World Wide relies on analytics signals to operate securely and keep research services available. Accept to continue, or leave the site.
Review the Privacy Policy for details about analytics processing.
Juelich Research Center
Showing your local timezone
Schedule
Wednesday, December 16, 2020
12:00 AM America/New_York
Recording provided by the organiser.
Domain
Original Event
View sourceHost
van Vreeswijk TNS
Duration
70 minutes
The remarkable properties of information-processing of biological and of artificial neuronal networks alike arise from the interaction of large numbers of neurons. A central quest is thus to characterize their collective states. The directed coupling between pairs of neurons and their continuous dissipation of energy, moreover, cause dynamics of neuronal networks outside thermodynamic equilibrium. Tools from non-equilibrium statistical mechanics and field theory are thus instrumental to obtain a quantitative understanding. We here present progress with this recent approach [1]. On the experimental side, we show how correlations between pairs of neurons are informative on the dynamics of cortical networks: they are poised near a transition to chaos [2]. Close to this transition, we find prolongued sequential memory for past signals [3]. In the chaotic regime, networks offer representations of information whose dimensionality expands with time. We show how this mechanism aids classification performance [4]. Together these works illustrate the fruitful interplay between theoretical physics, neuronal networks, and neural information processing.
Moritz Helias
Juelich Research Center