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FSNER

Implemented by sayef.

Overview

The FSNER model was proposed in Example-Based Named Entity Recognition 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 25 ontonotes5, conll2003, wnut2017, mit_movie_trivia, mit_restaurant 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 install . and import the model as shown in the code example below

    or

  3. Clone repo and add absolute path of fsner/src directory to your PYTHONPATH and import the model as shown in the code example below

import json

from fsner import FSNERModel, FSNERTokenizerUtils, pretty_embed

query_texts = [
    "Does Luke's serve lunch?",
    "Chang does not speak Taiwanese very well.",
    "I like Berlin."
]

# Each list in supports are the examples of one entity type
# Wrap entities around with [E] and [/E] in the examples.
# Each sentence should have only one pair of [E] ... [/E]

support_texts = {
    "Restaurant": [
        "What time does [E] Subway [/E] open for breakfast?",
        "Is there a [E] China Garden [/E] restaurant in newark?",
        "Does [E] Le Cirque [/E] have valet parking?",
        "Is there a [E] McDonalds [/E] on main street?",
        "Does [E] Mike's Diner [/E] offer huge portions and outdoor dining?"
    ],
    "Language": [
        "Although I understood no [E] French [/E] in those days , I was prepared to spend the whole day with Chien - chien .",
        "like what the hell 's that called in [E] English [/E] ? I have to register to be here like since I 'm a foreigner .",
        "So , I 'm also working on an [E] English [/E] degree because that 's my real interest .",
        "Al - Jazeera TV station , established in November 1996 in Qatar , is an [E] Arabic - language [/E] news TV station broadcasting global news and reports nonstop around the clock .",
        "They think it 's far better for their children to be here improving their [E] English [/E] than sitting at home in front of a TV . \"",
        "The only solution seemed to be to have her learn [E] French [/E] .",
        "I have to read sixty pages of [E] Russian [/E] today ."
    ]
}

device = 'cpu'

tokenizer = FSNERTokenizerUtils("sayef/fsner-bert-base-uncased")
queries = tokenizer.tokenize(query_texts).to(device)
supports = tokenizer.tokenize(list(support_texts.values())).to(device)

model = FSNERModel("sayef/fsner-bert-base-uncased")
model.to(device)

p_starts, p_ends = model.predict(queries, supports)

# One can prepare supports once and reuse  multiple times with different queries
# ------------------------------------------------------------------------------
# start_token_embeddings, end_token_embeddings = model.prepare_supports(supports)
# p_starts, p_ends = model.predict(queries, start_token_embeddings=start_token_embeddings,
#                                  end_token_embeddings=end_token_embeddings)

output = tokenizer.extract_entity_from_scores(query_texts, queries, p_starts, p_ends,
                                              entity_keys=list(support_texts.keys()), thresh=0.50)

print(json.dumps(output, indent=2))

# install displacy for pretty embed
pretty_embed(query_texts, output, list(support_texts.keys()))
displaCy
Does Luke's Restaurant serve lunch?
Chang does not speak Taiwanese Language very well.
I like Berlin.

Datasets preparation

  1. We need to convert dataset into the following format. Let's say we have a dataset file train.json like following.
  2. Each list in supports are the examples of one entity type
  3. Wrap entities around with [E] and [/E] in the examples.
  4. Each example should have only one pair of [E] ... [/E].
{
  "CARDINAL_NUMBER": [
    "Washington , cloudy , [E] 2 [/E] to 6 degrees .",
    "New Dehli , sunny , [E] 6 [/E] to 19 degrees .",
    "Well this is number [E] two [/E] .",
    "....."
  ],
  "LANGUAGE": [
    "They do n't have the Quicken [E] Dutch [/E] version ?",
    "they learned a lot of [E] German [/E] .",
    "and then [E] Dutch [/E] it 's Mifrau",
    "...."
  ],
  "MONEY": [
    "Per capita personal income ranged from $ [E] 11,116 [/E] in Mississippi to $ 23,059 in Connecticut ... .",
    "The trade surplus was [E] 582 million US dollars [/E] .",
    "It settled with a loss of 4.95 cents at $ [E] 1.3210 [/E] a pound .",
    "...."
  ]
}
  1. Converted ontonotes5 dataset can be found here:

    1. train
    2. dev
  2. Then trainer script can be used to train/evaluate your fsner model.

fsner trainer --pretrained-model bert-base-uncased --mode train --train-data train.json --val-data val.json \
                --train-batch-size 6 --val-batch-size 6 --n-examples-per-entity 10 --neg-example-batch-ratio 1/3 --max-epochs 25 --device gpu \
                --gpus -1 --strategy ddp
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