Constraint Exploration of Convolutional Network Architectures with Neuroevolution.

ADVANCES IN COMPUTATIONAL INTELLIGENCE, IWANN 2019, PT II(2019)

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摘要
The effort spent on adapting existing networks to new applications has motivated the automated architecture search. Network structures discovered with evolutionary or other search algorithms have surpassed hand-crafted image classifiers in terms of accuracy. However, these approaches do not constrain certain characteristics like network size, which leads to unnecessary computational effort. Thus, this work shows that generational evolutionary algorithms can be used for a constrained exploration of convolutional network architectures to create a selection of networks for a specific application or target architecture.
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关键词
Neuroevolution,Genetic programming,Convolutional neural networks,Architecture search
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