en_legal_ner_trf / README.md
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metadata
tags:
  - spacy
  - token-classification
widget:
  - text: >-
      Section 319 Cr.P.C. contemplates a situation where the evidence adduced by
      the prosecution for Respondent No.3-G. Sambiah on 20th June 1984
  - text: |
      In The High Court Of Kerala At Ernakulam

      Crl Mc No. 1622 of 2006()


      1. T.R.Ajayan, S/O. O.Raman,
                            ...  Petitioner

                              Vs



      1. M.Ravindran,
                             ...       Respondent

      2. Mrs. Nirmala Dinesh, W/O. Dinesh,

                      For Petitioner  :Sri.A.Kumar

                      For Respondent  :Smt.M.K.Pushpalatha

      The Hon'ble Mr. Justice P.R.Raman
      The Hon'ble Mr. Justice V.K.Mohanan

       Dated :07/01/2008

       O R D E R
language:
  - en
license: mit
model-index:
  - name: en_legal_ner_trf
    results:
      - task:
          type: token-classification
          name: Named Entity Recognition
        dataset:
          type: Named Entity Recognition
          name: InLegalNER
          split: Test
        metrics:
          - type: F1-Score
            value: 91.076
            name: Test F1-Score

To Update

[AUTHORS] "[PAPER NAME]". [PAPER DETAILS] [PAPER LINK]


Indian Legal Named Entity Recognition(NER): Identifying relevant named entities in an Indian legal judgement using legal NER trained on spacy.

Scores

Type Score
F1-Score 91.076
Precision 91.979
Recall 90.19
Feature Description
Name en_legal_ner_trf
Version 3.2.0
spaCy >=3.2.2,<3.3.0
Default Pipeline transformer, ner
Components transformer, ner
Vectors 0 keys, 0 unique vectors (0 dimensions)
Sources InLegalNER Train Data GitHub
License MIT
Author Aman Tiwari

Load Pretrained Model

Install the model using pip

pip install https://huggingface.co/opennyaiorg/en_legal_ner_trf/resolve/main/en_legal_ner_trf-any-py3-none-any.whl

Using pretrained NER model

# Using spacy.load().
import spacy
nlp = spacy.load("en_legal_ner_trf")
text = "Section 319 Cr.P.C. contemplates a situation where the evidence adduced by the prosecution for Respondent No.3-G. Sambiah on 20th June 1984"
doc = nlp(text)

# Print indentified entites
for ent in doc.ents:
     print(ent,ent.label_)

##OUTPUT     
#Section 319 PROVISION
#Cr.P.C. STATUTE
#G. Sambiah RESPONDENT
#20th June 1984 DATE

Label Scheme

View label scheme (14 labels for 1 components)
ENTITY BELONGS TO
LAWYER PREAMBLE
COURT PREAMBLE, JUDGEMENT
JUDGE PREAMBLE, JUDGEMENT
PETITIONER PREAMBLE, JUDGEMENT
RESPONDENT PREAMBLE, JUDGEMENT
CASE_NUMBER JUDGEMENT
GPE JUDGEMENT
DATE JUDGEMENT
ORG JUDGEMENT
STATUTE JUDGEMENT
WITNESS JUDGEMENT
PRECEDENT JUDGEMENT
PROVISION JUDGEMENT
OTHER_PERSON JUDGEMENT

Author - Publication

[CITATION DETAILS]