We consider a class of models describing an ensemble of identical interacting agents subject to multiplicative noise. In the thermodynamic limit, these systems exhibit continuous and discontinuous phase transitions in a, generally, nonequilibrium setting. We provide a systematic dimension reduction methodology for constructing low-dimensional, reduced-order dynamics based on the cumulants of the probability distribution of the infinite system. We show that the low-dimensional dynamics returns the correct diagnostic properties since it produces a quantitatively accurate representation of the stationary phase diagram of the system that we compare with exact analytical results and numerical simulations. Moreover, we prove that the reduced orde...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
We consider a class of models describing an ensemble of identical interacting agents subject to mult...
In this thesis we investigate critical phenomena for ensembles of identical interacting agents, name...
We consider a class of nonequilibrium systems of interacting agents with pairwise interactions and q...
We introduce a class of exactly solvable models exhibiting an ordering noise-induced phase transitio...
We explore nonequilibrium collective behavior in large, spatially extended stochastic systems. In Pa...
Here we demonstrate the ability of stochastic reduced order models to predict the statistics of nons...
Here we demonstrate the ability of stochastic reduced order models to predict the statistics of nons...
We study the behaviour of a class of stochastic spatially extended systems exhibiting transition to ...
We introduce a class of exactly solvable models exhibiting an ordering noise-induced phase transitio...
We present a path integral formalism to compute potentials for nonequilibrium steady states, reached...
The classic Hegselmann-Krause (HK) model for opinion dynamics consists of a set of agents on the rea...
Here we demonstrate the ability of stochastic reduced order models to predict the statistics of non-...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
We consider a class of models describing an ensemble of identical interacting agents subject to mult...
In this thesis we investigate critical phenomena for ensembles of identical interacting agents, name...
We consider a class of nonequilibrium systems of interacting agents with pairwise interactions and q...
We introduce a class of exactly solvable models exhibiting an ordering noise-induced phase transitio...
We explore nonequilibrium collective behavior in large, spatially extended stochastic systems. In Pa...
Here we demonstrate the ability of stochastic reduced order models to predict the statistics of nons...
Here we demonstrate the ability of stochastic reduced order models to predict the statistics of nons...
We study the behaviour of a class of stochastic spatially extended systems exhibiting transition to ...
We introduce a class of exactly solvable models exhibiting an ordering noise-induced phase transitio...
We present a path integral formalism to compute potentials for nonequilibrium steady states, reached...
The classic Hegselmann-Krause (HK) model for opinion dynamics consists of a set of agents on the rea...
Here we demonstrate the ability of stochastic reduced order models to predict the statistics of non-...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...
International audienceProviding efficient and accurate parameterizations for model reduction is a ke...