uk_ner_web_trf_13class
Model description
uk_ner_web_trf_13class is a fine-tuned Roberta Large Ukrainian model that is ready to use for Named Entity Recognition and achieves a new SoA performance for the NER task for Ukrainian language.
It has a solid performance and has been trained to recognize thirteen types of entities:
- ORG — a name of a company, brand, agency, organization, institution (including religious, informal, non-profit), party, people's association, or specific project like a conference, a music band, a TV program, etc. Example: UNESCO.
- PERS — a person name where person may refer to humans, book characters, or humanoid creatures like vampires, ghosts, mermaids, etc. Example: Marquis de Sade.
- LOC — a geographical name, including names of districts, villages, cities, states, counties, countries, continents, rivers, lakes, seas, oceans, mountains, etc. Example: Ukraine.
- MON — a sum of money including the currency. Examples: $40, 1 mln hryvnias.
- PCT — a percent value including the percent sign or the word "percent". Example: 10%.
- DATE — a full or incomplete calendar date that may include a century, a year, a month, a day. Examples: last week, 10.12.1999.
- TIME — a textual or numerical timestamp. Examples: half past six, 18:30.
- PERIOD — a time period, which may consist of two dates. Examples: a few months, 2014-2015.
- JOB — a job title. Examples: member of parliament, ophthalmologist.
- DOC — a unique name of a document, including names of contracts, orders, bills, purchases. Example: procurement contract CW2244226.
- QUANT — a quantity with the unit of measurement, such as weight, distance, size. Examples: 3 kilograms, a hundred miles.
- ART (artifact) — a name of a human-made product, like a book, a song, a car, or a sandwich. Examples: Mona Lisa, iPhone.
- MISC — any other entity not covered in the list above, like nam*s of holidays, websites, battles, wars, sports events, hurricanes, etc. Example: Black Friday.
The model was fine-tuned on the NER-UK 2.0 dataset, released by the lang-uk.
Another transformer-based model trained on 4 classes for the SpaCy is available here.
Citation
TBA
Copyright: Dmytro Chaplynskyi, Mariana Romanyshyn, lang-uk project, 2024
- Downloads last month
- 20
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social
visibility and check back later, or deploy to Inference Endpoints (dedicated)
instead.
Evaluation results
- NER Precisionself-reported0.898
- NER Recallself-reported0.886
- NER F Scoreself-reported0.892