Federated Machine Learning for Intelligent IoT via Reconfigurable
Intelligent Surface
- URL: http://arxiv.org/abs/2004.05843v1
- Date: Mon, 13 Apr 2020 09:48:04 GMT
- Title: Federated Machine Learning for Intelligent IoT via Reconfigurable
Intelligent Surface
- Authors: Kai Yang, Yuanming Shi, Yong Zhou, Zhanpeng Yang, Liqun Fu, and Wei
Chen
- Abstract summary: We develop an over-the-air based communication-efficient federated machine learning framework for intelligent IoT networks.
We exploit the waveform superposition property of a multi-access channel to reduce the model aggregation error.
- Score: 35.64178319119883
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Intelligent Internet-of-Things (IoT) will be transformative with the
advancement of artificial intelligence and high-dimensional data analysis,
shifting from "connected things" to "connected intelligence". This shall
unleash the full potential of intelligent IoT in a plethora of exciting
applications, such as self-driving cars, unmanned aerial vehicles, healthcare,
robotics, and supply chain finance. These applications drive the need of
developing revolutionary computation, communication and artificial intelligence
technologies that can make low-latency decisions with massive real-time data.
To this end, federated machine learning, as a disruptive technology, is emerged
to distill intelligence from the data at network edge, while guaranteeing
device privacy and data security. However, the limited communication bandwidth
is a key bottleneck of model aggregation for federated machine learning over
radio channels. In this article, we shall develop an over-the-air computation
based communication-efficient federated machine learning framework for
intelligent IoT networks via exploiting the waveform superposition property of
a multi-access channel. Reconfigurable intelligent surface is further leveraged
to reduce the model aggregation error via enhancing the signal strength by
reconfiguring the wireless propagation environments.
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