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Information-preserving Transforms: Two Graph Metrics for Simulated Spiking Neural Networks
2013
Procedia Computer Science
We are interested in self-organization and adaptation in intelligent systems that are robustly coupled with the real world. Such systems have a variety of sensory inputs that provide access to the richness, complexity, and noise of real-world signals. Specifically, the systems we design and implement are ab initio simulated spiking neural networks (SSNNs) with cellular resolution and complex network topologies that evolve according to spike-timing dependent plasticity (STDP). We desire to
doi:10.1016/j.procs.2013.09.232
fatcat:coce6gbjlbb6ff2m6evs6oentu