Self-Organized Criticality (SOC) is a ubiquitous dynamical phenomenon believed to be responsible for the emergence of universal scale-invariant behavior in many, seemingly unrelated systems, such as forest fires, virus spreading or atomic excitation dynamics. SOC describes the buildup of large-scale and long-range spatio-temporal correlations as a result of only local interactions and dissipation. The simulation of SOC dynamics is typically based on Monte-Carlo (MC) methods, which are however numerically expensive and do not scale beyond certain system sizes. We investigate the use of Graph Neural Networks (GNNs) as an effective surrogate model to learn the dynamics operator for a paradigmatic SOC system, inspired by an experimentally acces...
The brain is a complex system par excellence. Its intricate structure has become clearer recently, ...
Signatures of self-organized criticality (SOC) have recently been observed in an ultracold atomic ga...
This report is concerned with the relevance of the microscopic rules that implement individual neuro...
Recent experiments with strongly interacting, driven Rydberg ensembles have introduced a promising s...
Cognitive networks have evolved to cope with uncertain environments in order to make reliable decisi...
Self-organized criticality is an elegant explanation of how complex structures emerge and persist th...
A self-organising model is proposed to explain the criticality in cortical networks deduced from rec...
Fundação de Amparo à Pesquisa do Estado de São Paulo (FAPESP)Fundação de Amparo à Pesquisa do Estado...
Correlations, chaos, and criticality in neural networksMoritz HeliasINM-6 Juelich Research CentreThe...
Self-organized criticality has been proposed to be a universal mechanism for the emergence of scale-...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
Self-organized criticality has been proposed to be a universal mechanism for the emergence of scale-...
Many complex processes, from protein folding to neuronal network dynamics, can be described as stoc...
Since Self-Organised Criticality (SOC) was introduced in 1987, both the nature of the self-organisat...
The emergent excitation dynamics of an ultracold gas of Rydberg atoms exhibits features analogous to...
The brain is a complex system par excellence. Its intricate structure has become clearer recently, ...
Signatures of self-organized criticality (SOC) have recently been observed in an ultracold atomic ga...
This report is concerned with the relevance of the microscopic rules that implement individual neuro...
Recent experiments with strongly interacting, driven Rydberg ensembles have introduced a promising s...
Cognitive networks have evolved to cope with uncertain environments in order to make reliable decisi...
Self-organized criticality is an elegant explanation of how complex structures emerge and persist th...
A self-organising model is proposed to explain the criticality in cortical networks deduced from rec...
Fundação de Amparo à Pesquisa do Estado de São Paulo (FAPESP)Fundação de Amparo à Pesquisa do Estado...
Correlations, chaos, and criticality in neural networksMoritz HeliasINM-6 Juelich Research CentreThe...
Self-organized criticality has been proposed to be a universal mechanism for the emergence of scale-...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
Self-organized criticality has been proposed to be a universal mechanism for the emergence of scale-...
Many complex processes, from protein folding to neuronal network dynamics, can be described as stoc...
Since Self-Organised Criticality (SOC) was introduced in 1987, both the nature of the self-organisat...
The emergent excitation dynamics of an ultracold gas of Rydberg atoms exhibits features analogous to...
The brain is a complex system par excellence. Its intricate structure has become clearer recently, ...
Signatures of self-organized criticality (SOC) have recently been observed in an ultracold atomic ga...
This report is concerned with the relevance of the microscopic rules that implement individual neuro...