--- language: en datasets: - wnut_17 license: mit metrics: - f1 widget: - text: "Manchester played Liverpool last night in Liverpool." example_title: "Metonyms" - text: "i live in brum - slang for birmingham" example_title: "Slang / informal text" --- # Reddit NER for place names Fine-tuned `bert-base-uncased` for named entity recognition, trained using `wnut_17` with 498 additional comments from Reddit. This model is intended solely for place name extraction from social media text, other entities have therefore been removed. This model was created with two key goals: 1. Improved NER results on social media 2. Target only place names In theory this model should be able to detect and ignore metonyms. For example in the sentence: `Manchester played Liverpool last night in Liverpool.` Both Manchester and the first Liverpool mention refer to football teams, therefore the model outputs: ```python [ { "entity_group": "location", "score": 0.9975672, "word": "liverpool", "start": 42, "end": 51, } ] ``` ## Use in `transformers` ```python from transformers import pipeline generator = pipeline( task="ner", model="cjber/reddit-ner-place_names", tokenizer="cjber/reddit-ner-place_names", aggregation_strategy="first", ) out = generator("I like reading books. I live in Reading.") ``` `out` gives: ```python [ { "entity_group": "location", "score": 0.94123614, "word": "reading", "start": 32, "end": 39, } ] ```