SpikeAnts, a Spiking Neuron Network Modelling the Emergence of Organization in a Complex System
Abstract
Many complex systems, ranging from neural cell assemblies to insect societies, involve and rely on some division of labor. How to enforce such a division in a decentralized and distributed way, is tackled in this paper, using a spiking neuron network architecture. Specifically, a spatio-temporal model called SpikeAnts is shown to enforce the emergence of synchronized activities in an ant colony. Each ant is modelled from two spiking neurons; the ant colony is a sparsely connected spiking neuron network. Each ant makes its decision (among foraging, sleeping and self-grooming) from the competition between its two neurons, after the signals received from its neighbor ants. Interestingly, three types of temporal patterns emerge in the ant colony: asynchronous, synchronous, and synchronous periodic foraging activities - similar to the actual behavior of some living ant colonies. A phase diagram of the emergent activity patterns with respect to two control parameters, respectively accounting for ant sociability and receptivity, is presented and discussed.
Cite
Text
Chevallier et al. "SpikeAnts, a Spiking Neuron Network Modelling the Emergence of Organization in a Complex System." Neural Information Processing Systems, 2010.Markdown
[Chevallier et al. "SpikeAnts, a Spiking Neuron Network Modelling the Emergence of Organization in a Complex System." Neural Information Processing Systems, 2010.](https://mlanthology.org/neurips/2010/chevallier2010neurips-spikeants/)BibTeX
@inproceedings{chevallier2010neurips-spikeants,
title = {{SpikeAnts, a Spiking Neuron Network Modelling the Emergence of Organization in a Complex System}},
author = {Chevallier, Sylvain and Paugam-moisy, Hél\`ene and Sebag, Michele},
booktitle = {Neural Information Processing Systems},
year = {2010},
pages = {379-387},
url = {https://mlanthology.org/neurips/2010/chevallier2010neurips-spikeants/}
}