Model-Based Deep Learning
Nir Shlezinger, Jay Whang, Yonina C. Eldar, and Alexandros G. Dimakis

TL;DR
This paper surveys hybrid model-based deep learning methods that combine mathematical models with data-driven techniques to improve signal processing tasks, especially when data is limited or systems are complex.
Contribution
It provides a comprehensive review and systematic categorization of leading hybrid approaches, offering guidelines and examples for future system design.
Findings
Hybrid methods leverage domain knowledge and data learning.
Systematic categorization aids in understanding different inference mechanisms.
Guidelines facilitate the design of future signal processing systems.
Abstract
Signal processing, communications, and control have traditionally relied on classical statistical modeling techniques. Such model-based methods utilize mathematical formulations that represent the underlying physics, prior information and additional domain knowledge. Simple classical models are useful but sensitive to inaccuracies and may lead to poor performance when real systems display complex or dynamic behavior. On the other hand, purely data-driven approaches that are model-agnostic are becoming increasingly popular as datasets become abundant and the power of modern deep learning pipelines increases. Deep neural networks (DNNs) use generic architectures which learn to operate from data, and demonstrate excellent performance, especially for supervised problems. However, DNNs typically require massive amounts of data and immense computational resources, limiting their applicability…
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Taxonomy
TopicsModel Reduction and Neural Networks · Neural Networks and Applications · Machine Learning and Data Classification
