Automatic Design of Artificial Neural Networks for Gamma-Ray Detection
May 09, 2019 ยท Declared Dead ยท ๐ IEEE Access
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Authors
Filipe Assunรงรฃo, Joรฃo Correia, Rรบben Conceiรงรฃo, Mรกrio Pimenta, Bernardo Tomรฉ, Nuno Lourenรงo, Penousal Machado
arXiv ID
1905.03532
Category
cs.NE: Neural & Evolutionary
Citations
18
Venue
IEEE Access
Last Checked
4 months ago
Abstract
The goal of this work is to investigate the possibility of improving current gamma/hadron discrimination based on their shower patterns recorded on the ground. To this end we propose the use of Convolutional Neural Networks (CNNs) for their ability to distinguish patterns based on automatically designed features. In order to promote the creation of CNNs that properly uncover the hidden patterns in the data, and at same time avoid the burden of hand-crafting the topology and learning hyper-parameters we resort to NeuroEvolution; in particular we use Fast-DENSER++, a variant of Deep Evolutionary Network Structured Representation. The results show that the best CNN generated by Fast-DENSER++ improves by a factor of 2 when compared with the results reported by classic statistical approaches. Additionally, we experiment ensembling the 10 best generated CNNs, one from each of the evolutionary runs; the ensemble leads to an improvement by a factor of 2.3. These results show that it is possible to improve the gamma/hadron discrimination based on CNNs that are automatically generated and are trained with instances of the ground impact patterns.
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