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Title Optimizing the Simplicial-Map Neural Network Architecture
Authors PALUZO HIDALGO, EDUARDO, Gonzalez-Diaz, Rocio , Gutierrez-Naranjo, Miguel A. , Heras, Jonathan
External publication Si
Means J. Imaging
Scope Article
Nature Científica
SJR Quartile 2
SJR Impact 0.728
Publication date 01/09/2021
ISI 000699599700001
DOI 10.3390/jimaging7090173
Abstract Simplicial-map neural networks are a recent neural network architecture induced by simplicial maps defined between simplicial complexes. It has been proved that simplicial-map neural networks are universal approximators and that they can be refined to be robust to adversarial attacks. In this paper, the refinement toward robustness is optimized by reducing the number of simplices (i.e., nodes) needed. We have shown experimentally that such a refined neural network is equivalent to the original network as a classification tool but requires much less storage.
Keywords simplicial-map neural networks; artificial neural networks; computational topology
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