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Enable the Right to be Forgotten with Federated Client Unlearning in Medical Imaging

About

The right to be forgotten, as stated in most data regulations, poses an underexplored challenge in federated learning (FL), leading to the development of federated unlearning (FU). However, current FU approaches often face trade-offs between efficiency, model performance, forgetting efficacy, and privacy preservation. In this paper, we delve into the paradigm of Federated Client Unlearning (FCU) to guarantee a client the right to erase the contribution or the influence, introducing the first FU framework in medical imaging. In the unlearning process of a client, the proposed model-contrastive unlearning marks a pioneering step towards feature-level unlearning, and frequency-guided memory preservation ensures smooth forgetting of local knowledge while maintaining the generalizability of the trained global model, thus avoiding performance compromises and guaranteeing rapid post-training. We evaluated our FCU framework on two public medical image datasets, including Intracranial hemorrhage diagnosis and skin lesion diagnosis, demonstrating that our framework outperformed other state-of-the-art FU frameworks, with an expected speed-up of 10-15 times compared with retraining from scratch. The code and the organized datasets can be found at: https://github.com/dzp2095/FCU.

Zhipeng Deng, Luyang Luo, Hao Chen• 2024

Related benchmarks

TaskDatasetResultRank
Image ClassificationCaltech-101
Accuracy15.5
198
Federated UnlearningCIFAR-10 (Retain)
Accuracy100
14
Image ClassificationCaltech-101 non-IID (β = 0.1) (Retain)
Accuracy99.34
12
Image ClassificationCaltech-101 standard (test)
Accuracy48.46
6
Federated UnlearningCaltech-101 standard (All)
Average Gap0.17
6
Image ClassificationCaltech-101 non-IID (β = 0.1) (Forget)
Accuracy52.01
6
Membership Inference AttackCaltech-101 Forget standard
MIA Success Rate73.1
6
Image ClassificationCaltech-101 standard (Retain)
Accuracy99.51
6
Federated UnlearningCIFAR-10 (Forget)
Accuracy87.51
5
Federated UnlearningCIFAR-100 (Retain)
Accuracy99.92
4
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