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arXiv:1007.5143 [cond-mat.dis-nn]AbstractReferencesReviewsResources

Quorum Percolation in Living Neural Networks

Or Cohen, Anna Keselman, Elisha Moses, María Rodríguez Martínez, Jordi Soriano, Tsvi Tlusty

Published 2010-07-29Version 1

Cooperative effects in neural networks appear because a neuron fires only if a minimal number $m$ of its inputs are excited. The multiple inputs requirement leads to a percolation model termed {\it quorum percolation}. The connectivity undergoes a phase transition as $m$ grows, from a network--spanning cluster at low $m$ to a set of disconnected clusters above a critical $m$. Both numerical simulations and the model reproduce the experimental results well. This allows a robust quantification of biologically relevant quantities such as the average connectivity $\kbar$ and the distribution of connections $p_k$

Comments: 87.19.L-: Neuroscience 87.19.ll: Models of single neurons and networks 64.60.ah: Percolation http://iopscience.iop.org/0295-5075/89/1/18008 http://www.weizmann.ac.il/complex/tlusty/papers/EuroPhysLett2010.pdf
Journal: O. Cohen et al 2010 EPL 89 18008
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