Fine-tuned NER Model for DiMB-RE
Model Description
This is a fine-tuned Named Entity Recognition (NER) model based on the BiomedNLP-BiomedBERT-base-uncased model, specifically designed for span prediction task to extract entity and trigger mentions for diet, human metabolism and microbiome field. The model has been trained on the DiMB-RE dataset and is optimized to identify spans for 15 different entity types, as well as 13 different trigger types.
Performance
The model has been evaluated on the DiMB-RE using the following metrics:
- NER - P: 0.777, R: 0.745, F1: 0.760
- NER Relaxed - P: 0.852, R: 0.788, F1: 0.819
- TRG - P: 0.691, R: 0.631, F1: 0.660
- TRG Relaxed - P: 0.742, R: 0.678, F1: 0.708
Citation
If you use this model, please cite like below:
@misc{hong2024dimbreminingscientificliterature,
title={DiMB-RE: Mining the Scientific Literature for Diet-Microbiome Associations},
author={Gibong Hong and Veronica Hindle and Nadine M. Veasley and Hannah D. Holscher and Halil Kilicoglu},
year={2024},
eprint={2409.19581},
archivePrefix={arXiv},
primaryClass={cs.CL},
url={https://arxiv.org/abs/2409.19581},
}
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