BioBERT Base Uncased TensorFlow checkpoint pretrained using LAMB optimizer
Model Overview
BERT for biomedical text-mining.
Model Architecture
In the original BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding paper, pre-training is done on Wikipedia and Books Corpus, with state-of-the-art results demonstrated on SQuAD (Stanford Question Answering Dataset) benchmark.
Meanwhile, many works, including BioBERT, SciBERT, NCBI-BERT, ClinicalBERT (MIT), ClinicalBERT (NYU, Princeton), and others at BioNLP'19 workshop, show that additional pre-training of BERT on large biomedical text corpus such as PubMed results in better performance in biomedical text-mining tasks.
This repository provides scripts and recipe to adopt the NVIDIA BERT code-base to achieve state-of-the-art results in the following biomedical text-mining benchmark tasks:
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BC5CDR-disease A Named-Entity-Recognition task to recognize diseases mentioned in a collection of 1500 PubMed titles and abstracts (Li et al., 2016)
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BC5CDR-chemical A Named-Entity-Recognition task to recognize chemicals mentioned in a collection of 1500 PubMed titles and abstracts (Li et al., 2016)
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ChemProt A Relation-Extraction task to determine chemical-protein interactions in a collection of 1820 PubMed abstracts (Krallinger et al., 2017)
Training
This model was trained using script available on NGC and in GitHub repo.
Dataset
The following datasets were used to train this model:
- PubMed - Database contains more than 33 million citations and abstracts of biomedical literature.
Performance
Performance numbers for this model are available in NGC.
References
License
This model was trained using open-source software available in Deep Learning Examples repository. For terms of use, please refer to the license of the script and the datasets the model was derived from.