Esempio n. 1
0
def eval_(output_dir, t_labels, p_labels, text):
    with open(os.path.join(output_dir, t_labels), 'r') as t, \
            open(os.path.join(output_dir, p_labels), 'r') as p, \
            open(os.path.join(output_dir, text), 'r') as textf:
        ne_class_list = set()
        true_labels_for_testing = []
        results_of_prediction = []
        for text, true_labels, predicted_labels in zip(textf, t, p):
            true_labels = true_labels.strip().replace('_', '-').split()
            predicted_labels = predicted_labels.strip().replace('_',
                                                                '-').split()
            biluo_tags_true = get_biluo(true_labels)
            biluo_tags_predicted = get_biluo(predicted_labels)
            doc = Doc(text.strip())
            offset_true_labels = offset_from_biluo(doc, biluo_tags_true)
            offset_predicted_labels = offset_from_biluo(
                doc, biluo_tags_predicted)

            ent_labels = dict()
            for ent in offset_true_labels:
                start, stop, ent_type = ent
                ent_type = ent_type.replace('_', '')
                ne_class_list.add(ent_type)
                if ent_type in ent_labels:
                    ent_labels[ent_type].append((start, stop))
                else:
                    ent_labels[ent_type] = [(start, stop)]
            true_labels_for_testing.append(ent_labels)

            ent_labels = dict()
            for ent in offset_predicted_labels:
                start, stop, ent_type = ent
                ent_type = ent_type.replace('_', '')
                if ent_type in ent_labels:
                    ent_labels[ent_type].append((start, stop))
                else:
                    ent_labels[ent_type] = [(start, stop)]
            results_of_prediction.append(ent_labels)

    from eval.quality import calculate_prediction_quality
    print(ne_class_list)
    f1, precision, recall, results = \
        calculate_prediction_quality(true_labels_for_testing,
                                     results_of_prediction,
                                     tuple(ne_class_list))
    print(f1, precision, recall, results)
def train(args):
    vocab_path = os.path.join(args.data_dir, args.vocab)
    tag_path = os.path.join(args.data_dir, args.tag_set)
    word_to_idx, idx_to_word, tag_to_idx, idx_to_tag = load_vocabs(vocab_path, tag_path)
    train_sentences, train_labels, test_sentences, test_labels = prepare_text(args, tag_to_idx)

    device = get_device(args)
    start = time.time()
    bert_embedding1 = TransformerWordEmbeddings('distilbert-base-multilingual-cased',
                                                layers='-1',
                                                batch_size=args.batch_size,
                                                pooling_operation=args.pooling_operation,
                                                )

    bert_embedding2 = TransformerWordEmbeddings('distilroberta-base',
                                                layers='-1',
                                                batch_size=args.batch_size,
                                                pooling_operation=args.pooling_operation,
                                                )

    bert_embedding3 = TransformerWordEmbeddings('sentence-transformers/xlm-r-100langs-bert-base-nli-stsb-mean-tokens',
                                                layers='-1',
                                                batch_size=args.batch_size,
                                                pooling_operation=args.pooling_operation
                                                )

    encoder = StackTransformerEmbeddings([bert_embedding1, bert_embedding2, bert_embedding3])

    train_sentences_encoded = encoder.encode(train_sentences)
    test_sentences_encoded = encoder.encode(test_sentences)

    print(f'Encoding time:{time.time() - start}')

    # Update the Namespace
    args.vocab_size = len(idx_to_word)
    args.number_of_tags = len(idx_to_tag)

    # Update the embedding dim
    args.embedding_dim = encoder.embedding_length

    model = build_model(args, device)
    print(model)
    model = model.to(device)

    # optimizer = torch.optim.Adam(model.parameters())
    betas = (0.9, 0.999)
    eps = 1e-8
    optimizer = BertAdam(model, lr=args.learning_rate, b1=betas[0], b2=betas[1], e=eps)

    pad_id = word_to_idx['PAD']
    pad_id_labels = tag_to_idx['PAD']

    batcher = SamplingBatcherStackedTransformers(np.asarray(train_sentences_encoded, dtype=object),
                                                 np.asarray(train_labels, dtype=object),
                                                 batch_size=args.batch_size,
                                                 pad_id=pad_id,
                                                 pad_id_labels=pad_id_labels,
                                                 embedding_length=encoder.embedding_length,
                                                 device=device)

