flair.datasets.text_text.GLUE_STSB#
- class flair.datasets.text_text.GLUE_STSB(label_type='similarity', base_path=None, max_tokens_per_doc=-1, max_chars_per_doc=-1, use_tokenizer=True, in_memory=True, sample_missing_splits=True)View on GitHub#
Bases:
DataPairCorpus
- __init__(label_type='similarity', base_path=None, max_tokens_per_doc=-1, max_chars_per_doc=-1, use_tokenizer=True, in_memory=True, sample_missing_splits=True)View on GitHub#
Corpus for tasks involving pairs of sentences or paragraphs.
The data files are expected to be in column format where each line has a column for the first sentence/paragraph, the second sentence/paragraph and the labels, respectively. The columns must be separated by a given separator (default: ‘t’).
- Parameters:
data_folder – base folder with the task data
columns – List that indicates the columns for the first sentence (first entry in the list), the second sentence (second entry) and label (last entry). default = [0,1,2]
train_file – the name of the train file
test_file – the name of the test file, if None, dev data is sampled from train (if sample_missing_splits is true)
dev_file – the name of the dev file, if None, dev data is sampled from train (if sample_missing_splits is true)
use_tokenizer – Whether or not to use in-built tokenizer
max_tokens_per_doc – If set, shortens sentences to this maximum number of tokens
max_chars_per_doc – If set, shortens sentences to this maximum number of characters
in_memory (
bool
) – If True, data will be saved in list of flair.data.DataPair objects, other wise we use lists with simple strings which needs less spacelabel_type – Name of the label of the data pairs
autofind_splits – If True, train/test/dev files will be automatically identified in the given data_folder
sample_missing_splits (
bool
) – If True, a missing train/test/dev file will be sampled from the available dataskip_first_line – If True, first line of data files will be ignored
separator – Separator between columns in data files
encoding – Encoding of data files
- Returns:
a Corpus with annotated train, dev and test data
Methods
__init__
([label_type, base_path, ...])Corpus for tasks involving pairs of sentences or paragraphs.
add_label_noise
(label_type, labels[, ...])Generates uniform label noise distribution in the chosen dataset split.
downsample
([percentage, downsample_train, ...])Randomly downsample the corpus to the given percentage (by removing data points).
filter_empty_sentences
()A method that filters all sentences consisting of 0 tokens.
filter_long_sentences
(max_charlength)A method that filters all sentences for which the plain text is longer than a specified number of characters.
get_all_sentences
()Returns all sentences (spanning all three splits) in the
Corpus
.get_label_distribution
()Counts occurrences of each label in the corpus and returns them as a dictionary object.
make_label_dictionary
(label_type[, ...])Creates a dictionary of all labels assigned to the sentences in the corpus.
make_tag_dictionary
(tag_type)Create a tag dictionary of a given label type.
make_vocab_dictionary
([max_tokens, min_freq])Creates a
Dictionary
of all tokens contained in the corpus.obtain_statistics
([label_type, pretty_print])Print statistics about the corpus, including the length of the sentences and the labels in the corpus.
tsv_from_eval_dataset
(folder_path)Create a tsv file of the predictions of the eval_dataset.
Attributes
dev
The dev split as a
torch.utils.data.Dataset
object.test
The test split as a
torch.utils.data.Dataset
object.train
The training split as a
torch.utils.data.Dataset
object.- tsv_from_eval_dataset(folder_path)View on GitHub#
Create a tsv file of the predictions of the eval_dataset.
After calling classifier.predict(corpus.eval_dataset, label_name=’similarity’), this function can be used to produce a file called STS-B.tsv suitable for submission to the Glue Benchmark.