The impact of network topology on self-organizing maps
Résumé
In this paper, we study instances of complex neural networks, i.e. neural networks with complex topologies. We use Self-Organizing Map neural networks whose neighborhood relationships are defined by a complex network, to classify handwritten digits. We show that topology has a small impact on performance and robustness to neuron failures, at least at long learning times. Performance may however be increased (by almost 10%) by evolutionary optimization of the network topology. In our experimental conditions, theevolved networks are more random than their parents, but display a more heterogeneous degree distribution.
Domaines
Architectures Matérielles [cs.AR]Origine | Fichiers éditeurs autorisés sur une archive ouverte |
---|