Decentralized Directed Collaboration for Personalized Federated Learning
Yingqi Liu, Yifan Shi, Qinglun Li, Baoyuan Wu, Xueqian Wang, Li Shen

TL;DR
This paper introduces a novel decentralized federated learning framework using directed collaboration and partial gradient push, improving personalization, resource efficiency, and convergence in heterogeneous environments.
Contribution
It proposes DFedPGP, a directed, decentralized PFL method that personalizes models and guarantees faster convergence with resource-efficient gradient sharing.
Findings
Achieves state-of-the-art accuracy in heterogeneous settings.
Proves faster convergence rate of O(1/√T).
Demonstrates benefits of directed collaboration over undirected methods.
Abstract
Personalized Federated Learning (PFL) is proposed to find the greatest personalized models for each client. To avoid the central failure and communication bottleneck in the server-based FL, we concentrate on the Decentralized Personalized Federated Learning (DPFL) that performs distributed model training in a Peer-to-Peer (P2P) manner. Most personalized works in DPFL are based on undirected and symmetric topologies, however, the data, computation and communication resources heterogeneity result in large variances in the personalized models, which lead the undirected aggregation to suboptimal personalized performance and unguaranteed convergence. To address these issues, we propose a directed collaboration DPFL framework by incorporating stochastic gradient push and partial model personalized, called \textbf{D}ecentralized \textbf{Fed}erated \textbf{P}artial \textbf{G}radient…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
