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Autori principali: Zhang, Yong, Liang, Feng, Yuan, Guanghu, Yang, Min, Li, Chengming, Hu, Xiping
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.04781
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author Zhang, Yong
Liang, Feng
Yuan, Guanghu
Yang, Min
Li, Chengming
Hu, Xiping
author_facet Zhang, Yong
Liang, Feng
Yuan, Guanghu
Yang, Min
Li, Chengming
Hu, Xiping
contents Federated learning (FL) enables collaborative training of a global model in the centralized server with data from multiple parties while preserving privacy. However, data heterogeneity can significantly degrade the performance of the global model when each party uses datasets from different sources to train a local model, thereby affecting personalized local models. Among various cases of data heterogeneity, feature drift, feature space difference among parties, is prevalent in real-life data but remains largely unexplored. Feature drift can distract feature extraction learning in clients and thus lead to poor feature extraction and classification performance. To tackle the problem of feature drift in FL, we propose FedPall, an FL framework that utilizes prototype-based adversarial learning to unify feature spaces and collaborative learning to reinforce class information within the features. Moreover, FedPall leverages mixed features generated from global prototypes and local features to enhance the global classifier with classification-relevant information from a global perspective. Evaluation results on three representative feature-drifted datasets demonstrate FedPall's consistently superior performance in classification with feature-drifted data in the FL scenario.
format Preprint
id arxiv_https___arxiv_org_abs_2507_04781
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FedPall: Prototype-based Adversarial and Collaborative Learning for Federated Learning with Feature Drift
Zhang, Yong
Liang, Feng
Yuan, Guanghu
Yang, Min
Li, Chengming
Hu, Xiping
Machine Learning
Federated learning (FL) enables collaborative training of a global model in the centralized server with data from multiple parties while preserving privacy. However, data heterogeneity can significantly degrade the performance of the global model when each party uses datasets from different sources to train a local model, thereby affecting personalized local models. Among various cases of data heterogeneity, feature drift, feature space difference among parties, is prevalent in real-life data but remains largely unexplored. Feature drift can distract feature extraction learning in clients and thus lead to poor feature extraction and classification performance. To tackle the problem of feature drift in FL, we propose FedPall, an FL framework that utilizes prototype-based adversarial learning to unify feature spaces and collaborative learning to reinforce class information within the features. Moreover, FedPall leverages mixed features generated from global prototypes and local features to enhance the global classifier with classification-relevant information from a global perspective. Evaluation results on three representative feature-drifted datasets demonstrate FedPall's consistently superior performance in classification with feature-drifted data in the FL scenario.
title FedPall: Prototype-based Adversarial and Collaborative Learning for Federated Learning with Feature Drift
topic Machine Learning
url https://arxiv.org/abs/2507.04781