def train(config_path):
    config = conf_utils.init_train_config(config_path)

    train_input, train_target, validate_input, validate_target = data_utils.gen_train_data(config)

    model = bayes.Model()
    train_term_doc = model.get_tfidf(train_input, "train")
    validate_term_doc = model.get_tfidf(validate_input, "validate")
    nb = model.multi_nb()
    nb.fit(train_term_doc, train_target)

    # save vocab
    vocab = model.vec.vocabulary_
    joblib.dump(vocab, config["model_path"] + "vocab.json")

    # save model
    joblib.dump(nb, config["model_path"] + "svm.m")

    # validate
    validate_preds = nb.predict(validate_term_doc)

    report = metrics.classification_report(validate_target, validate_preds)
    print(f"\n>> REPORT:\n{report}")

    cm = metrics.confusion_matrix(validate_target, validate_preds)
    print(f"\n>> Confusion Matrix:\n{cm}")
Esempio n. 2
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def train_v2(config_path):
    config = conf_utils.init_train_config(config_path)
    train_input, train_target, validate_input, validate_target = data_utils.gen_train_data(
        config)

    print(">> build model...")
    if args.model == "cnn":
        model = cnn2.Model(config).build()
    # elif args.model == "rnn":
    #     model = rnn.Model(config).build()
    else:
        raise Exception(f"error model: {args.model}")

    model.summary()

    model.fit(train_input,
              train_target,
              batch_size=64,
              epochs=20,
              validation_data=(validate_input, validate_target))

    config = conf_utils.init_test_config(config["time_now"])
    test_input, test_target = data_utils.gen_test_data(config)
    model.evaluate(test_input, test_target, batch_size=64)
Esempio n. 3
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def train(config_path):
    config = conf_utils.init_train_config(config_path)

    train_input, train_target, validate_input, validate_target = data_utils.gen_train_data(
        config)

    if args.model == "bayes":
        model = bayes.Model()
        train_term_doc = model.get_tfidf(train_input, "train")
        validate_term_doc = model.get_tfidf(validate_input, "validate")
        m = model.multi_nb()
        m.fit(train_term_doc, train_target)
    elif args.model == "svm":
        model = svm.Model()
        train_term_doc = model.get_tfidf(train_input, "train")
        validate_term_doc = model.get_tfidf(validate_input, "validate")
        m = model.lin_svm()
        m.fit(train_term_doc, train_target)
    else:
        raise Exception(f"error model name: {args.model}")

    # save vocab
    vocab = model.vec.vocabulary_
    joblib.dump(vocab, config["model_path"] + "vocab.json")

    # save model
    joblib.dump(m, config["model_path"] + f"{args.model}.m")

    # validate
    validate_preds = m.predict(validate_term_doc)

    report = metrics.classification_report(validate_target, validate_preds)
    print(f"\n>> REPORT:\n{report}")

    cm = metrics.confusion_matrix(validate_target, validate_preds)
    print(f"\n>> Confusion Matrix:\n{cm}")
def train(config_path):
    config = conf_utils.init_train_config(config_path)
    batch_size = config["batch_size"]
    epoch_size = config["epoch_size"]
    num_save_epoch = config["num_save_epoch"]

    train_input, train_target, validate_input, validate_target = data_utils.gen_train_data(
        config)

    validate_input_batch = validate_input[:batch_size]
    validate_target_batch = validate_target[:batch_size]

    print(">> build model...")
    model = cnn.Model(config)
    train_step, pred, cost = model.cnn()

    with tf.Session() as sess:
        init = tf.global_variables_initializer()
        sess.run(init)

        saver = tf.train.Saver()

        merged = tf.summary.merge_all()
        train_writer = tf.summary.FileWriter(config["log_train_path"],
                                             sess.graph)

        max_val_acc = 0
        max_key = 0
        for epoch in range(epoch_size):
            epoch = epoch + 1
            batch_gen = batch_utils.make_batch(train_input, train_target,
                                               batch_size)
            for batch_num in range(len(train_input) // batch_size):
                train_input_batch, train_target_batch = batch_gen.__next__()

                _, loss, train_pred, summary = sess.run(
                    [train_step, cost, pred, merged],
                    feed_dict={
                        model.input_holder: train_input_batch,
                        model.target_holder: train_target_batch
                    })
                train_writer.add_summary(summary)

                if not batch_num % 5:
                    input_train_arr = np.argmax(train_target_batch, 1)
                    target_train_arr = np.array(train_pred)
                    acc_train = np.sum(input_train_arr == target_train_arr
                                       ) * 100 / len(input_train_arr)

                    validate_pred = sess.run(
                        [pred],
                        feed_dict={
                            model.input_holder: validate_input_batch,
                            model.target_holder: validate_target_batch
                        })
                    input_validate_arr = np.argmax(validate_target_batch, 1)
                    target_validate_arr = np.array(validate_pred)
                    acc_val = np.sum(input_validate_arr == target_validate_arr
                                     ) * 100 / len(input_validate_arr)
                    print(
                        f">> e:{epoch:3} s:{batch_num:2} loss:{loss:5.4} acc_t: {acc_train:3f} acc_v: {acc_val:3f}"
                    )

                    if acc_val > max_val_acc:
                        max_val_acc = acc_val
                        max_key = 0
                    else:
                        max_key += 1

            if not epoch % num_save_epoch:
                saver.save(sess,
                           config["model_path"] + "model",
                           global_step=epoch)
                print(">> save model...")

