loss = loss_func(logits, labels)
            optimizer.zero_grad()
            loss.backward()
            optimizer.step()
            epoch_loss += loss.detach().item()

        epoch_loss /= (it + 1)
        epoch_duration = time.time() - epoch_start
        print('Epoch: {:3d}, loss: {:4f}, speed: {:.2f}doc/s'.format(
            epoch, epoch_loss,
            len(trainset) / epoch_duration))
        epoch_losses.append(epoch_loss)

        train_acc, _ = evaluate(model, train_loader, num_classes, "train")
        valid_acc, _ = evaluate(model, valid_loader, num_classes, "valid")
        if valid_acc > best_valid_acc:
            best_valid_acc = valid_acc
            test_acc, test_conf_mat = evaluate(model, test_loader, num_classes,
                                               "test")
            best_conf_mat = test_conf_mat
            best_round = epoch

        scheduler.step(valid_acc)
        cur_learning_rate = optimizer.param_groups[0]['lr']
        print('Learning rate: {:10f}'.format(cur_learning_rate))
        epoch_duration = time.time() - epoch_start
        if cur_learning_rate <= 1e-6:
            break

    print("Best round: %d" % best_round)
    print_result(best_conf_mat)
    duration = time.time() - start
    print("Time cost: {:.4f}s".format(duration))

    return test_acc
Exemple #8
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def train(args):

    # load and preprocess dataset
    #data = load_data(args)
    #data = CoraFull()
    #data = Coauthor('cs')
    #FIRST, CHECK DATASET
    path = './dataset/' + str(args.dataset) + '/'
    '''
    edges = np.loadtxt(path + 'edges.txt')
    edges = edges.astype(int)

    features = np.loadtxt(path + 'features.txt')

    train_mask = np.loadtxt(path + 'train_mask.txt')
    train_mask = train_mask.astype(int)

    labels = np.loadtxt(path + 'labels.txt')
    labels = labels.astype(int)
    '''
    edges = np.load(path + 'edges.npy')
    features = np.load(path + 'features.npy')
    train_mask = np.load(path + 'train_mask.npy')
    labels = np.load(path + 'labels.npy')

    num_edges = edges.shape[0]
    num_nodes = features.shape[0]
    num_feats = features.shape[1]
    n_classes = max(labels) - min(labels) + 1

    assert train_mask.shape[0] == num_nodes

    print('dataset {}'.format(args.dataset))
    print('# of edges : {}'.format(num_edges))
    print('# of nodes : {}'.format(num_nodes))
    print('# of features : {}'.format(num_feats))

    features = torch.FloatTensor(features)
    labels = torch.LongTensor(labels)

    if hasattr(torch, 'BoolTensor'):
        train_mask = torch.BoolTensor(train_mask)

    else:
        train_mask = torch.ByteTensor(train_mask)

    if args.gpu < 0:
        cuda = False
    else:
        cuda = True
        torch.cuda.set_device(args.gpu)
        features = features.cuda()
        labels = labels.cuda()
        train_mask = train_mask.cuda()

    u = edges[:, 0]
    v = edges[:, 1]

    #initialize a DGL graph
    g = DGLGraph()
    g.add_nodes(num_nodes)
    g.add_edges(u, v)

    # add self loop
    if isinstance(g, nx.classes.digraph.DiGraph):
        g.remove_edges_from(nx.selfloop_edges(g))
        g = DGLGraph(g)
        g.add_edges(g.nodes(), g.nodes())
    elif isinstance(g, DGLGraph):
        g = transform.add_self_loop(g)

    n_edges = g.number_of_edges()
    # create model
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]
    model = GAT(g, args.num_layers, num_feats, args.num_hidden, n_classes,
                heads, F.elu, args.in_drop, args.attn_drop,
                args.negative_slope, args.residual)
    if args.early_stop:
        stopper = EarlyStopping(patience=100)
    if cuda:
        model.cuda()
    loss_fcn = torch.nn.CrossEntropyLoss()

