flair.datasets.biomedical.JNLPBA#

class flair.datasets.biomedical.JNLPBA(base_path=None, in_memory=True)View on GitHub#

Bases: ColumnCorpus

Original corpus of the JNLPBA shared task.

For further information see Kim et al.: Introduction to the Bio- Entity Recognition Task at JNLPBA https://www.aclweb.org/anthology/W04-1213.pdf

Deprecated since version 0.13.0: Please use data set implementation from BigBio instead (see BIGBIO_NER_CORPUS)

__init__(base_path=None, in_memory=True)View on GitHub#

Initialize the JNLPBA corpus.

Parameters:
  • base_path (Union[str, Path, None]) – Path to the corpus on your machine

  • in_memory (bool) – If True, keeps dataset in memory giving speedups in training.

Methods

__init__([base_path, in_memory])

Initialize the JNLPBA corpus.

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.

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.