    updates = 1
    total_loss = 0
    best_loss = +inf
    stop_training = False
    output_dir = args.output_dir
    try:
        os.makedirs(output_dir)
    except:
        pass

    prefix = args.train_text.split('_')[0] if len(args.train_text.split('_')) > 1 \
        else args.train_text.split('.')[0]

    start_time = time.time()
    for epoch in range(args.epochs):
        for batch in batcher:
            updates += 1
            input_, labels, labels_mask = batch
            optimizer.zero_grad()
            loss = model.score(batch)
            loss.backward()
            optimizer.step()
            total_loss += loss.data
            if updates % args.patience == 0:
                print(f'Epoch: {epoch}, Updates:{updates}, Loss: {total_loss}')
                if best_loss > total_loss:
                    save_state(f'{output_dir}/{prefix}_best_model.pt', model, loss_fn, optimizer,
                               updates, args=args)
                    best_loss = total_loss
                total_loss = 0
            if updates % args.max_steps == 0:
                stop_training = True
                break

        if stop_training:
            break

    print('Training time:{}'.format(time.time() - start_time))

    def get_idx_to_tag(label_ids):
        return [idx_to_tag.get(idx) for idx in label_ids]

    def get_idx_to_word(words_ids):
        return [idx_to_word.get(idx) for idx in words_ids]

    model, model_args = load_model_state(f'{output_dir}/{prefix}_best_model.pt', device)
    model = model.to(device)
    batcher_test = SamplingBatcherStackedTransformers(np.asarray(test_sentences_encoded, dtype=object),
                                                      np.asarray(test_labels, dtype=object),
                                                      batch_size=args.batch_size,
                                                      pad_id=pad_id,
                                                      pad_id_labels=pad_id_labels,
                                                      embedding_length=encoder.embedding_length,
                                                      device=device)
    ne_class_list = set()
    true_labels_for_testing = []
    results_of_prediction = []
    with open(f'{output_dir}/{prefix}_label.txt', 'w', encoding='utf8') as t, \
            open(f'{output_dir}/{prefix}_predict.txt', 'w', encoding='utf8') as p, \
            open(f'{output_dir}/{prefix}_text.txt', 'w', encoding='utf8') as textf:
        with torch.no_grad():
            # predict() method returns final labels not the label_ids
            preds = predict_no_attn(batcher_test, model, idx_to_tag)
            cnt = 0
            for text, labels, predict_labels in zip(test_sentences, test_labels, preds):
                cnt += 1
                tag_labels_true = get_idx_to_tag(labels)
                text_ = text

                tag_labels_predicted = ' '.join(predict_labels)
                tag_labels_true = ' '.join(tag_labels_true)

                p.write(tag_labels_predicted + '\n')
                t.write(tag_labels_true + '\n')
                textf.write(text_ + '\n')

                tag_labels_true = tag_labels_true.strip().replace('_', '-').split()
                tag_labels_predicted = tag_labels_predicted.strip().replace('_', '-').split()
                biluo_tags_true = get_biluo(tag_labels_true)
                biluo_tags_predicted = get_biluo(tag_labels_predicted)

                doc = Doc(text_)
                offset_true_labels = offset_from_biluo(doc, biluo_tags_true)
                offset_predicted_labels = offset_from_biluo(doc, biluo_tags_predicted)

                ent_labels = dict()
                for ent in offset_true_labels:
                    start, stop, ent_type = ent
                    ent_type = ent_type.replace('_', '')
                    ne_class_list.add(ent_type)
                    if ent_type in ent_labels:
                        ent_labels[ent_type].append((start, stop))
                    else:
                        ent_labels[ent_type] = [(start, stop)]
                true_labels_for_testing.append(ent_labels)

                ent_labels = dict()
                for ent in offset_predicted_labels:
                    start, stop, ent_type = ent
                    ent_type = ent_type.replace('_', '')
                    if ent_type in ent_labels:
                        ent_labels[ent_type].append((start, stop))
                    else:
                        ent_labels[ent_type] = [(start, stop)]
                results_of_prediction.append(ent_labels)

    from eval.quality import calculate_prediction_quality
    f1, precision, recall, results = \
        calculate_prediction_quality(true_labels_for_testing,
                                     results_of_prediction,
                                     tuple(ne_class_list))
    print(f1, precision, recall, results)
Esempio n. 3
0
def train(args):
    idx_to_word, idx_to_tag, train_sentences, train_labels, test_sentences, test_labels = prepare(
        args)
    word_to_idx = {idx_to_word[key]: key for key in idx_to_word}
    tag_to_idx = {idx_to_tag[key]: key for key in idx_to_tag}

    args.vocab_size = len(idx_to_word)
    args.number_of_tags = len(idx_to_tag)

    use_cuda = torch.cuda.is_available()
    device = torch.device("cuda:0" if use_cuda and not args.cpu else "cpu")

    model = build_model(args)
    print(model)
    model = model.to(device)