    # use optimizer
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=args.lr,
                                 weight_decay=args.weight_decay)

    # initialize graph
    dur = []
    record_time = 0
    avg_run_time = 0
    Used_memory = 0

    for epoch in range(args.num_epochs):
        #print('epoch = ', epoch)
        #print('mem0 = {}'.format(mem0))
        torch.cuda.synchronize()
        tf = time.time()
        model.train()
        if epoch >= 3:
            t0 = time.time()
        # forward
        logits = model(features)
        loss = loss_fcn(logits[train_mask], labels[train_mask])
        now_mem = torch.cuda.max_memory_allocated(0)
        print('now_mem : ', now_mem)
        Used_memory = max(now_mem, Used_memory)
        tf1 = time.time()

        optimizer.zero_grad()
        torch.cuda.synchronize()
        t1 = time.time()
        loss.backward()
        torch.cuda.synchronize()
        optimizer.step()
        t2 = time.time()
        run_time_this_epoch = t2 - tf

        if epoch >= 3:
            dur.append(time.time() - t0)
            record_time += 1

            avg_run_time += run_time_this_epoch

        train_acc = accuracy(logits[train_mask], labels[train_mask])

        #log for each step
        print(
            'Epoch {:05d} | Time(s) {:.4f} | train_acc {:.6f} | Used_Memory {:.6f} mb'
            .format(epoch, run_time_this_epoch, train_acc,
                    (now_mem * 1.0 / (1024**2))))
        '''
        if args.fastmode:
            val_acc = accuracy(logits[val_mask], labels[val_mask])
        else:
            val_acc = evaluate(model, features, labels, val_mask)
            if args.early_stop:
                if stopper.step(val_acc, model):   
                    break

        print("Epoch {:05d} | Time(s) {:.4f} | Loss {:.4f} | TrainAcc {:.4f} |"
              " ValAcc /{:.4f} | ETputs(KTEPS) {:.2f}".
              format(epoch, np.mean(dur), loss.item(), train_acc,
                     val_acc, n_edges / np.mean(dur) / 1000))
        
        '''

    if args.early_stop:
        model.load_state_dict(torch.load('es_checkpoint.pt'))

    #OUTPUT we need
    avg_run_time = avg_run_time * 1. / record_time
    Used_memory /= (1024**3)
    print('^^^{:6f}^^^{:6f}'.format(Used_memory, avg_run_time))
Exemple #9
0
def main(args):
    if args.gpu < 0:
        device = torch.device("cpu")
    else:
        device = torch.device("cuda:" + str(args.gpu))
    writer = SummaryWriter()
    batch_size = args.batch_size
    # cur_step = 0
    # patience = args.patience
    # best_score = -1
    # best_loss = 10000
    # define loss function
    loss_fcn = torch.nn.BCEWithLogitsLoss()
    # create the dataset
    train_dataset = LegacyPPIDataset(mode='train')
    valid_dataset = LegacyPPIDataset(mode='valid')
    test_dataset = LegacyPPIDataset(mode='test')
    train_dataloader = DataLoader(train_dataset,
                                  batch_size=batch_size,
                                  collate_fn=collate)
    valid_dataloader = DataLoader(valid_dataset,
                                  batch_size=batch_size,
                                  collate_fn=collate)
    test_dataloader = DataLoader(test_dataset,
                                 batch_size=batch_size,
                                 collate_fn=collate)
    n_classes = train_dataset.labels.shape[1]
    num_feats = train_dataset.features.shape[1]
    g = train_dataset.graph
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]

