Meta-Learning of NAS for Few-shot Learning in Medical Image Applications
Viet-Khoa Vo-Ho, Kashu Yamazaki, Hieu Hoang, Minh-Triet Tran, Ngan Le

TL;DR
This paper reviews neural architecture search (NAS) and meta-learning techniques applied to medical imaging, emphasizing few-shot learning to reduce data and computational requirements for improved model design.
Contribution
It provides a comprehensive review of NAS approaches in medical imaging and discusses how meta-learning enhances NAS for few-shot and multi-task scenarios.
Findings
NAS improves medical image analysis accuracy
Meta-learning enables effective NAS with limited data
Open problems in NAS are identified and discussed
Abstract
Deep learning methods have been successful in solving tasks in machine learning and have made breakthroughs in many sectors owing to their ability to automatically extract features from unstructured data. However, their performance relies on manual trial-and-error processes for selecting an appropriate network architecture, hyperparameters for training, and pre-/post-procedures. Even though it has been shown that network architecture plays a critical role in learning feature representation feature from data and the final performance, searching for the best network architecture is computationally intensive and heavily relies on researchers' experience. Automated machine learning (AutoML) and its advanced techniques i.e. Neural Architecture Search (NAS) have been promoted to address those limitations. Not only in general computer vision tasks, but NAS has also motivated various…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Machine Learning and Data Classification · Advanced Neural Network Applications
