State of Compact Architecture Search For Deep Neural Networks
Mohammad Javad Shafiee, Andrew Hryniowski, Francis Li, Zhong Qiu Lin,, and Alexander Wong

TL;DR
This paper reviews and empirically compares four leading algorithms for automatically designing compact deep neural network architectures, highlighting their efficiency, effectiveness, and potential for real-world applications.
Contribution
It provides a comprehensive analysis of four state-of-the-art compact architecture search algorithms, combining theoretical insights and empirical evaluations across benchmark datasets.
Findings
Guided search algorithms are more computationally efficient.
Empirical results show varying effectiveness across datasets.
The study offers insights into current challenges and future directions.
Abstract
The design of compact deep neural networks is a crucial task to enable widespread adoption of deep neural networks in the real-world, particularly for edge and mobile scenarios. Due to the time-consuming and challenging nature of manually designing compact deep neural networks, there has been significant recent research interest into algorithms that automatically search for compact network architectures. A particularly interesting class of compact architecture search algorithms are those that are guided by baseline network architectures. Such algorithms have been shown to be significantly more computationally efficient than unguided methods. In this study, we explore the current state of compact architecture search for deep neural networks through both theoretical and empirical analysis of four different state-of-the-art compact architecture search algorithms: i) group lasso…
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Taxonomy
TopicsAdvanced Neural Network Applications · Adversarial Robustness in Machine Learning · Anomaly Detection Techniques and Applications