    # define the model
    model = GAT(g, args.num_layers, num_feats, args.num_hidden, n_classes,
                heads, F.elu, args.in_drop, args.attn_drop, args.alpha,
                args.bias, args.residual, args.l0)
    print(model)
    # define the optimizer
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=args.lr,
                                 weight_decay=args.weight_decay)
    model = model.to(device)
    best_epoch = 0
    dur = []
    acc = []
    for epoch in range(args.epochs):
        num = 0
        model.train()
        if epoch % 5 == 0:
            t0 = time.time()
        loss_list = []
        for batch, data in enumerate(train_dataloader):
            subgraph, feats, labels = data
            feats = feats.to(device)
            labels = labels.to(device)
            model.g = subgraph
            for layer in model.gat_layers:
                layer.g = subgraph
            logits = model(feats.float())
            loss = loss_fcn(logits, labels.float())
            loss_l0 = args.loss_l0 * (model.gat_layers[0].loss)
            optimizer.zero_grad()
            (loss + loss_l0).backward()
            optimizer.step()
            loss_list.append(loss.item())
            num += model.gat_layers[0].num

        if epoch % 5 == 0:
            dur.append(time.time() - t0)

        loss_data = np.array(loss_list).mean()
        print("Epoch {:05d} | Loss: {:.4f}".format(epoch + 1, loss_data))
        writer.add_scalar('edge_num/0', num, epoch)

        if epoch % 5 == 0:
            score_list = []
            val_loss_list = []
            for batch, valid_data in enumerate(valid_dataloader):
                subgraph, feats, labels = valid_data
                feats = feats.to(device)
                labels = labels.to(device)
                score, val_loss = evaluate(feats.float(), model, subgraph,
                                           labels.float(), loss_fcn)
                score_list.append(score)
                val_loss_list.append(val_loss)

            mean_score = np.array(score_list).mean()
            mean_val_loss = np.array(val_loss_list).mean()
            print("val F1-Score: {:.4f} ".format(mean_score))
            writer.add_scalar('loss', mean_val_loss, epoch)
            writer.add_scalar('f1/test_f1_mic', mean_score, epoch)

            acc.append(mean_score)

            # # early stop
            # if mean_score > best_score or best_loss > mean_val_loss:
            #     if mean_score > best_score and best_loss > mean_val_loss:
            #         val_early_loss = mean_val_loss
            #         val_early_score = mean_score
            #         torch.save(model.state_dict(), '{}.pkl'.format('save_rand'))
            #         best_epoch = epoch
            #
            #     best_score = np.max((mean_score, best_score))
            #     best_loss = np.min((best_loss, mean_val_loss))
            #     cur_step = 0
            # else:
            #     cur_step += 1
            #     if cur_step == patience:
            #         break

    test_score_list = []
    for batch, test_data in enumerate(test_dataloader):
        subgraph, feats, labels = test_data
        feats = feats.to(device)
        labels = labels.to(device)
        test_score_list.append(
            evaluate(feats, model, subgraph, labels.float(), loss_fcn)[0])
    acc = np.array(test_score_list).mean()
    print("test F1-Score: {:.4f}".format(acc))
    writer.close()
Exemple #10
0
def main(args):
    if args.gpu < 0:
        device = torch.device("cpu")
    else:
        device = torch.device("cuda:" + str(args.gpu))

