Analise de Desaprendizado de Maquina em Modelos de Classificacao de Imagens Medicas
- URL: http://arxiv.org/abs/2508.18509v1
- Date: Mon, 25 Aug 2025 21:28:33 GMT
- Title: Analise de Desaprendizado de Maquina em Modelos de Classificacao de Imagens Medicas
- Authors: Andreza M. C. Falcao, Filipe R. Cordeiro,
- Abstract summary: Machine unlearning aims to remove private or sensitive data from a pre-trained model while preserving the model's robustness.<n>This work evaluates the SalUn unlearning model by conducting experiments on the PathMNIST, OrganAMNIST, and BloodMNIST datasets.<n>Results show that SalUn achieves performance close to full retraining, indicating an efficient solution for use in medical applications.
- Score: 0.5647577824219207
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Machine unlearning aims to remove private or sensitive data from a pre-trained model while preserving the model's robustness. Despite recent advances, this technique has not been explored in medical image classification. This work evaluates the SalUn unlearning model by conducting experiments on the PathMNIST, OrganAMNIST, and BloodMNIST datasets. We also analyse the impact of data augmentation on the quality of unlearning. Results show that SalUn achieves performance close to full retraining, indicating an efficient solution for use in medical applications.
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