Introduction

Three variants of the model is built with Spacy3 for grant applications. A simple named entity recognition custom model from scratch with annotation tool prodi.gy. Github info: https://github.com/RaThorat/ner_model_prodigy The most general model is 'en_grantss'. The model en_ncv is more suitable to extract entities from narrative CV's. The model en_grant is the first model in the series.

Feature Description
Name en_grant
Version 0.0.0
spaCy >=3.4.3,<3.5.0
Default Pipeline tok2vec, ner
Components tok2vec, ner
Vectors 0 keys, 0 unique vectors (0 dimensions)
Sources research grant applications
License n/a
Author Rahul Thorat

Label Scheme

View label scheme (18 labels for 1 components)
Component Labels
ner ACTIVITY, DISCIPLINE, GPE, JOURNAL, KEYWORD, LICENSE, MEDIUM, METASTD, MONEY, ORG, PERSON, POSITION, PRODUCT, RECOGNITION, REF, REPOSITORY, WEBSITE, YEAR

Accuracy

Type Score
ENTS_F 76.04
ENTS_P 81.51
ENTS_R 71.25
TOK2VEC_LOSS 9725604.63
NER_LOSS 930155.13
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Evaluation results