    # optimizer = torch.optim.Adam(model.parameters())
    betas = (0.9, 0.999)
    eps = 1e-8
    optimizer = BertAdam(model,
                         lr=args.learning_rate,
                         b1=betas[0],
                         b2=betas[1],
                         e=eps)
    pad_id = word_to_idx['PAD']
    batcher = SamplingBatcher(np.asarray(train_sentences, dtype=object),
                              np.asarray(train_labels, dtype=object),
                              batch_size=args.batch_size,
                              pad_id=pad_id)

    updates = 1
    total_loss = 0
    best_loss = +inf
    stop_training = False

    output_dir = args.output_dir
    try:
        os.makedirs(output_dir)
    except:
        pass

    prefix = args.train_text.split('_')[0] if len(args.train_text.split('_')) > 1 \
        else args.train_text.split('.')[0]

    start_time = time.time()
    for epoch in range(args.epochs):
        for batch in batcher:
            updates += 1
            batch_data, batch_labels, batch_len, mask_x, mask_y = batch
            optimizer.zero_grad()
            batch_data = batch_data.to(device)
            batch_labels = batch_labels.to(device)
            mask_y = mask_y.to(device)
            attn_mask = get_attn_pad_mask(batch_data, batch_data, pad_id)
            output_batch = model(batch_data, attn_mask)
            loss = loss_fn(output_batch, batch_labels, mask_y)

            loss.backward()
            optimizer.step()

            total_loss += loss.data
            if updates % args.patience == 0:
                print(f'Epoch: {epoch}, Updates:{updates}, Loss: {total_loss}')
                if best_loss > total_loss:
                    save_state(f'{output_dir}/{prefix}_best_model.pt', model,
                               loss_fn, optimizer, updates)
                    best_loss = total_loss
                total_loss = 0
            if updates % args.max_steps == 0:
                stop_training = True
                break

        if stop_training:
            break

    print('Training time:{}'.format(time.time() - start_time))

    def get_idx_to_tag(label_ids):
        return [idx_to_tag.get(idx) for idx in label_ids]

    def get_idx_to_word(words_ids):
        return [idx_to_word.get(idx) for idx in words_ids]

    updates = load_model_state(f'{output_dir}/{prefix}_best_model.pt', model)
    ne_class_list = set()
    true_labels_for_testing = []
    results_of_prediction = []
    with open(f'{output_dir}/{prefix}_label.txt', 'w', encoding='utf8') as t, \
            open(f'{output_dir}/{prefix}_predict.txt', 'w', encoding='utf8') as p, \
            open(f'{output_dir}/{prefix}_text.txt', 'w', encoding='utf8') as textf:
        with torch.no_grad():
            model.eval()
            cnt = 0
            for text, label in zip(test_sentences, test_labels):
                cnt += 1
                text_tensor = torch.LongTensor(text).unsqueeze(0).to(device)
                labels = torch.LongTensor(label).unsqueeze(0).to(device)
                predict = model(text_tensor)
                predict_labels = predict.argmax(dim=1)
                predict_labels = predict_labels.view(-1)
                labels = labels.view(-1)

                predicted_labels = predict_labels.cpu().data.tolist()
                true_labels = labels.cpu().data.tolist()
                tag_labels_predicted = get_idx_to_tag(predicted_labels)
                tag_labels_true = get_idx_to_tag(true_labels)
                text_ = get_idx_to_word(text)

                tag_labels_predicted = ' '.join(tag_labels_predicted)
                tag_labels_true = ' '.join(tag_labels_true)
                text_ = ' '.join(text_)
                p.write(tag_labels_predicted + '\n')
                t.write(tag_labels_true + '\n')
                textf.write(text_ + '\n')

                tag_labels_true = tag_labels_true.strip().replace('_',
                                                                  '-').split()
                tag_labels_predicted = tag_labels_predicted.strip().replace(
                    '_', '-').split()
                biluo_tags_true = get_biluo(tag_labels_true)
                biluo_tags_predicted = get_biluo(tag_labels_predicted)

