|国家预印本平台
首页|Sparse Self-Federated Learning for Energy Efficient Cooperative Intelligence in Society 5.0

Sparse Self-Federated Learning for Energy Efficient Cooperative Intelligence in Society 5.0

Sparse Self-Federated Learning for Energy Efficient Cooperative Intelligence in Society 5.0

来源:Arxiv_logoArxiv
英文摘要

Federated Learning offers privacy-preserving collaborative intelligence but struggles to meet the sustainability demands of emerging IoT ecosystems necessary for Society 5.0-a human-centered technological future balancing social advancement with environmental responsibility. The excessive communication bandwidth and computational resources required by traditional FL approaches make them environmentally unsustainable at scale, creating a fundamental conflict with green AI principles as billions of resource-constrained devices attempt to participate. To this end, we introduce Sparse Proximity-based Self-Federated Learning (SParSeFuL), a resource-aware approach that bridges this gap by combining aggregate computing for self-organization with neural network sparsification to reduce energy and bandwidth consumption.

Davide Domini、Laura Erhan、Gianluca Aguzzi、Lucia Cavallaro、Amirhossein Douzandeh Zenoozi、Antonio Liotta、Mirko Viroli

社会与环境

Davide Domini,Laura Erhan,Gianluca Aguzzi,Lucia Cavallaro,Amirhossein Douzandeh Zenoozi,Antonio Liotta,Mirko Viroli.Sparse Self-Federated Learning for Energy Efficient Cooperative Intelligence in Society 5.0[EB/OL].(2025-07-10)[2025-07-19].https://arxiv.org/abs/2507.07613.点此复制

评论