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Fork of flair/ner-english-shipping-labels

This is fork of flair/ner-english-ontonotes-large implementing a custom handler.py as an example for how to use flair models with inference-endpoints

English NER in Flair (Ontonotes large model)

This is the large 5-class NER model for English that ships with Flair.

F1-Score: 77.78 (Ontonotes)

Predicts 6 tags:

tag meaning
NAME Name of person
ORG organizaiton name
GCNUMBER GC tracking number
BGNUMBER BG tracking number
COUNTRY Country name
LOCATION city and picode

Based on document-level XLM-R embeddings and FLERT.


Demo: How to use in Flair

Requires: Flair (pip install flair)

from flair.data import Sentence
from flair.models import SequenceTagger

# load tagger
tagger = SequenceTagger.load("flair/ner-english-ontonotes-large")

# make example sentence
sentence = Sentence("On September 1st George won 1 dollar while watching Game of Thrones.")

# predict NER tags
tagger.predict(sentence)

# print sentence
print(sentence)

# print predicted NER spans
print('The following NER tags are found:')
# iterate over entities and print
for entity in sentence.get_spans('ner'):
    print(entity)

This yields the following output:

Span [2,3]: "September 1st"   [โˆ’ Labels: DATE (1.0)]
Span [4]: "George"   [โˆ’ Labels: PERSON (1.0)]
Span [6,7]: "1 dollar"   [โˆ’ Labels: MONEY (1.0)]
Span [10,11,12]: "Game of Thrones"   [โˆ’ Labels: WORK_OF_ART (1.0)]

So, the entities "September 1st" (labeled as a date), "George" (labeled as a person), "1 dollar" (labeled as a money) and "Game of Thrones" (labeled as a work of art) are found in the sentence "On September 1st George Washington won 1 dollar while watching Game of Thrones".


Training: Script to train this model

The following Flair script was used to train this model:

from flair.data import Corpus
from flair.datasets import ColumnCorpus
from flair.embeddings import WordEmbeddings, StackedEmbeddings, FlairEmbeddings

# 1. load the corpus (Ontonotes does not ship with Flair, you need to download and reformat into a column format yourself)
corpus: Corpus = ColumnCorpus(
                "resources/tasks/onto-ner",
                column_format={0: "text", 1: "pos", 2: "upos", 3: "ner"},
                tag_to_bioes="ner",
            )

# 2. what tag do we want to predict?
tag_type = 'ner'

# 3. make the tag dictionary from the corpus
tag_dictionary = corpus.make_tag_dictionary(tag_type=tag_type)

# 4. initialize fine-tuneable transformer embeddings WITH document context
from flair.embeddings import TransformerWordEmbeddings

embeddings = TransformerWordEmbeddings(
    model='xlm-roberta-large',
    layers="-1",
    subtoken_pooling="first",
    fine_tune=True,
    use_context=True,
)

# 5. initialize bare-bones sequence tagger (no CRF, no RNN, no reprojection)
from flair.models import SequenceTagger

tagger = SequenceTagger(
    hidden_size=256,
    embeddings=embeddings,
    tag_dictionary=tag_dictionary,
    tag_type='ner',
    use_crf=False,
    use_rnn=False,
    reproject_embeddings=False,
)

# 6. initialize trainer with AdamW optimizer
from flair.trainers import ModelTrainer

trainer = ModelTrainer(tagger, corpus, optimizer=torch.optim.AdamW)

# 7. run training with XLM parameters (20 epochs, small LR)
from torch.optim.lr_scheduler import OneCycleLR

trainer.train('resources/taggers/ner-english-ontonotes-large',
              learning_rate=5.0e-6,
              mini_batch_size=4,
              mini_batch_chunk_size=1,
              max_epochs=20,
              scheduler=OneCycleLR,
              embeddings_storage_mode='none',
              weight_decay=0.,
              )

Cite

Please cite the following paper when using this model.

@misc{schweter2020flert,
    title={FLERT: Document-Level Features for Named Entity Recognition},
    author={Stefan Schweter and Alan Akbik},
    year={2020},
    eprint={2011.06993},
    archivePrefix={arXiv},
    primaryClass={cs.CL}
}

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