    batch_size = args.batch_size
    cur_step = 0
    patience = args.patience
    best_score = -1
    best_loss = 10000
    # define loss function
    loss_fcn = torch.nn.BCEWithLogitsLoss()
    # create the dataset
    # train_dataset = amino_acid_dataset.LegacyAcidDataset(mode='train')
    # valid_dataset = amino_acid_dataset.LegacyAcidDataset(mode='valid')
    test_dataset = amino_acid_dataset_test.LegacyAcidDataset(mode='test')
    # train_dataloader = DataLoader(train_dataset, batch_size=batch_size, collate_fn=collate)
    # valid_dataloader = DataLoader(valid_dataset, batch_size=batch_size, collate_fn=collate)
    test_dataloader = DataLoader(test_dataset,
                                 batch_size=batch_size,
                                 collate_fn=collate)
    n_classes = test_dataset.labels.shape[1]
    num_feats = test_dataset.features.shape[1]
    g = test_dataset.graph
    heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]
    # define the model
    model = GAT(g, args.num_layers, num_feats, args.num_hidden, n_classes,
                heads, F.elu, args.in_drop, args.attn_drop, args.alpha,
                args.residual)
    # define the optimizer
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=args.lr,
                                 weight_decay=args.weight_decay)
    model = model.to(device)
    # for epoch in range(args.epochs):
    #     model.train()
    #     loss_list = []
    #     for batch, data in enumerate(train_dataloader):
    #         subgraph, feats, labels = data
    #         # print(feats)
    #         feats = feats.to(device)
    #         labels = labels.to(device)
    #         model.g = subgraph
    #         for layer in model.gat_layers:
    #             layer.g = subgraph
    #         logits = model(feats.float())
    #         # a = feats.float()
    #         # print(a)
    #         loss = loss_fcn(logits, labels.float())
    #         optimizer.zero_grad()
    #         loss.backward()
    #         optimizer.step()
    #         loss_list.append(loss.item())
    #     loss_data = np.array(loss_list).mean()
    #     print("Epoch {:05d} | Loss: {:.4f}".format(epoch + 1, loss_data))
    #     if epoch % 5 == 0:
    #         score_list = []
    #         val_loss_list = []
    #         for batch, valid_data in enumerate(valid_dataloader):
    #             subgraph, feats, labels = valid_data
    #             feats = feats.to(device)
    #             labels = labels.to(device)
    #             score, val_loss = evaluate(feats.float(), model, subgraph, labels.float(), loss_fcn)
    #             score_list.append(score)
    #             val_loss_list.append(val_loss)
    #         mean_score = np.array(score_list).mean()
    #         mean_val_loss = np.array(val_loss_list).mean()
    #         print("F1-Score: {:.4f} ".format(mean_score))
    #         # early stop
    #         if mean_score > best_score or best_loss > mean_val_loss:
    #             if mean_score > best_score and best_loss > mean_val_loss:
    #                 val_early_loss = mean_val_loss
    #                 val_early_score = mean_score
    #             best_score = np.max((mean_score, best_score))
    #             best_loss = np.min((best_loss, mean_val_loss))
    #             cur_step = 0
    #         else:
    #             cur_step += 1
    #             if cur_step == patience:
    #                 break

    # load model
    model.load_state_dict(torch.load("/home/a503tongxueheng/DGL_GAT/ppi.pt"))
    model.eval()

    test_score_list = []
    for batch, test_data in enumerate(test_dataloader):
        subgraph, feats, labels = test_data
        feats = feats.to(device)
        labels = labels.to(device)
        test_score_list.append(
            evaluate(feats, model, subgraph, labels.float(), loss_fcn)[0])
    print("F1-Score: {:.4f}".format(np.array(test_score_list).mean()))
Exemple #11
0
def main(training_file,
         dev_file,
         test_file,
         graph_type=None,
         net=None,
         epochs=None,
         patience=None,
         grid_width=None,
         image_width=None,
         batch_size=None,
         num_hidden=None,
         heads=None,
         gnn_layers=None,
         cnn_layers=None,
         nonlinearity=None,
         residual=None,
         lr=None,
         weight_decay=None,
         in_drop=None,
         alpha=None,
         attn_drop=None,
         cuda=None,
         fw='dgl',
         index=None,
         previous_model=None):

    global stop_training

    if nonlinearity == 'relu':
        nonlinearity = F.relu
    elif nonlinearity == 'elu':
        nonlinearity = F.elu

    loss_fcn = torch.nn.MSELoss()  #(reduction='sum')

    print('=========================')
    print('HEADS', heads)
    #print('OUT_HEADS', num_out_heads)
    print('GNN LAYERS', gnn_layers)
    print('CNN LAYERS', cnn_layers)
    print('HIDDEN', num_hidden)
    print('RESIDUAL', residual)
    print('inDROP', in_drop)
    print('atDROP', attn_drop)
    print('LR', lr)
    print('DECAY', weight_decay)
    print('ALPHA', alpha)
    print('BATCH', batch_size)
    print('GRAPH_ALT', graph_type)
    print('ARCHITECTURE', net)
    print('=========================')

