PubMedBERT for biomedical extractive summarization

Description

PubMedBERT fine-tuned on MS^2 for extractive summarization.
Model architecture is similar to BERTSum.
Training code is available at biomed-ext-summ.

Usage

summarizer = pipeline("summarization",
  model = "NotXia/pubmedbert-bio-ext-summ",
  tokenizer = AutoTokenizer.from_pretrained("NotXia/pubmedbert-bio-ext-summ"),
  trust_remote_code = True,
  device = 0
)

sentences = ["sent1.", "sent2.", "sent3?"]
summarizer({"sentences": sentences}, strategy="count", strategy_args=2)
>>> (['sent1.', 'sent2.'], [0, 1])

Strategies

Strategies to summarize the document: