There are indications that for optimizing neural computation, neural networks may operate at criticality. Previous approaches have used distinct fingerprints of criticality, leaving open the question whether the different notions would necessarily reflect different aspects of one and the same instance of criticality, or whether they could potentially refer to distinct instances of criticality. In this work, we choose avalanche criticality and edge-of-chaos criticality and demonstrate for a recurrent spiking neural network that avalanche criticality does not necessarily entrain dynamical edge-of-chaos criticality. This suggests that the different fingerprints may pertain to distinct phenomena.
CITATION STYLE
Kanders, K., Lorimer, T., & Stoop, R. (2017). Avalanche and edge-of-chaos criticality do not necessarily co-occur in neural networks. Chaos, 27(4). https://doi.org/10.1063/1.4978998
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