--- language: es tags: - biomedical - clinical - spanish - mdeberta-v3-base license: mit datasets: - "IIC/livingner3" metrics: - f1 model-index: - name: IIC/mdeberta-v3-base-livingner3 results: - task: type: multi-label-classification dataset: name: livingner3 type: IIC/livingner3 split: test metrics: - name: f1 type: f1 value: 0.153 pipeline_tag: text-classification --- # mdeberta-v3-base-livingner3 This model is a finetuned version of mdeberta-v3-base for the livingner3 dataset used in a benchmark in the paper TODO. The model has a F1 of 0.153 Please refer to the original publication for more information TODO LINK ## Parameters used | parameter | Value | |-------------------------|:-----:| | batch size | 64 | | learning rate | 1e-05 | | classifier dropout | 0.2 | | warmup ratio | 0 | | warmup steps | 0 | | weight decay | 0 | | optimizer | AdamW | | epochs | 10 | | early stopping patience | 3 | ## BibTeX entry and citation info ```bibtex TODO ```