Comments (3)
Hi, Jun: Thanks for you release the code!! I followed the sh file provided in git, but the results I reproduced on the IU_Xray dataset are very different from the results in the paper, did I miss something?
Hi, thanks for your interest, please refer to issue 3 to see the details about this. Generally speaking, you may need to tune some hyper-parameters, e.g., learning rate.
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Related Issues (12)
- Problem on the val/test step HOT 4
- About CheXpert labeler HOT 2
- Some questions about the prototype matrix HOT 2
- iu_xray HOT 1
- Some questions about the DataParallel. HOT 4
- Great work. Have you done any preprocessing on the mimic dataset? HOT 1
- how to train the model to get the result same as the paper? HOT 7
- How to get the init_prototypes.pt and labels_14.pickle? HOT 7
- How to get the init_prototypes.pt ? HOT 1
- IUXray: train test validation split affecting token/id mappings HOT 5
- MIMIC annotation.json HOT 1
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