    # create the dataset
    time_dataset_a = time.time()
    print('Loading training set...')
    train_dataset = socnavImg.SocNavDataset(training_file, mode='train')
    print('Loading dev set...')
    valid_dataset = socnavImg.SocNavDataset(dev_file, mode='valid')
    print('Loading test set...')
    test_dataset = socnavImg.SocNavDataset(test_file, mode='test')
    print('Done loading files')
    train_dataloader = DataLoader(train_dataset,
                                  batch_size=batch_size,
                                  shuffle=True,
                                  collate_fn=collate)
    valid_dataloader = DataLoader(valid_dataset,
                                  batch_size=batch_size,
                                  shuffle=True,
                                  collate_fn=collate)
    test_dataloader = DataLoader(test_dataset,
                                 batch_size=batch_size,
                                 shuffle=True,
                                 collate_fn=collate)
    time_dataset_b = time.time()
    for _ in range(5):
        print(f'TIME {time_dataset_b-time_dataset_a}')

    num_rels = len(socnavImg.get_relations())
    cur_step = 0
    best_loss = -1
    n_classes = num_hidden[-1]
    print('Number of classes:  {}'.format(n_classes))
    num_feats = train_dataset.graphs[0].ndata['h'].shape[1]
    print('Number of features: {}'.format(num_feats))
    g = dgl.batch(train_dataset.graphs)
    #heads = ([num_heads] * gnn_layers) + [num_out_heads]
    # define the model
    if fw == 'dgl':
        if net in ['gat']:
            model = GAT(
                g,  # graph
                gnn_layers,  # gnn_layers
                num_feats,  # in_dimension
                num_hidden,  # num_hidden
                1,
                grid_width,  # grid_width
                heads,  # head
                nonlinearity,  # activation
                in_drop,  # feat_drop
                attn_drop,  # attn_drop
                alpha,  # negative_slope
                residual,  # residual
                cnn_layers  # cnn_layers
            )
        elif net in ['gatmc']:
            model = GATMC(
                g,  # graph
                gnn_layers,  # gnn_layers
                num_feats,  # in_dimension
                num_hidden,  # num_hidden
                grid_width,  # grid_width
                image_width,  # image_width
                heads,  # head
                nonlinearity,  # activation
                in_drop,  # feat_drop
                attn_drop,  # attn_drop
                alpha,  # negative_slope
                residual,  # residual
                cnn_layers  # cnn_layers
            )
        elif net in ['rgcn']:
            print(
                f'CREATING RGCN(GRAPH, gnn_layers:{gnn_layers}, cnn_layers:{cnn_layers}, num_feats:{num_feats}, num_hidden:{num_hidden}, grid_with:{grid_width}, image_width:{image_width}, num_rels:{num_rels}, non-linearity:{nonlinearity}, drop:{in_drop}, num_bases:{num_rels})'
            )
            model = RGCN(g,
                         gnn_layers,
                         cnn_layers,
                         num_feats,
                         num_hidden,
                         grid_width,
                         image_width,
                         num_rels,
                         nonlinearity,
                         in_drop,
                         num_bases=num_rels)
        else:
            print('No valid GNN model specified')
            sys.exit(0)

    # define the optimizer
    optimizer = torch.optim.Adam(model.parameters(),
                                 lr=lr,
                                 weight_decay=weight_decay)
    # for name, param in model.named_parameters():
    # if param.requires_grad:
    # print(name, param.data.shape)
    if previous_model is not None:
        model.load_state_dict(torch.load(previous_model, map_location=device))

    model = model.to(device)

