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- Title
Long Synfire Chains Emerge by Spike-Timing Dependent Plasticity Modulated by Population Activity.
- Authors
Weissenberger, Felix; Meier, Florian; Lengler, Johannes; Einarsson, Hafsteinn; Steger, Angelika
- Abstract
Sequences of precisely timed neuronal activity are observed in many brain areas in various species. Synfire chains are a well-established model that can explain such sequences. However, it is unknown under which conditions synfire chains can develop in initially unstructured networks by self-organization. This work shows that with spike-timing dependent plasticity (STDP), modulated by global population activity, long synfire chains emerge in sparse random networks. The learning rule fosters neurons to participate multiple times in the chain or in multiple chains. Such reuse of neurons has been experimentally observed and is necessary for high capacity. Sparse networks prevent the chains from being short and cyclic and show that the formation of specific synapses is not essential for chain formation. Analysis of the learning rule in a simple network of binary threshold neurons reveals the asymptotically optimal length of the emerging chains. The theoretical results generalize to simulated networks of conductance-based leaky integrate-and-fire (LIF) neurons. As an application of the emerged chain, we propose a one-shot memory for sequences of precisely timed neuronal activity.
- Subjects
ACTION potentials; NEUROSCIENCES; NEUROPLASTICITY; NEURONS; SYNCHRONIZATION
- Publication
International Journal of Neural Systems, 2017, Vol 27, Issue 8, p-1
- ISSN
0129-0657
- Publication type
Article
- DOI
10.1142/S0129065717500447