            # 1000 batch val acc 没有增长,提前停止
            if max_key > 200:
                print(">> No optimization for a long time, auto stopping...")
                break

        time_str = config["time_now"]
        print(
            f">> use this command for test:\npython -m run.tensorflow_cnn test {time_str} "
        )
Esempio n. 5
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def train(config_path):
    config = conf_utils.init_train_config(config_path)

    batch_size = config["batch_size"]
    epoch_size = config["epoch_size"]
    model_class = config["model_class"]
    print(f"\n>> model class is {model_class}")

    train_input, train_target, validate_input, validate_target = data_utils.gen_train_data(
        config)

    model = cnn.Model(config)

    # 判断是否有GPU加速
    use_gpu = torch.cuda.is_available()

    if use_gpu:
        model = model.cuda()

    criterion = nn.CrossEntropyLoss()
    optimizer = optim.SGD(model.parameters(), lr=config["learning_rate"])

    for epoch in range(epoch_size):
        epoch = epoch + 1
        train_batch_gen = batch_utils.make_batch(train_input, train_target,
                                                 batch_size)

        train_acc = 0
        for batch_num in range(len(train_input) // batch_size):
            train_input_batch, train_target_batch = train_batch_gen.__next__()

            if model_class == "conv2d":
                train_input_batch_v = Variable(
                    torch.LongTensor(np.expand_dims(train_input_batch, 1)))
            elif model_class == "conv1d":
                train_input_batch_v = Variable(
                    torch.LongTensor(train_input_batch))
            else:
                raise ValueError("model class is wrong!")
            train_target_batch_v = Variable(
                torch.LongTensor(np.argmax(train_target_batch, 1)))

            if use_gpu:
                train_input_batch_v = train_input_batch_v.cuda()
                train_target_batch_v = train_target_batch_v.cuda()

            # 向前传播
            out = model(train_input_batch_v, model_class)
            loss = criterion(out, train_target_batch_v)
            _, pred = torch.max(out, 1)
            train_acc = (pred == train_target_batch_v).float().mean()

            # 向后传播
            optimizer.zero_grad()
            loss.backward()
            optimizer.step()

            if not batch_num % 5:
                print(
                    f">> e:{epoch:3} s:{batch_num:2} loss:{loss:5.4} acc: {train_acc:3f}"
                )

        if epoch > 10 and train_acc >= 0.9:
            torch.save(
                {
                    "epoch": epoch,
                    "optimizer": optimizer.state_dict(),
                    "model": model.state_dict(),
                    "train_acc": train_acc
                }, config["model_path"] + "cnn.pt")
Esempio n. 6
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def train(config_path):
    config = conf_utils.init_train_config(config_path)

    batch_size = config["batch_size"]
    epoch_size = config["epoch_size"]
    model_class = config["model_class"]
    print(f"\n>> model class is {model_class}")

    train_input, train_target, val_input, val_target = data_utils.gen_train_data(
        config)
    if args.model == "cnn":
        model = cnn.Model(config)
    elif args.model == "rnn":
        model = rnn.Model(config)
    else:
        raise Exception(f"error model: {args.model}")

    if use_gpu:
        model = model.cuda()

    criterion = nn.CrossEntropyLoss()
    optimizer = optim.SGD(model.parameters(), lr=config["learning_rate"])

    for epoch in range(epoch_size):
        epoch = epoch + 1
        train_batch_gen = batch_utils.make_batch(train_input, train_target,
                                                 batch_size)
        val_batch_gen = batch_utils.make_batch(val_input, val_target,
                                               batch_size)

        train_acc = 0
        val_acc = 0
        for batch_num in range(len(train_input) // batch_size):
            train_input_batch, train_target_batch = train_batch_gen.__next__()

            if args.model == "cnn" and model_class == "conv2d":
                train_input_batch_v = Variable(
                    torch.LongTensor(np.expand_dims(train_input_batch, 1)))
            else:
                train_input_batch_v = Variable(
                    torch.LongTensor(train_input_batch))

            train_target_batch_v = Variable(
                torch.LongTensor(np.argmax(train_target_batch, 1)))

            if use_gpu:
                train_input_batch_v = train_input_batch_v.cuda()
                train_target_batch_v = train_target_batch_v.cuda()

            out = model(train_input_batch_v)
            loss = criterion(out, train_target_batch_v)
            _, pred = torch.max(out, 1)
            train_acc = (pred == train_target_batch_v).float().mean()

            # 后向传播
            optimizer.zero_grad()
            loss.backward()
            optimizer.step()

            if not batch_num % 10:
                with torch.no_grad():
                    val_input_batch, val_target_batch = val_batch_gen.__next__(
                    )
                    if args.model == "cnn" and model_class == "conv2d":
                        val_input_batch_v = Variable(
                            torch.LongTensor(np.expand_dims(
                                val_input_batch, 1)))
                    else:
                        val_input_batch_v = Variable(
                            torch.LongTensor(val_input_batch))

                    val_target_batch_v = Variable(
                        torch.LongTensor(np.argmax(val_target_batch, 1)))
                    if use_gpu:
                        val_input_batch_v = val_input_batch_v.cuda()
                        val_target_batch_v = val_target_batch_v.cuda()
                    val_out = model(val_input_batch_v)
                    _, val_pred = torch.max(val_out, 1)
                    val_acc = (val_pred == val_target_batch_v).float().mean()

                print(
                    f">> e:{epoch:3} s:{batch_num:2} loss:{loss:5.4} train-acc:{train_acc:.4f} val-acc:{val_acc:.4f}"
                )

        if epoch > 10 and train_acc >= 0.9 and val_acc >= 0.9:
            torch.save(
                {
                    "epoch": epoch,
                    "optimizer": optimizer.state_dict(),
                    "model": model.state_dict(),
                    "train_acc": train_acc
                }, config["model_path"] + f"{args.model}.pt")