We present a method for solving population density equations (PDEs)–-a mean-field technique describing homogeneous populations of uncoupled neurons—where the populations can be subject to non-Markov noise for arbitrary distributions of jump sizes. The method combines recent developments in two different disciplines that traditionally have had limited interaction: computational neuroscience and the theory of random networks. The method uses a geometric binning scheme, based on the method of characteristics, to capture the deterministic neurodynamics of the population, separating the deterministic and stochastic process cleanly. We can independently vary the choice of the deterministic model and the model for the stochastic process, leading t...
We analyze a master equation formulation of stochastic neurodynamics for a network of synaptically c...
Population density methods provide promising time-saving alternatives to direct Monte Carlo simulati...
Population density methods provide promising time-saving alternatives to direct Monte Carlo simulati...
We present a method for solving population density equations (PDEs)–-a mean-field technique describi...
We present a novel method for solving population density equations (PDEs) - a mean field technique d...
20 pagesInternational audienceWe investigate the dynamics of large-scale interacting neural populati...
International audienceDeriving tractable reduced equations of biological neural networks capturing t...
Deriving tractable reduced equations of biological neural networks capturing the macroscopic dynamic...
Population density techniques can be used to simulate the behavior of a population of neurons which ...
this paper, we introduce another master equation based approach to go beyond the mean field approxim...
55 pages, 9 figuresWe derive the mean-field equations arising as the limit of a network of interacti...
Despite the huge number of neurons composing the brain networks, ongoing activity of local cell asse...
The brain is a very complex system in the strong sense. It features a huge amount of individual cell...
The importance of a mesoscopic description level of the brain has now been well established. Rate ba...
The importance of a mesoscopic description level of the brain has now been well established. Rate ba...
We analyze a master equation formulation of stochastic neurodynamics for a network of synaptically c...
Population density methods provide promising time-saving alternatives to direct Monte Carlo simulati...
Population density methods provide promising time-saving alternatives to direct Monte Carlo simulati...
We present a method for solving population density equations (PDEs)–-a mean-field technique describi...
We present a novel method for solving population density equations (PDEs) - a mean field technique d...
20 pagesInternational audienceWe investigate the dynamics of large-scale interacting neural populati...
International audienceDeriving tractable reduced equations of biological neural networks capturing t...
Deriving tractable reduced equations of biological neural networks capturing the macroscopic dynamic...
Population density techniques can be used to simulate the behavior of a population of neurons which ...
this paper, we introduce another master equation based approach to go beyond the mean field approxim...
55 pages, 9 figuresWe derive the mean-field equations arising as the limit of a network of interacti...
Despite the huge number of neurons composing the brain networks, ongoing activity of local cell asse...
The brain is a very complex system in the strong sense. It features a huge amount of individual cell...
The importance of a mesoscopic description level of the brain has now been well established. Rate ba...
The importance of a mesoscopic description level of the brain has now been well established. Rate ba...
We analyze a master equation formulation of stochastic neurodynamics for a network of synaptically c...
Population density methods provide promising time-saving alternatives to direct Monte Carlo simulati...
Population density methods provide promising time-saving alternatives to direct Monte Carlo simulati...