                doc = Doc(text_)
                offset_true_labels = offset_from_biluo(doc, biluo_tags_true)
                offset_predicted_labels = offset_from_biluo(
                    doc, biluo_tags_predicted)

                ent_labels = dict()
                for ent in offset_true_labels:
                    start, stop, ent_type = ent
                    ent_type = ent_type.replace('_', '')
                    ne_class_list.add(ent_type)
                    if ent_type in ent_labels:
                        ent_labels[ent_type].append((start, stop))
                    else:
                        ent_labels[ent_type] = [(start, stop)]
                true_labels_for_testing.append(ent_labels)

                ent_labels = dict()
                for ent in offset_predicted_labels:
                    start, stop, ent_type = ent
                    ent_type = ent_type.replace('_', '')
                    if ent_type in ent_labels:
                        ent_labels[ent_type].append((start, stop))
                    else:
                        ent_labels[ent_type] = [(start, stop)]
                results_of_prediction.append(ent_labels)

    from eval.quality import calculate_prediction_quality
    f1, precision, recall, results = \
        calculate_prediction_quality(true_labels_for_testing,
                                     results_of_prediction,
                                     tuple(ne_class_list))
    print(f1, precision, recall, results)
def decode(options):
    prefix = options.test_text.split('_')[0] if len(options.test_text.split('_')) > 1 \
        else options.test_text.split('.')[0]

    device = get_device(args)
    output_dir = options.output_dir
    try:
        os.makedirs(output_dir)
    except:
        pass
    model, model_args = load_model_state(options.model, device)
    model = model.to(device)

    vocab_path = os.path.join(model_args.data_dir, model_args.vocab)
    tag_path = os.path.join(model_args.data_dir, model_args.tag_set)
    word_to_idx, idx_to_word, tag_to_idx, idx_to_tag = load_vocabs(
        vocab_path, tag_path)

    *_, test_sentences, test_labels = prepare(options, word_to_idx, tag_to_idx)

    def get_idx_to_tag(label_ids):
        return [idx_to_tag.get(idx) for idx in label_ids]

    def get_idx_to_word(words_ids):
        return [idx_to_word.get(idx) for idx in words_ids]

    pad_id = word_to_idx['PAD']
    pad_id_labels = tag_to_idx['PAD']
    batcher_test = SamplingBatcher(np.asarray(test_sentences, dtype=object),
                                   np.asarray(test_labels, dtype=object),
                                   batch_size=args.batch_size,
                                   pad_id=pad_id,
                                   pad_id_labels=pad_id_labels)
    ne_class_list = set()
    true_labels_for_testing = []
    results_of_prediction = []
    with open(f'{output_dir}/{prefix}_label.txt', 'w', encoding='utf8') as t, \
            open(f'{output_dir}/{prefix}_predict.txt', 'w', encoding='utf8') as p, \
            open(f'{output_dir}/{prefix}_text.txt', 'w', encoding='utf8') as textf:
        with torch.no_grad():
            preds = predict(batcher_test, model, idx_to_tag, pad_id=pad_id)
            cnt = 0
            for text, labels, predict_labels in zip(test_sentences,
                                                    test_labels, preds):
                cnt += 1
                tag_labels_true = get_idx_to_tag(labels)
                text_ = get_idx_to_word(text)

                tag_labels_predicted = ' '.join(predict_labels)
                tag_labels_true = ' '.join(tag_labels_true)
                text_ = ' '.join(text_)
                p.write(tag_labels_predicted + '\n')
                t.write(tag_labels_true + '\n')
                textf.write(text_ + '\n')

                tag_labels_true = tag_labels_true.strip().replace('_',
                                                                  '-').split()
                tag_labels_predicted = tag_labels_predicted.strip().replace(
                    '_', '-').split()
                biluo_tags_true = get_biluo(tag_labels_true)
                biluo_tags_predicted = get_biluo(tag_labels_predicted)

                doc = Doc(text_)
                offset_true_labels = offset_from_biluo(doc, biluo_tags_true)
                offset_predicted_labels = offset_from_biluo(
                    doc, biluo_tags_predicted)

                ent_labels = dict()
                for ent in offset_true_labels:
                    start, stop, ent_type = ent
                    ent_type = ent_type.replace('_', '')
                    ne_class_list.add(ent_type)
                    if ent_type in ent_labels:
                        ent_labels[ent_type].append((start, stop))
                    else:
                        ent_labels[ent_type] = [(start, stop)]
                true_labels_for_testing.append(ent_labels)