    for epoch in range(epochs):
        if stop_training:
            print("Stopping training. Please wait.")
            break
        model.train()
        loss_list = []
        for batch, data in enumerate(train_dataloader):
            subgraph, labels = data
            subgraph.set_n_initializer(dgl.init.zero_initializer)
            subgraph.set_e_initializer(dgl.init.zero_initializer)
            feats = subgraph.ndata['h'].to(device)
            labels = labels.to(device)
            if fw == 'dgl':
                model.g = subgraph
                for layer in model.layers:
                    layer.g = subgraph
                if net in ['rgcn']:
                    logits = model(
                        feats.float(),
                        subgraph.edata['rel_type'].squeeze().to(device))
                else:
                    logits = model(feats.float())
            else:
                print('Only DGL is supported at the moment here.')
                sys.exit(1)
                if net in ['pgat', 'pgcn']:
                    data = Data(x=feats.float(),
                                edge_index=torch.stack(
                                    subgraph.edges()).to(device))
                else:
                    data = Data(
                        x=feats.float(),
                        edge_index=torch.stack(subgraph.edges()).to(device),
                        edge_type=subgraph.edata['rel_type'].squeeze().to(
                            device))
                logits = model(data, subgraph)
            a = logits  ## [getMaskForBatch(subgraph)].flatten()
            # print('AA', a.shape)
            # print(a)
            a = a.flatten()
            #print('labels', labels.shape)
            b = labels.float()
            # print('b')
            # print(b)
            b = b.flatten()
            # print('BB', b.shape)
            ad = a.to(device)
            bd = b.to(device)
            # print(ad.shape, ad.dtype, bd.shape, bd.dtype)
            loss = loss_fcn(ad, bd)
            optimizer.zero_grad()
            a = list(model.parameters())[0].clone()
            loss.backward()
            optimizer.step()
            b = list(model.parameters())[0].clone()
            not_learning = torch.equal(a.data, b.data)
            if not_learning:
                import sys
                print('Not learning')
                # sys.exit(1)
            else:
                pass
                # print('Diff: ', (a.data-b.data).sum())
            # print(loss.item())
            loss_list.append(loss.item())
        loss_data = np.array(loss_list).mean()
        print('Loss: {}'.format(loss_data))
        if epoch % 5 == 0:
            if epoch % 5 == 0:
                print("Epoch {:05d} | Loss: {:.4f} | Patience: {} | ".format(
                    epoch, loss_data, cur_step),
                      end='')
            score_list = []
            val_loss_list = []
            for batch, valid_data in enumerate(valid_dataloader):
                subgraph, labels = valid_data
                subgraph.set_n_initializer(dgl.init.zero_initializer)
                subgraph.set_e_initializer(dgl.init.zero_initializer)
                feats = subgraph.ndata['h'].to(device)
                labels = labels.to(device)
                score, val_loss = evaluate(feats.float(), model, subgraph,
                                           labels.float(), loss_fcn, fw, net)
                score_list.append(score)
                val_loss_list.append(val_loss)
            mean_score = np.array(score_list).mean()
            mean_val_loss = np.array(val_loss_list).mean()
            if epoch % 5 == 0:
                print("Score: {:.4f} MEAN: {:.4f} BEST: {:.4f}".format(
                    mean_score, mean_val_loss, best_loss))
            # early stop
            if best_loss > mean_val_loss or best_loss < 0:
                print('Saving...')
                directory = str(index).zfill(5)
                os.system('mkdir ' + directory)
                best_loss = mean_val_loss
                # Save the model
                torch.save(model.state_dict(), directory + '/SNGNN2D.tch')
                params = {
                    'loss': best_loss,
                    'net': net,  #str(type(net)),
                    'fw': fw,
                    'gnn_layers': gnn_layers,
                    'cnn_layers': cnn_layers,
                    'num_feats': num_feats,
                    'num_hidden': num_hidden,
                    'graph_type': graph_type,
                    'n_classes': n_classes,
                    'heads': heads,
                    'grid_width': grid_width,
                    'image_width': image_width,
                    'F': F.relu,
                    'in_drop': in_drop,
                    'attn_drop': attn_drop,
                    'alpha': alpha,
                    'residual': residual,
                    'num_rels': num_rels
                }
                pickle.dump(params, open(directory + '/SNGNN2D.prms', 'wb'))
                cur_step = 0
            else:
                # print(best_loss, mean_val_loss)
                cur_step += 1
                if cur_step >= patience:
                    break
    test_score_list = []
    for batch, test_data in enumerate(test_dataloader):
        subgraph, labels = test_data
        subgraph.set_n_initializer(dgl.init.zero_initializer)
        subgraph.set_e_initializer(dgl.init.zero_initializer)
        feats = subgraph.ndata['h'].to(device)
        labels = labels.to(device)
        test_score_list.append(
            evaluate(feats, model, subgraph, labels.float(), loss_fcn, fw,
                     net)[1])
    print("MSE for the test set {}".format(np.array(test_score_list).mean()))
    model.eval()
    return best_loss
Exemple #12
0
def main(args):
    if args.gpu<0:
        device = torch.device("cpu")
    else:
        device = torch.device("cuda:" + str(args.gpu))

