|
--- |
|
license: cc-by-4.0 |
|
widget: |
|
- text: This house was let out in tiny tenements and was inhabited by working people of all kinds--tailors, locksmiths, cooks, Germans ofsorts, girls picking up a living as best they could, petty clerks, etc. |
|
example_title: "Crime and Punishment" |
|
- text: Quixote having got on his back and the duke mounted a fine horse, they placed the duchess in the middle and set out for the castle. |
|
example_title: "Don Quixote" |
|
- text: The noble carriage of this gentleman, for whom he believed himself to be engaged, had won Planchet—that was the name of the Picard. |
|
example_title: "The Three Musketeers" |
|
--- |
|
### Description |
|
A `roberta-base` model which has been fine tuned for token classification on the [LitBank](https://github.com/dbamman/litbank) dataset. |
|
|
|
### Intended Use |
|
This model is ready to be used for entity recognition. It is capable of tagging the 6 entity types from [ACE 2005](https://www.ldc.upenn.edu/sites/www.ldc.upenn.edu/files/english-entities-guidelines-v6.6.pdf) |
|
- Person (PER) |
|
- ORG |
|
- GPE |
|
- LOC |
|
- VEH |
|
- FAC |
|
|
|
Due to the fine-tuning domain, it is expected to work best with literary sentences. |
|
|