scispace - formally typeset
Search or ask a question

Showing papers by "John M. Beggs published in 2005"


Journal ArticleDOI
TL;DR: When the branching parameter is tuned to the critical point, it is found that metastable states are most numerous and that network dynamics are not attracting, but neutral.
Abstract: Recent experimental work has shown that activity in living neural networks can propagate as a critical branching process that revisits many metastable states. Neural network theory suggests that attracting states could store information, but little is known about how a branching process could form such states. Here we use a branching process to model actual data and to explore metastable states in the network. When we tune the branching parameter to the critical point, we find that metastable states are most numerous and that network dynamics are not attracting, but neutral.

439 citations