This paper proposes a framework for design space exploration ofConvolutional Neural Networks (CNNs) using Genetic Algorithms(GAs). CNNs have many hyperparameters that need to be tunedcarefully in order to achieve favorable results when used for imageclassification tasks or similar vision applications. Genetic Algorithmsare adopted to efficiently traverse the huge search spaceof CNNs hyperparameters, and generate the best architecture thatfits the given task. Some of the hyperparameters that were testedinclude the number of convolutional and fully connected layers, thenumber of filters for each convolutional layer, and the number ofnodes in the fully connected layers. The proposed approach wastested using MNIST dataset for handwritten digit ...
Hyperparameters and architecture greatly influence the performance of convolutional neural networks ...
Convolutional neural networks (CNNs) have been used over the past years to solve many different arti...
During the last decade, deep neural networks have shown a great performance in many machine learning...
This paper proposes a framework for design space exploration ofConvolutional Neural Networks (CNNs) ...
The aim of this work is to design and implement a program for automated design of convolutional neur...
The automated architecture search methodology for neural networks is known as Neural Architecture Se...
With the development of deep learning, the design of an appropriate network structure becomes fundam...
The aim of Neuroevolution is to find neural networks and convolutional neural network (CNN) architec...
This Master's Thesis is focused on the principles of neural networks, primarily convolutional neural...
© 2019 IEEE. The performance of convolutional neural networks (CNNs) highly relies on their architec...
Convolutional Neural Networks (CNNs) are state-of-the-art algorithms for image recognition. To confi...
This thesis proposes the use of a genetic algorithm (GA) to optimize the accuracy of a convolutional...
This work focuses on automatization of neural network design via the so-called neuroevolution, which...
A deep convolutional neural network (CNN) trained on millions of images forms a very high-level abst...
Mención Internacional en el título de doctorFor three decades, neuroevolution has applied evolutiona...
Hyperparameters and architecture greatly influence the performance of convolutional neural networks ...
Convolutional neural networks (CNNs) have been used over the past years to solve many different arti...
During the last decade, deep neural networks have shown a great performance in many machine learning...
This paper proposes a framework for design space exploration ofConvolutional Neural Networks (CNNs) ...
The aim of this work is to design and implement a program for automated design of convolutional neur...
The automated architecture search methodology for neural networks is known as Neural Architecture Se...
With the development of deep learning, the design of an appropriate network structure becomes fundam...
The aim of Neuroevolution is to find neural networks and convolutional neural network (CNN) architec...
This Master's Thesis is focused on the principles of neural networks, primarily convolutional neural...
© 2019 IEEE. The performance of convolutional neural networks (CNNs) highly relies on their architec...
Convolutional Neural Networks (CNNs) are state-of-the-art algorithms for image recognition. To confi...
This thesis proposes the use of a genetic algorithm (GA) to optimize the accuracy of a convolutional...
This work focuses on automatization of neural network design via the so-called neuroevolution, which...
A deep convolutional neural network (CNN) trained on millions of images forms a very high-level abst...
Mención Internacional en el título de doctorFor three decades, neuroevolution has applied evolutiona...
Hyperparameters and architecture greatly influence the performance of convolutional neural networks ...
Convolutional neural networks (CNNs) have been used over the past years to solve many different arti...
During the last decade, deep neural networks have shown a great performance in many machine learning...