FedKPer: Tackling Generalization and Personalization in Medical Federated Learning via Knowledge Personalization
TLDR
FedKPer improves medical federated learning by balancing generalization and personalization through knowledge personalization and selective global model alignment.
Key contributions
- Introduces FedKPer to tackle generalization and personalization in medical federated learning.
- Achieves balance via knowledge personalization at local devices and selective global model alignment.
- Emphasizes reliable, label-diverse local updates during global aggregation to mitigate forgetting.
- Improves generalization-personalization trade-off without sacrificing retention in medical FL.
Why it matters
Statistical heterogeneity is a major challenge in medical FL, hindering model generalization and personalization. This paper introduces FedKPer to effectively address this by balancing these two critical aspects. It improves FL's applicability and reliability in diverse healthcare settings.
Original Abstract
Federated learning (FL) holds great potential for medical applications. However, statistical heterogeneity across healthcare institutions poses a major challenge for FL, as the global model struggles both to generalize across unseen patient populations and to adapt to the unique data distributions of individual hospitals. This heterogeneity also exacerbates forgetting at both the global and local level, resulting in previous learned patient patterns to be misclassified after model updates. While prior work has largely treated generalization and personalization as separate challenges, we show that a better balance between the two can be achieved through selective alignment with the global model and a modified aggregation scheme, which together mitigate the effects of statistical heterogeneity. Specifically, we introduce FedKPer, which introduces knowledge personalization into the training stage of each local device. Afterwards, generalization is considered via the global model aggregation process, where local updates that are reliable and label-diverse are emphasized. We evaluate the performance of FedKPer, devising additional metrics that relate to common consequences of forgetting. Overall, we demonstrate FedKPer improves the generalization-personalization trade-off without sacrificing retention.
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