Open AccessPosted Content
Federated Learning for Internet of Things: Recent Advances, Taxonomy, and Open Challenges
TL;DR: The recent advances of federated learning towards enabling Federated learning-powered IoT applications are presented and a set of metrics such as sparsification, robustness, quantization, scalability, security, and privacy, is delineated in order to rigorously evaluate the recent advances.
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Abstract: The Internet of Things (IoT) will be ripe for the deployment of novel machine learning algorithms for both network and application management. However, given the presence of massively distributed and private datasets, it is challenging to use classical centralized learning algorithms in the IoT. To overcome this challenge, federated learning can be a promising solution that enables on-device machine learning without the need to migrate the private end-user data to a central cloud. In federated learning, only learning model updates are transferred between end-devices and the aggregation server. Although federated learning can offer better privacy preservation than centralized machine learning, it has still privacy concerns. In this paper, first, we present the recent advances of federated learning towards enabling federated learning-powered IoT applications. A set of metrics such as sparsification, robustness, quantization, scalability, security, and privacy, is delineated in order to rigorously evaluate the recent advances. Second, we devise a taxonomy for federated learning over IoT networks. Third, we propose two IoT use cases of dispersed federated learning that can offer better privacy preservation than federated learning. Finally, we present several open research challenges with their possible solutions.
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Citations
MoFLeuR: Motion-based Federated Learning Gesture Recognition
S. Jamal Seyedmohammadi,Seyed Mohammad Sheikholeslami,Jamshid Abouei,Arash Mohammadi,Konstantinos N. Plataniotis +4 more
- 15 May 2024
TL;DR: MoFLeuR framework for HGR using motion data addresses data heterogeneity and privacy concerns by leveraging Federated Learning. It improves the performance of the global model and outperforms baseline algorithms.
2
A Lightweight Transmission Parameter Selection Scheme Using Reinforcement Learning for LoRaWAN
TL;DR: A lightweight transmission-parameter selection scheme using reinforcement learning for low-power wide area networking (LoRaWAN) that avoids collisions between LoRa devices irrespective of changes in the available channels and improves the frame success rate and fairness.
2
Distributed Swarm Learning for Internet of Things at the Edge: Where Artificial Intelligence Meets Biological Intelligence
Yue Wang,Zhi Tian,Xin Fan,Yan Huo,Cameron Nowzari,Kai-Na Zeng +5 more
- 29 Oct 2022
TL;DR: In this article , the authors proposed a distributed optimization and learning framework for DoA estimation in the Internet of Things (IoT) based on massive MIMO and NOMA.
2
An Overview of Machine Learning-Enabled Network Softwarization for the Internet of Things
Mohamed Ali Zormati,Hicham Lakhlef +1 more
- 21 Sep 2023
TL;DR: The fundamentals of IoT, network softwarization, and ML are explored, while reviewing the latest advances in ML-enabled networksoftwarization for IoT.
2
Hazards from Increasingly Accessible Fine-Tuning of Downloadable Foundation Models
Alan Chan,Ben Bucknall,Herbie Bradley,David Krueger +3 more
TL;DR: This work argues that increasingly accessible fine-tuning of downloadable models may increase hazard through facilitating malicious use and making oversight of models with potentially dangerous capabilities more difficult, and highlights research to improve the accessibility of fine-tuning.
2
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