    # batch_size = args.batch_size
    # cur_step = 0
    # patience = args.patience
    # best_score = -1
    # best_loss = 10000
    # # define loss function
    # loss_fcn = torch.nn.BCEWithLogitsLoss()

    # create the dataset
    train_dataset = LegacyPPIDataset(mode='train')
    valid_dataset = LegacyPPIDataset(mode='valid')
    test_dataset = LegacyPPIDataset(mode='test')

    # nxg = valid_dataset.graph.to_networkx().to_undirected()
    # comps = [comp for comp in nx.connected_components(nxg) if len(comp)>10]
    # print(len(comps))
    # exit()

    cross_valid_list = []
    for i in range(5):
        cross_valid_list.append(list(range(4*i, 4*(i + 1))))
    cross_train_dataset = copy.copy(train_dataset)

    valid_precision = []
    valid_recall = []
    valid_scores = []
    test_precision = []
    test_recall = []
    test_scores = []
    for ind, valid_list in enumerate(cross_valid_list):
        batch_size = args.batch_size
        cur_step = 0
        patience = args.patience
        best_score = -1
        best_loss = 10000
        # define loss function
        loss_fcn = torch.nn.BCEWithLogitsLoss()

        train_list = [ind for ind in range(20) if ind not in valid_list]
        print('Train List: {}'.format(train_list))
        print('Valid List: {}'.format(valid_list))
        modify(train_dataset, cross_train_dataset, train_list, mode='train', offset=0)
        modify(valid_dataset, cross_train_dataset, valid_list, mode='valid', offset=16)

        train_dataloader = DataLoader(train_dataset, batch_size=batch_size, collate_fn=collate)
        valid_dataloader = DataLoader(valid_dataset, batch_size=batch_size, collate_fn=collate)
        test_dataloader = DataLoader(test_dataset, batch_size=batch_size, collate_fn=collate)
        n_classes = train_dataset.labels.shape[1]
        num_feats = train_dataset.features.shape[1]
        g = train_dataset.graph
        heads = ([args.num_heads] * args.num_layers) + [args.num_out_heads]
        # define the model
        model = GAT(g,
                    args.num_layers,
                    num_feats,
                    args.num_hidden,
                    n_classes,
                    heads,
                    F.elu,
                    args.in_drop,
                    args.attn_drop,
                    args.alpha,
                    args.residual)
        # define the optimizer
        optimizer = torch.optim.Adam(model.parameters(), lr=args.lr, weight_decay=args.weight_decay)
        model = model.to(device)

