Using a generalized random recurrent neural network model, and by extending our recently developed mean-field approach [J. Aljadeff, M. Stern, and T. Sharpee, Phys. Rev. Lett. 114, 088101 (2015)], we study the relationship between the network connectivity structure and its low-dimensional dynamics. Each connection in the network is a random number with mean 0 and variance that depends on pre- and postsynaptic neurons through a sufficiently smooth function g of their identities. We find that these networks undergo a phase transition from a silent to a chaotic state at a critical point we derive as a function of g. Above the critical point, although unit activation levels are chaotic, their autocorrelation functions are restricted to a low-di...
Networks of randomly coupled rate neurons display a transition to chaos at a critical coupling stren...
We investigate the emergence of complex dynamics in networks with heavy-tailed connectivity by devel...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
Recurrent random network models are a useful theoretical tool to understand the irregular activity o...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Self-organization is thought to play an important role in structuring nervous systems. It frequently...
Self-organization is thought to play an important role in structuring nervous systems. It frequently...
(A) Network schematic showing neurons connected via random matrix J and rank-one structured connecti...
Correlations, chaos, and criticality in neural networksMoritz HeliasINM-6 Juelich Research CentreThe...
An emerging paradigm proposes that neural computations can be understood at the level of dynamic sys...
We present a simple model for coherent, spatially correlated chaos in a recurrent neural network. Ne...
This paper is a review dealing with the study of large size random recurrent neural networks. The co...
We present a simple model for coherent, spatially correlated chaos in a recurrent neural network. Ne...
Networks of randomly coupled rate neurons display a transition to chaos at a critical coupling stren...
We investigate the emergence of complex dynamics in networks with heavy-tailed connectivity by devel...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...
Using a generalized random recurrent neural network model, and by extending our recently developed m...
Recurrent random network models are a useful theoretical tool to understand the irregular activity o...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
Self-organization is thought to play an important role in structuring nervous systems. It frequently...
Self-organization is thought to play an important role in structuring nervous systems. It frequently...
(A) Network schematic showing neurons connected via random matrix J and rank-one structured connecti...
Correlations, chaos, and criticality in neural networksMoritz HeliasINM-6 Juelich Research CentreThe...
An emerging paradigm proposes that neural computations can be understood at the level of dynamic sys...
We present a simple model for coherent, spatially correlated chaos in a recurrent neural network. Ne...
This paper is a review dealing with the study of large size random recurrent neural networks. The co...
We present a simple model for coherent, spatially correlated chaos in a recurrent neural network. Ne...
Networks of randomly coupled rate neurons display a transition to chaos at a critical coupling stren...
We investigate the emergence of complex dynamics in networks with heavy-tailed connectivity by devel...
Abstract. We analyze a stochastic neuronal network model which corresponds to an all-to-all net-work...