flair.datasets.sequence_labeling.NER_MULTI_WIKIANN#
- class flair.datasets.sequence_labeling.NER_MULTI_WIKIANN(languages='en', base_path=None, in_memory=False, **corpusargs)View on GitHub#
Bases:
MultiCorpus- __init__(languages='en', base_path=None, in_memory=False, **corpusargs)View on GitHub#
Initialize the WkiAnn corpus for cross-lingual NER consisting of datasets from 282 languages that exist in Wikipedia.
See https://elisa-ie.github.io/wikiann/ for details and for the languages and their respective abbreveations, i.e. “en” for english. (license: https://opendatacommons.org/licenses/by/)
- Parameters:
languages (Union[str, list[str]]) – Should be an abbreviation of a language (“en”, “de”,..) or a list of abbreviations. The datasets of all passed languages will be saved in one MultiCorpus. (Note that, even though listed on https://elisa-ie.github.io/wikiann/ some datasets are empty. This includes “aa”, “cho”, “ho”, “hz”, “ii”, “jam”, “kj”, “kr”, “mus”, “olo” and “tcy”.)
base_path (Union[str, Path], optional) – Default is None, meaning that corpus gets auto-downloaded and loaded. You can override this to point to a different folder but typically this should not be necessary. The data is in bio-format. It will by default (with the string “ner” as value) be transformed into the bioes format. If you dont want that set it to None.
in_memory (bool, optional) – Specify that the dataset should be loaded in memory, which speeds up the training process but takes increases the RAM usage significantly.
Methods
__init__([languages, base_path, in_memory])Initialize the WkiAnn corpus for cross-lingual NER consisting of datasets from 282 languages that exist in Wikipedia.
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
Dictionaryof 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
devThe dev split as a
torch.utils.data.Datasetobject.testThe test split as a
torch.utils.data.Datasetobject.trainThe training split as a
torch.utils.data.Datasetobject.