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arxiv: 2101.04824 · v1 · pith:DB5CBYN6new · submitted 2021-01-13 · 💻 cs.LG

Energy-Efficient Distributed Learning Algorithms for Coarsely Quantized Signals

classification 💻 cs.LG
keywords algorithmdistributeddqa-lmsenergy-efficientquantizedsignalscoarselylearning
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In this work, we present an energy-efficient distributed learning framework using low-resolution ADCs and coarsely quantized signals for Internet of Things (IoT) networks. In particular, we develop a distributed quantization-aware least-mean square (DQA-LMS) algorithm that can learn parameters in an energy-efficient fashion using signals quantized with few bits while requiring a low computational cost. We also carry out a statistical analysis of the proposed DQA-LMS algorithm that includes a stability condition. Simulations assess the DQA-LMS algorithm against existing techniques for a distributed parameter estimation task where IoT devices operate in a peer-to-peer mode and demonstrate the effectiveness of the DQA-LMS algorithm.

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