State-of-the-Art NER models - General purpose
Collection
5 items
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Updated
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This is a SpanMarker model trained on the FewNERD dataset that can be used for Named Entity Recognition. This SpanMarker model uses bert-base-cased as the underlying encoder.
Label | Examples |
---|---|
art-broadcastprogram | "Street Cents", "Corazones", "The Gale Storm Show : Oh , Susanna" |
art-film | "Bosch", "L'Atlantide", "Shawshank Redemption" |
art-music | "Atkinson , Danko and Ford ( with Brockie and Hilton )", "Champion Lover", "Hollywood Studio Symphony" |
art-other | "Aphrodite of Milos", "Venus de Milo", "The Today Show" |
art-painting | "Production/Reproduction", "Touit", "Cofiwch Dryweryn" |
art-writtenart | "Imelda de ' Lambertazzi", "Time", "The Seven Year Itch" |
building-airport | "Luton Airport", "Newark Liberty International Airport", "Sheremetyevo International Airport" |
building-hospital | "Hokkaido University Hospital", "Yeungnam University Hospital", "Memorial Sloan-Kettering Cancer Center" |
building-hotel | "The Standard Hotel", "Radisson Blu Sea Plaza Hotel", "Flamingo Hotel" |
building-library | "British Library", "Berlin State Library", "Bayerische Staatsbibliothek" |
building-other | "Communiplex", "Alpha Recording Studios", "Henry Ford Museum" |
building-restaurant | "Fatburger", "Carnegie Deli", "Trumbull" |
building-sportsfacility | "Glenn Warner Soccer Facility", "Boston Garden", "Sports Center" |
building-theater | "Pittsburgh Civic Light Opera", "Sanders Theatre", "National Paris Opera" |
event-attack/battle/war/militaryconflict | "Easter Offensive", "Vietnam War", "Jurist" |
event-disaster | "the 1912 North Mount Lyell Disaster", "1693 Sicily earthquake", "1990s North Korean famine" |
event-election | "March 1898 elections", "1982 Mitcham and Morden by-election", "Elections to the European Parliament" |
event-other | "Eastwood Scoring Stage", "Union for a Popular Movement", "Masaryk Democratic Movement" |
event-protest | "French Revolution", "Russian Revolution", "Iranian Constitutional Revolution" |
event-sportsevent | "National Champions", "World Cup", "Stanley Cup" |
location-GPE | "Mediterranean Basin", "the Republic of Croatia", "Croatian" |
location-bodiesofwater | "Atatürk Dam Lake", "Norfolk coast", "Arthur Kill" |
location-island | "Laccadives", "Staten Island", "new Samsat district" |
location-mountain | "Salamander Glacier", "Miteirya Ridge", "Ruweisat Ridge" |
location-other | "Northern City Line", "Victoria line", "Cartuther" |
location-park | "Gramercy Park", "Painted Desert Community Complex Historic District", "Shenandoah National Park" |
location-road/railway/highway/transit | "Friern Barnet Road", "Newark-Elizabeth Rail Link", "NJT" |
organization-company | "Dixy Chicken", "Texas Chicken", "Church 's Chicken" |
organization-education | "MIT", "Belfast Royal Academy and the Ulster College of Physical Education", "Barnard College" |
organization-government/governmentagency | "Congregazione dei Nobili", "Diet", "Supreme Court" |
organization-media/newspaper | "TimeOut Melbourne", "Clash", "Al Jazeera" |
organization-other | "Defence Sector C", "IAEA", "4th Army" |
organization-politicalparty | "Shimpotō", "Al Wafa ' Islamic", "Kenseitō" |
organization-religion | "Jewish", "Christian", "UPCUSA" |
organization-showorganization | "Lizzy", "Bochumer Symphoniker", "Mr. Mister" |
organization-sportsleague | "China League One", "First Division", "NHL" |
organization-sportsteam | "Tottenham", "Arsenal", "Luc Alphand Aventures" |
other-astronomything | "Zodiac", "Algol", "`` Caput Larvae ''" |
other-award | "GCON", "Order of the Republic of Guinea and Nigeria", "Grand Commander of the Order of the Niger" |
other-biologything | "N-terminal lipid", "BAR", "Amphiphysin" |
other-chemicalthing | "uranium", "carbon dioxide", "sulfur" |
other-currency | "$", "Travancore Rupee", "lac crore" |
other-disease | "French Dysentery Epidemic of 1779", "hypothyroidism", "bladder cancer" |
other-educationaldegree | "Master", "Bachelor", "BSc ( Hons ) in physics" |
other-god | "El", "Fujin", "Raijin" |
other-language | "Breton-speaking", "English", "Latin" |
other-law | "Thirty Years ' Peace", "Leahy–Smith America Invents Act ( AIA", "United States Freedom Support Act" |
other-livingthing | "insects", "monkeys", "patchouli" |
other-medical | "Pediatrics", "amitriptyline", "pediatrician" |
person-actor | "Ellaline Terriss", "Tchéky Karyo", "Edmund Payne" |
person-artist/author | "George Axelrod", "Gaetano Donizett", "Hicks" |
person-athlete | "Jaguar", "Neville", "Tozawa" |
person-director | "Bob Swaim", "Richard Quine", "Frank Darabont" |
person-other | "Richard Benson", "Holden", "Campbell" |
person-politician | "William", "Rivière", "Emeric" |
person-scholar | "Stedman", "Wurdack", "Stalmine" |
person-soldier | "Helmuth Weidling", "Krukenberg", "Joachim Ziegler" |
product-airplane | "Luton", "Spey-equipped FGR.2s", "EC135T2 CPDS" |
product-car | "100EX", "Corvettes - GT1 C6R", "Phantom" |
product-food | "red grape", "yakiniku", "V. labrusca" |
product-game | "Airforce Delta", "Hardcore RPG", "Splinter Cell" |
product-other | "Fairbottom Bobs", "X11", "PDP-1" |
product-ship | "Congress", "Essex", "HMS `` Chinkara ''" |
product-software | "AmiPDF", "Apdf", "Wikipedia" |
product-train | "High Speed Trains", "55022", "Royal Scots Grey" |
product-weapon | "AR-15 's", "ZU-23-2M Wróbel", "ZU-23-2MR Wróbel II" |
from span_marker import SpanMarkerModel
# Download from the 🤗 Hub
model = SpanMarkerModel.from_pretrained("tomaarsen/span-marker-bert-base-fewnerd-fine-super")
# Run inference
entities = model.predict("Amelia Earhart flew her single engine Lockheed Vega 5B across the Atlantic to Paris.")
You can finetune this model on your own dataset.
from span_marker import SpanMarkerModel, Trainer
# Download from the 🤗 Hub
model = SpanMarkerModel.from_pretrained("tomaarsen/span-marker-bert-base-fewnerd-fine-super")
# Specify a Dataset with "tokens" and "ner_tag" columns
dataset = load_dataset("conll2003") # For example CoNLL2003
# Initialize a Trainer using the pretrained model & dataset
trainer = Trainer(
model=model,
train_dataset=dataset["train"],
eval_dataset=dataset["validation"],
)
trainer.train()
trainer.save_model("tomaarsen/span-marker-bert-base-fewnerd-fine-super-finetuned")
Training set | Min | Median | Max |
---|---|---|---|
Sentence length | 1 | 24.4945 | 267 |
Entities per sentence | 0 | 2.5832 | 88 |
Base model
google-bert/bert-base-cased