Designing neural networks for object recognition requires considerable architecture engineering. As a remedy, neuro-evolutionary network architecture search, which automatically searches for optimal network architectures using evolutionary algorithms, has recently become very popular. Although very effective, evolutionary algorithms rely heavily on having a large population of individuals (i.e., network architectures) and are therefore memory expensive. In this work, we propose a Regularized Evolutionary Algorithm with low memory footprint to evolve a dynamic image classifier. In details, we introduce novel custom operators that regularize the evolutionary process of a micro-population of 10 individuals. We conduct experiments on three diff...
BigEarthNet is one of the standard large remote sensing datasets. It has been shown previously that ...
This work focuses on automatization of neural network design via the so-called neuroevolution, which...
Deep neural networks have proven to be effective in solving computer vision and natural language pro...
The effort devoted to hand-crafting neural network image classifiers has motivated the use of archit...
Neural Architecture Search (NAS), which automates the discovery of efficient neural networks, has de...
The automated architecture search methodology for neural networks is known as Neural Architecture Se...
Zhang H, Jin Y, Hao K. Evolutionary Search for Complete Neural Network Architectures With Partial We...
To achieve excellent performance with modern neural networks, having the right network architecture ...
The aim of Neuroevolution is to find neural networks and convolutional neural network (CNN) architec...
In this paper a fast method of selecting a neural network architecture for pattern recognition tasks...
The performance of deep neural networks is heavily dependent on its architecture and various neural ...
Meta learning is a step towards an artificial general intelligence, where neural architecture search...
Manually designing a convolutional neural network (CNN) is an important deep learning method for sol...
Neural Architecture Search (NAS) has recently become a topic of great interest. However, there is a ...
Abstract — A major problem in designing artificial neural networks is the proper choice of the netwo...
BigEarthNet is one of the standard large remote sensing datasets. It has been shown previously that ...
This work focuses on automatization of neural network design via the so-called neuroevolution, which...
Deep neural networks have proven to be effective in solving computer vision and natural language pro...
The effort devoted to hand-crafting neural network image classifiers has motivated the use of archit...
Neural Architecture Search (NAS), which automates the discovery of efficient neural networks, has de...
The automated architecture search methodology for neural networks is known as Neural Architecture Se...
Zhang H, Jin Y, Hao K. Evolutionary Search for Complete Neural Network Architectures With Partial We...
To achieve excellent performance with modern neural networks, having the right network architecture ...
The aim of Neuroevolution is to find neural networks and convolutional neural network (CNN) architec...
In this paper a fast method of selecting a neural network architecture for pattern recognition tasks...
The performance of deep neural networks is heavily dependent on its architecture and various neural ...
Meta learning is a step towards an artificial general intelligence, where neural architecture search...
Manually designing a convolutional neural network (CNN) is an important deep learning method for sol...
Neural Architecture Search (NAS) has recently become a topic of great interest. However, there is a ...
Abstract — A major problem in designing artificial neural networks is the proper choice of the netwo...
BigEarthNet is one of the standard large remote sensing datasets. It has been shown previously that ...
This work focuses on automatization of neural network design via the so-called neuroevolution, which...
Deep neural networks have proven to be effective in solving computer vision and natural language pro...