The Diversity Bonus: Learning from Dissimilar Distributed Clients in Personalized Federated Learning
Xinghao Wu, Xuefeng Liu, Jianwei Niu, Guogang Zhu, Shaojie Tang,, Xiaotian Li, and Jiannong Cao

TL;DR
This paper introduces DiversiFed, a novel personalized federated learning approach that enables clients to learn from dissimilar clients by encouraging model diversity, leading to improved performance in highly non-IID scenarios.
Contribution
DiversiFed is the first method to explicitly promote learning from dissimilar clients in personalized federated learning, using a novel loss function based on model similarity.
Findings
DiversiFed outperforms state-of-the-art methods on multiple datasets.
Learning from dissimilar clients improves personalization in non-IID settings.
The proposed loss function effectively balances attraction and repulsion among models.
Abstract
Personalized Federated Learning (PFL) is a commonly used framework that allows clients to collaboratively train their personalized models. PFL is particularly useful for handling situations where data from different clients are not independent and identically distributed (non-IID). Previous research in PFL implicitly assumes that clients can gain more benefits from those with similar data distributions. Correspondingly, methods such as personalized weight aggregation are developed to assign higher weights to similar clients during training. We pose a question: can a client benefit from other clients with dissimilar data distributions and if so, how? This question is particularly relevant in scenarios with a high degree of non-IID, where clients have widely different data distributions, and learning from only similar clients will lose knowledge from many other clients. We note that when…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
