A Communication-Efficient Federated Learning Framework for Sustainable Development Using Lemurs Optimizer

Algorithms Pub Date : 2024-04-15 DOI:10.3390/a17040160
M. Al-Betar, A. Abasi, Zaid Abdi Alkareem Alyasseri, Salam Fraihat, Raghad Falih Mohammed
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Abstract

The pressing need for sustainable development solutions necessitates innovative data-driven tools. Machine learning (ML) offers significant potential, but faces challenges in centralized approaches, particularly concerning data privacy and resource constraints in geographically dispersed settings. Federated learning (FL) emerges as a transformative paradigm for sustainable development by decentralizing ML training to edge devices. However, communication bottlenecks hinder its scalability and sustainability. This paper introduces an innovative FL framework that enhances communication efficiency. The proposed framework addresses the communication bottleneck by harnessing the power of the Lemurs optimizer (LO), a nature-inspired metaheuristic algorithm. Inspired by the cooperative foraging behavior of lemurs, the LO strategically selects the most relevant model updates for communication, significantly reducing communication overhead. The framework was rigorously evaluated on CIFAR-10, MNIST, rice leaf disease, and waste recycling plant datasets representing various areas of sustainable development. Experimental results demonstrate that the proposed framework reduces communication overhead by over 15% on average compared to baseline FL approaches, while maintaining high model accuracy. This breakthrough extends the applicability of FL to resource-constrained environments, paving the way for more scalable and sustainable solutions for real-world initiatives.
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利用 Lemurs Optimizer 建立通信效率高的可持续发展联合学习框架
可持续发展解决方案的迫切需求需要创新的数据驱动工具。机器学习(ML)具有巨大的潜力,但在集中式方法中面临着挑战,特别是在地理位置分散的环境中,数据隐私和资源限制方面。联邦学习(FL)通过将 ML 训练分散到边缘设备,成为可持续发展的变革范例。然而,通信瓶颈阻碍了其可扩展性和可持续性。本文介绍了一种能提高通信效率的创新型分布式学习框架。所提出的框架通过利用 Lemurs 优化器(LO)的力量来解决通信瓶颈问题,LO 是一种受大自然启发的元启发算法。受狐猴合作觅食行为的启发,LO 会战略性地选择最相关的模型更新进行通信,从而显著降低通信开销。该框架在代表可持续发展各领域的 CIFAR-10、MNIST、水稻叶病和废物回收植物数据集上进行了严格评估。实验结果表明,与基线 FL 方法相比,所提出的框架平均减少了 15% 以上的通信开销,同时保持了较高的模型准确性。这一突破将 FL 的适用性扩展到了资源受限的环境中,为现实世界中更多可扩展、可持续的解决方案铺平了道路。
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