        for epoch in range(args.epochs):
            model.train()
            loss_list = []
            for batch, data in enumerate(train_dataloader):
                subgraph, feats, labels = data
                feats = feats.to(device)
                labels = labels.to(device)
                model.g = subgraph
                for layer in model.gat_layers:
                    layer.g = subgraph
                logits = model(feats.float())
                loss = loss_fcn(logits, labels.float())
                optimizer.zero_grad()
                loss.backward()
                optimizer.step()
                loss_list.append(loss.item())
            loss_data = np.array(loss_list).mean()
            print("Epoch {:05d} | Loss: {:.4f}".format(epoch + 1, loss_data), end=' ')
            if epoch % 1 == 0:
                score_list = []
                val_loss_list = []
                for batch, valid_data in enumerate(valid_dataloader):
                    subgraph, feats, labels = valid_data
                    feats = feats.to(device)
                    labels = labels.to(device)
                    prec, recall, score, val_loss = evaluate(feats.float(), model, subgraph, labels.float(), loss_fcn)
                    score_list.append([prec, recall, score])
                    val_loss_list.append(val_loss)
                mean_score = np.array(score_list).mean(axis=0)
                mean_val_loss = np.array(val_loss_list).mean()
                print("| Valid Precision: {:.4f} | Valid Recall: {:.4f} |  Valid F1-Score: {:.4f} ".format(mean_score[0], mean_score[1], mean_score[2]), end = ' ')

                test_score_list = []
                for batch, test_data in enumerate(test_dataloader):
                    subgraph, feats, labels = test_data
                    feats = feats.to(device)
                    labels = labels.to(device)
                    test_prec, test_rec, test_score, _ = evaluate(feats, model, subgraph, labels.float(), loss_fcn)
                    test_score_list.append([test_prec, test_rec, test_score])
                mean_test_score = np.array(test_score_list).mean(axis=0)
                print("| Test Precision: {:.4f} | Test Recall: {:.4f} | Test F1-Score: {:.4f}".format(mean_test_score[0], mean_test_score[1], mean_test_score[2]))

                if epoch == args.epochs - 1:
                    valid_precision.append(round(mean_score[0], 4))
                    valid_recall.append(round(mean_score[1], 4))
                    valid_scores.append(round(mean_score[2], 4))
                    test_precision.append(round(mean_test_score[0], 4))
                    test_recall.append(round(mean_test_score[1], 4))
                    test_scores.append(round(mean_test_score[2], 4))

                # early stop
                if mean_score[2] > best_score or best_loss > mean_val_loss:
                    if mean_score[2] > best_score and best_loss > mean_val_loss:
                        val_early_loss = mean_val_loss
                        val_early_score = mean_score[2]
                    best_score = np.max((mean_score[2], best_score))
                    best_loss = np.min((best_loss, mean_val_loss))
                    cur_step = 0
                else:
                    cur_step += 1
                    if cur_step == patience:
                        valid_precision.append(round(mean_score[0], 4))
                        valid_recall.append(round(mean_score[1], 4))
                        valid_scores.append(round(mean_score[2], 4))
                        test_precision.append(round(mean_test_score[0], 4))
                        test_recall.append(round(mean_test_score[1], 4))
                        test_scores.append(round(mean_test_score[2], 4))
                        break
        print('Valid Scores: {}'.format(valid_scores))
        print('Test Scores: {}'.format(test_scores))
    
    out_matrix = np.stack([valid_precision, valid_recall, valid_scores, test_precision, test_recall, test_scores], axis=1)
    np.savetxt('results.csv', out_matrix, delimiter=',')
Exemple #13
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        return score, loss_data.item()


best_score = -1
best_loss = 10000
best_model = None
best_loss_curve = []
val_early_loss = 10000
val_early_score = -1
model = GAT(g, num_feats, 256, n_classes, [4, 4, 6], F.elu, 0.0001, 0.0001,
            0.2, True)

loss_fcn = torch.nn.BCEWithLogitsLoss()

# use optimizer
optimizer = torch.optim.Adam(model.parameters(), lr=0.005)
model = model.to(device)
save_loss = []
for epoch in range(200):
    model.train()
    loss_list = []
    for train_batch in batch_list:
        model.g = g.subgraph(train_batch)
        for layer in model.gat_layers:
            layer.g = g.subgraph(train_batch)
        input_feature = features[train_batch]
        logits = model(input_feature)
        loss = loss_fcn(logits, labels[train_batch].float())
        optimizer.zero_grad()
        loss.backward()
        optimizer.step()