Resource-constrained Federated Edge Learning with Heterogeneous Data: Formulation and Analysis
Yi Liu, Yuanshao Zhu, James J.Q. Yu

TL;DR
This paper introduces a communication-efficient distributed Newton-type algorithm for federated edge learning that accelerates convergence and addresses resource constraints, while also proposing a scheme to handle data heterogeneity.
Contribution
It develops a novel approximate Newton algorithm based on Fisher matrices and introduces FedOVA, a scheme to manage heterogeneous data in FEEL.
Findings
The proposed algorithm achieves linear convergence in convex and non-convex cases.
Numerical results demonstrate the algorithm's effectiveness and superiority.
FedOVA effectively handles heterogeneous data in federated learning.
Abstract
Efficient collaboration between collaborative machine learning and wireless communication technology, forming a Federated Edge Learning (FEEL), has spawned a series of next-generation intelligent applications. However, due to the openness of network connections, the FEEL framework generally involves hundreds of remote devices (or clients), resulting in expensive communication costs, which is not friendly to resource-constrained FEEL. To address this issue, we propose a distributed approximate Newton-type algorithm with fast convergence speed to alleviate the problem of FEEL resource (in terms of communication resources) constraints. Specifically, the proposed algorithm is improved based on distributed L-BFGS algorithm and allows each client to approximate the high-cost Hessian matrix by computing the low-cost Fisher matrix in a distributed manner to find a "better" descent direction,…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
