A Closer Look at Personalization in Federated Image Classification
Changxing Jing, Yan Huang, Yihong Zhuang, Liyan Sun, Yue Huang,, Zhenlong Xiao, Xinghao Ding

TL;DR
This paper introduces RepPer, a two-stage federated learning framework that separates representation and classifier learning, enabling effective personalization on non-IID data and improving flexibility and performance.
Contribution
It proposes a novel two-stage FL approach that isolates representation learning from classification, enhancing personalization and robustness against data heterogeneity.
Findings
RepPer outperforms existing methods on multiple datasets.
The approach effectively handles non-IID data heterogeneity.
It enables lightweight personalization suitable for edge devices.
Abstract
Federated Learning (FL) is developed to learn a single global model across the decentralized data, while is susceptible when realizing client-specific personalization in the presence of statistical heterogeneity. However, studies focus on learning a robust global model or personalized classifiers, which yield divergence due to inconsistent objectives. This paper shows that it is possible to achieve flexible personalization after the convergence of the global model by introducing representation learning. In this paper, we first analyze and determine that non-IID data harms representation learning of the global model. Existing FL methods adhere to the scheme of jointly learning representations and classifiers, where the global model is an average of classification-based local models that are consistently subject to heterogeneity from non-IID data. As a solution, we separate representation…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
