FSNER LOGO

Implemented by sayef .

## Overview The FSNER model was proposed in [Example-Based Named Entity Recognition](https://arxiv.org/abs/2008.10570) by Morteza Ziyadi, Yuting Sun, Abhishek Goswami, Jade Huang, Weizhu Chen. To identify entity spans in a new domain, it uses a train-free few-shot learning approach inspired by question-answering. ## Abstract ---- > We present a novel approach to named entity recognition (NER) in the presence of scarce data that we call example-based NER. Our train-free few-shot learning approach takes inspiration from question-answering to identify entity spans in a new and unseen domain. In comparison with the current state-of-the-art, the proposed method performs significantly better, especially when using a low number of support examples. ## Model Training Details ----- | identifier | epochs | datasets | | ---------- |:----------:| :-----:| | [sayef/fsner-bert-base-uncased](https://huggingface.co/sayef/fsner-bert-base-uncased) | 10 | ontonotes5, conll2003, wnut2017, and fin (Alvarado et al.). | ## Installation and Example Usage ------ You can use the FSNER model in 3 ways: 1. Install directly from PyPI: `pip install fsner` and import the model as shown in the code example below or 2. Install from source: `python setup.py install` and import the model as shown in the code example below or 3. Clone repo and change directory to `src` and import the model as shown in the code example below ```python from fsner import FSNERModel, FSNERTokenizerUtils model = FSNERModel("sayef/fsner-bert-base-uncased") tokenizer = FSNERTokenizerUtils("sayef/fsner-bert-base-uncased") # size of query and supports must be the same. If you want to find all the entitites in one particular query, just repeat the same query n times where n is equal to the number of supports (or entities). query = [ 'KWE 4000 can reach with a maximum speed from up to 450 P/min an accuracy from 50 mg', 'I would like to order a computer from eBay.', ] # each list in supports are the examples of one entity type # wrap entities around with [E] and [/E] in the examples supports = [ [ 'Horizontal flow wrapper [E] Pack 403 [/E] features the new retrofit-kit „paper-ON-form“', '[E] Paloma Pick-and-Place-Roboter [/E] arranges the bakery products for the downstream tray-forming equipment', 'Finally, the new [E] Kliklok ACE [/E] carton former forms cartons and trays without the use of glue', 'We set up our pilot plant with the right [E] FibreForm® [/E] configuration to make prototypes for your marketing tests and package validation', 'The [E] CAR-T5 [/E] is a reliable, purely mechanically driven cartoning machine for versatile application fields' ], [ "[E] Walmart [/E] is a leading e-commerce company", "I recently ordered a book from [E] Amazon [/E]", "I ordered this from [E] ShopClues [/E]", "[E] Flipkart [/E] started it's journey from zero" ] ] device = 'cpu' W_query = tokenizer.tokenize(query).to(device) W_supports = tokenizer.tokenize(supports).to(device) start_prob, end_prob = model(W_query, W_supports) output = tokenizer.extract_entity_from_scores(query, W_query, start_prob, end_prob, thresh=0.50) print(output) ```