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Online Learning of Modular Bayesian Deep Receivers: Single-Step Adaptation with Streaming Data

Published: November 8, 2025 | arXiv ID: 2511.06045v1

By: Yakov Gusakov , Osvaldo Simeone , Tirza Routtenberg and more

Potential Business Impact:

Lets phones connect better in crowded places.

Business Areas:
Machine Learning Artificial Intelligence, Data and Analytics, Software

Deep neural network (DNN)-based receivers offer a powerful alternative to classical model-based designs for wireless communication, especially in complex and nonlinear propagation environments. However, their adoption is challenged by the rapid variability of wireless channels, which makes pre-trained static DNN-based receivers ineffective, and by the latency and computational burden of online stochastic gradient descent (SGD)-based learning. In this work, we propose an online learning framework that enables rapid low-complexity adaptation of DNN-based receivers. Our approach is based on two main tenets. First, we cast online learning as Bayesian tracking in parameter space, enabling a single-step adaptation, which deviates from multi-epoch SGD . Second, we focus on modular DNN architectures that enable parallel, online, and localized variational Bayesian updates. Simulations with practical communication channels demonstrate that our proposed online learning framework can maintain a low error rate with markedly reduced update latency and increased robustness to channel dynamics as compared to traditional gradient descent based method.

Country of Origin
🇬🇧 🇮🇱 Israel, United Kingdom

Page Count
13 pages

Category
Electrical Engineering and Systems Science:
Signal Processing