Learning with Limited Samples -- Meta-Learning and Applications to Communication Systems
Lisha Chen, Sharu Theresa Jose, Ivana Nikoloska, Sangwoo Park, Tianyi, Chen, Osvaldo Simeone

TL;DR
This paper reviews meta-learning principles, algorithms, and theory, emphasizing its applications in communication systems and exploring integration with emerging computing technologies.
Contribution
It provides a comprehensive overview of meta-learning fundamentals, algorithms, and applications specifically tailored to communication systems and engineering challenges.
Findings
Meta-learning enables quick adaptation to new tasks with limited data.
Applications include decoding and power allocation in communication systems.
Discussion on integration with neuromorphic and quantum computing technologies.
Abstract
Deep learning has achieved remarkable success in many machine learning tasks such as image classification, speech recognition, and game playing. However, these breakthroughs are often difficult to translate into real-world engineering systems because deep learning models require a massive number of training samples, which are costly to obtain in practice. To address labeled data scarcity, few-shot meta-learning optimizes learning algorithms that can efficiently adapt to new tasks quickly. While meta-learning is gaining significant interest in the machine learning literature, its working principles and theoretic fundamentals are not as well understood in the engineering community. This review monograph provides an introduction to meta-learning by covering principles, algorithms, theory, and engineering applications. After introducing meta-learning in comparison with conventional and…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Machine Learning and ELM · Machine Learning and Data Classification