                ent_labels = dict()
                for ent in offset_predicted_labels:
                    start, stop, ent_type = ent
                    ent_type = ent_type.replace('_', '')
                    if ent_type in ent_labels:
                        ent_labels[ent_type].append((start, stop))
                    else:
                        ent_labels[ent_type] = [(start, stop)]
                results_of_prediction.append(ent_labels)

    from eval.quality import calculate_prediction_quality
    f1, precision, recall, results = \
        calculate_prediction_quality(true_labels_for_testing,
                                     results_of_prediction,
                                     tuple(ne_class_list))
    print(f1, precision, recall, results)
        ent_labels = dict()
        for ent in offset_predicted_labels:
            start, stop, ent_type = ent
            ent_type = ent_type.replace('_', '')
            if ent_type in ent_labels:
                ent_labels[ent_type].append((start, stop))
            else:
                ent_labels[ent_type] = [(start, stop)]
        predicted_labels_final.append(ent_labels)

    from eval.quality import calculate_prediction_quality

    print(ne_class_list)
    f1, precision, recall, results = \
        calculate_prediction_quality(true_labels_final,
                                     predicted_labels_final,
                                     tuple(ne_class_list))
    final_results = dict(
        f1=f1,
        precesion=precision,
        recall=recall,
        all=results
    )
    print(final_results)

# def parse_args():
#     parser = argparse.ArgumentParser()
#     parser.add_argument('--output_dir', type=str, default='outputs')
#     parser.add_argument('--t_labels', type=str, default="ubuntu_label.txt")
#     parser.add_argument('--p_labels', type=str, default="ubuntu_predict.txt")
#     parser.add_argument('--text', type=str, default="ubuntu_text.txt")
Esempio n. 6
0
def train(args):
    vocab_path = os.path.join(args.data_dir, args.vocab)
    tag_path = os.path.join(args.data_dir, args.tag_set)
    word_to_idx, idx_to_word, tag_to_idx, idx_to_tag = load_vocabs(
        vocab_path, tag_path)
    train_sentences, train_labels, test_sentences, test_labels = prepare_flair(
        args, tag_to_idx)

    device = get_device(args)
    flair.device = device

    start = time.time()
    # flair_forward_embedding = FlairEmbeddings('multi-forward')
    # flair_backward_embedding = FlairEmbeddings('multi-backward')
    # init multilingual BERT
    bert_embedding = TransformerWordEmbeddings(
        'distilbert-base-multilingual-cased',
        layers='-1',
        batch_size=args.batch_size)
    # bert_embedding1 = TransformerWordEmbeddings('sentence-transformers/'
    #                                             'distilbert-multilingual-nli-stsb-quora-ranking',
    #                                             layers='-1',
    #                                             batch_size=args.batch_size)
    # bert_embedding2 = TransformerWordEmbeddings('sentence-transformers/quora-distilbert-multilingual',
    #                                             layers='-1',
    #                                             batch_size=args.batch_size)
    # now create the StackedEmbedding object that combines all embeddings
    embeddings = StackedEmbeddings(embeddings=[bert_embedding])

    # Embed words in the train and test sentence
    start_idx = 0
    n_samples = len(train_sentences)
    while start_idx < n_samples + args.batch_size:
        batch_slice = train_sentences[
            start_idx:min(start_idx + args.batch_size, n_samples)]
        start_idx += args.batch_size
        embeddings.embed(batch_slice)

    start_idx = 0
    n_samples = len(test_sentences)
    while start_idx <= n_samples + args.batch_size:
        batch_slice = test_sentences[start_idx:min(start_idx +
                                                   args.batch_size, n_samples)]
        start_idx += args.batch_size
        embeddings.embed(batch_slice)

    print(f'Encoding time:{time.time() - start}')

    # Update the Namespace
    args.vocab_size = len(idx_to_word)
    args.number_of_tags = len(idx_to_tag)

    model = build_model(args, device)
    print(model)
    model = model.to(device)

    optimizer = torch.optim.Adam(model.parameters())

    pad_id = word_to_idx['PAD']
    pad_id_labels = tag_to_idx['PAD']

    batcher = SamplingBatcherFlair(
        np.asarray(train_sentences, dtype=object),
        np.asarray(train_labels, dtype=object),
        batch_size=args.batch_size,
        pad_id=pad_id,
        pad_id_labels=pad_id_labels,
        embedding_length=embeddings.embedding_length)

    updates = 1
    total_loss = 0
    best_loss = +inf
    stop_training = False
    output_dir = args.output_dir
    try:
        os.makedirs(output_dir)
    except:
        pass

    prefix = args.train_text.split('_')[0] if len(args.train_text.split('_')) > 1 \
        else args.train_text.split('.')[0]

    start_time = time.time()
    for epoch in range(args.epochs):
        for batch in batcher:
            updates += 1
            input_, labels, labels_mask = batch
            optimizer.zero_grad()
            loss = model.score(batch)
            loss.backward()
            optimizer.step()
            total_loss += loss.data
            if updates % args.patience == 0:
                print(f'Epoch: {epoch}, Updates:{updates}, Loss: {total_loss}')
                if best_loss > total_loss:
                    save_state(f'{output_dir}/{prefix}_best_model.pt',
                               model,
                               loss_fn,
                               optimizer,
                               updates,
                               args=args)
                    best_loss = total_loss
                total_loss = 0
            if updates % args.max_steps == 0:
                stop_training = True
                break

        if stop_training:
            break

    print('Training time:{}'.format(time.time() - start_time))

    def get_idx_to_tag(label_ids):
        return [idx_to_tag.get(idx) for idx in label_ids]

    def get_idx_to_word(words_ids):
        return [idx_to_word.get(idx) for idx in words_ids]

    model, model_args = load_model_state(
        f'{output_dir}/{prefix}_best_model.pt', device)
    model = model.to(device)
    batcher_test = SamplingBatcherFlair(
        np.asarray(test_sentences, dtype=object),
        np.asarray(test_labels, dtype=object),
        batch_size=args.batch_size,
        pad_id=pad_id,
        pad_id_labels=pad_id_labels,
        embedding_length=embeddings.embedding_length)
    ne_class_list = set()
    true_labels_for_testing = []
    results_of_prediction = []
    with open(f'{output_dir}/{prefix}_label.txt', 'w', encoding='utf8') as t, \
            open(f'{output_dir}/{prefix}_predict.txt', 'w', encoding='utf8') as p, \
            open(f'{output_dir}/{prefix}_text.txt', 'w', encoding='utf8') as textf:
        with torch.no_grad():
            # predict() method returns final labels not the label_ids
            preds = predict_no_attn(batcher_test, model, idx_to_tag)
            cnt = 0
            for text, labels, predict_labels in zip(test_sentences,
                                                    test_labels, preds):
                cnt += 1
                tag_labels_true = get_idx_to_tag(labels)
                text_ = text.to_original_text()

                tag_labels_predicted = ' '.join(predict_labels)
                tag_labels_true = ' '.join(tag_labels_true)

                p.write(tag_labels_predicted + '\n')
                t.write(tag_labels_true + '\n')
                textf.write(text_ + '\n')

                tag_labels_true = tag_labels_true.strip().replace('_',
                                                                  '-').split()
                tag_labels_predicted = tag_labels_predicted.strip().replace(
                    '_', '-').split()
                biluo_tags_true = get_biluo(tag_labels_true)
                biluo_tags_predicted = get_biluo(tag_labels_predicted)

                doc = Doc(text_)
                offset_true_labels = offset_from_biluo(doc, biluo_tags_true)
                offset_predicted_labels = offset_from_biluo(
                    doc, biluo_tags_predicted)

                ent_labels = dict()
                for ent in offset_true_labels:
                    start, stop, ent_type = ent
                    ent_type = ent_type.replace('_', '')
                    ne_class_list.add(ent_type)
                    if ent_type in ent_labels:
                        ent_labels[ent_type].append((start, stop))
                    else:
                        ent_labels[ent_type] = [(start, stop)]
                true_labels_for_testing.append(ent_labels)

                ent_labels = dict()
                for ent in offset_predicted_labels:
                    start, stop, ent_type = ent
                    ent_type = ent_type.replace('_', '')
                    if ent_type in ent_labels:
                        ent_labels[ent_type].append((start, stop))
                    else:
                        ent_labels[ent_type] = [(start, stop)]
                results_of_prediction.append(ent_labels)

    from eval.quality import calculate_prediction_quality
    f1, precision, recall, results = \
        calculate_prediction_quality(true_labels_for_testing,
                                     results_of_prediction,
                                     tuple(ne_class_list))
    print(f1, precision, recall, results)