Ejemplo n.º 1
0
def dev_nlpcc(model):
    dev_instances = stst.load_parse_data(dev_file, nlp)
    model.test(dev_instances, dev_file)
    # evaluation
    acc, _, _, _ = stst.Evaluation(dev_file, model.output_file)
    print(acc)
    return acc
def test_sts(model):
    test_file = './data/stsbenchmark/sts-test.csv'
    test_instances = stst.load_parse_data(test_file, nlp)
    model.test(test_instances, test_file)
    test_pearsonr = stst.eval_output_file(model.output_file)
    print('Test:', test_pearsonr)
    return test_pearsonr
def dev_sts(model):
    dev_file = './data/stsbenchmark/sts-dev.csv'
    dev_instances = stst.load_parse_data(dev_file, nlp)
    model.test(dev_instances, dev_file)
    dev_pearsonr = stst.eval_output_file(model.output_file)
    print('Dev:', dev_pearsonr)
    return dev_pearsonr
Ejemplo n.º 4
0
def feature_alation(model):
    train_instances = stst.load_parse_data(train_file)
    dev_instances = stst.load_parse_data(dev_file)

    feature_list = model.feature_list

    model.train(train_instances, train_file)
    model.test(dev_instances, dev_file)
    exit(1)

    for feature in feature_list:
        model.feature_list = [feature]
        model.train(train_instances, train_file)
        model.test(dev_instances, dev_file)
        # evaluation
        acc, _, _, _ = stst.Evaluation(dev_file, model.output_file)
        print(feature.feature_name)
        print(acc)
Ejemplo n.º 5
0
def stack_nlpcc(model):
    if 'stack' not in model.model_name:
        raise NotImplementedError
    train_instances = stst.load_parse_data(train_file, nlp)
    model.cross_validation(train_instances, train_file)
    # evaluation
    acc, _, _, _ = stst.Evaluation(train_file, model.output_file)
    print(acc)
    return acc
model.add(stst.WeightednGramMatchFeature(type='lemma'))
model.add(stst.BOWFeature(stopwords=False))
model.add(stst.AlignmentFeature())
model.add(stst.IdfAlignmentFeature())
model.add(stst.NegativeFeature())

# train and test
train_file = './data/stsbenchmark/sts-train.csv'
dev_file = './data/stsbenchmark/sts-dev.csv'
test_file = './data/stsbenchmark/sts-test.csv'

# init the server and input the address
nlp = stst.StanfordNLP('http://localhost:9000')

# parse data
train_instances = stst.load_parse_data(train_file, nlp)
dev_instances = stst.load_parse_data(dev_file, nlp)

# train and test
model.train(train_instances, train_file)
model.test(dev_instances, dev_file)

# evaluation
dev_pearsonr = stst.eval_output_file(model.output_file)
print('Dev:', dev_pearsonr)

# test on new data set
test_instances = stst.load_parse_data(test_file, nlp)
model.test(test_instances, test_file)
test_pearsonr = stst.eval_output_file(model.output_file)
print('Test:', test_pearsonr)
Ejemplo n.º 7
0
def test_nlpcc(model):
    test_instances = stst.load_parse_data(test_file, nlp)
    model.test(test_instances, test_file)
    acc, _, _, _ = stst.Evaluation(test_file, model.output_file)
    print(acc)
    return acc
Ejemplo n.º 8
0
def train_nlpcc(model):
    train_instances = stst.load_parse_data(train_file, nlp)
    model.train(train_instances, train_file)
def train_sts(model):
    train_file = './data/stsbenchmark/sts-train.csv'
    train_instances = stst.load_parse_data(train_file, nlp)
    model.train(train_instances, train_file)
Ejemplo n.º 10
0
def train_sts(model):
    train_file = './data/stsbenchmark/sts-train.csv'
    train_file = './data/stsbenchmark/train_ai-lab.csv'
    # 利用StanfordNLP对文本数据进行预处理,包括切词、标注、句法解析等等
    train_instances = stst.load_parse_data(train_file, nlp)
    model.train(train_instances, train_file)