Pubmedncl
PubMedNCL is a pre-trained biomedical document representation language model based on PubMedBERT, fine-tuned through citation neighborhood contrastive learning.
Downloads 223
Release Time : 4/15/2023
Model Overview
This model is used to generate document representations for biomedical papers, suitable for tasks such as information retrieval and literature recommendation.
Model Features
Specialized for Biomedical Domain
Developed based on PubMedBERT, specifically optimized for biomedical literature.
Citation Neighborhood Contrastive Learning
Fine-tuned using the citation neighborhood contrastive learning method proposed by SciNCL to enhance document representation quality.
Title-Abstract Joint Encoding
Uses [SEP] tokens to connect titles and abstracts for joint encoding, capturing complete document information.
Model Capabilities
Biomedical Text Feature Extraction
Document Vector Representation Generation
Scientific Literature Semantic Understanding
Use Cases
Academic Research
Literature Retrieval
Used to build biomedical literature retrieval systems.
Improves the relevance of retrieval results.
Literature Recommendation
Content similarity-based paper recommendation.
Enhances recommendation accuracy.
Featured Recommended AI Models
Š 2025AIbase