Combinatorial threshold-linear networks (CTLNs) are a special class of inhibition-dominated TLNs defined from directed graphs. Like more general TLNs, they display a wide variety of nonlinear dynamics including multistability, limit cycles, quasiperiodic attractors, and chaos. In prior work, we have developed a detailed mathematical theory relating stable and unstable fixed points of CTLNs to graph-theoretic properties of the underlying network. Here we find that a special type of fixed points, corresponding to core motifs, are predictive of both static and dynamic attractors. Moreover, the attractors can be found by choosing initial conditions that are small perturbations of these fixed points. This motivates us to hypothesize that dynamic...
Networks are fundamental for our understanding of complex systems. Interactions between individual n...
Threshold-linear networks (TLNs) are recurrent networks where the dynamics are threshold-linear (lin...
Computational methods and tools that can efficiently and effectively analyze the temporal changes in...
Combinatorial threshold-linear networks (CTLNs) are a special class of inhibition-dominated TLNs def...
Combinatorial threshold-linear networks (CTLNs) are a special class of inhibition-dominated TLNs def...
Abstract. A broad range of nonlinear processes over networks are governed by threshold dynamics. So ...
In this paper we study the dynamic behavior of threshold networks on undirected signed graphs. While...
The wide repertoire of attractors and basins of attraction that appear in dynamic neural networks no...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
The computational abilities of recurrent networks of neurons with a linear activation function above...
Most theoretical studies of the computational capabilities of balanced, recurrent E/I networks assu...
A. Illustration of the network topology searching. Dashed arrows are regulations sampled. The topolo...
Oscillations arise in many real-world systems and are associated with both functional and dysfunctio...
tructure of a strange attractor in the phase space without getting stuck at local minima. This abili...
"We investigate how changes of specific topological features result on transitions among different b...
Networks are fundamental for our understanding of complex systems. Interactions between individual n...
Threshold-linear networks (TLNs) are recurrent networks where the dynamics are threshold-linear (lin...
Computational methods and tools that can efficiently and effectively analyze the temporal changes in...
Combinatorial threshold-linear networks (CTLNs) are a special class of inhibition-dominated TLNs def...
Combinatorial threshold-linear networks (CTLNs) are a special class of inhibition-dominated TLNs def...
Abstract. A broad range of nonlinear processes over networks are governed by threshold dynamics. So ...
In this paper we study the dynamic behavior of threshold networks on undirected signed graphs. While...
The wide repertoire of attractors and basins of attraction that appear in dynamic neural networks no...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
The computational abilities of recurrent networks of neurons with a linear activation function above...
Most theoretical studies of the computational capabilities of balanced, recurrent E/I networks assu...
A. Illustration of the network topology searching. Dashed arrows are regulations sampled. The topolo...
Oscillations arise in many real-world systems and are associated with both functional and dysfunctio...
tructure of a strange attractor in the phase space without getting stuck at local minima. This abili...
"We investigate how changes of specific topological features result on transitions among different b...
Networks are fundamental for our understanding of complex systems. Interactions between individual n...
Threshold-linear networks (TLNs) are recurrent networks where the dynamics are threshold-linear (lin...
Computational methods and tools that can efficiently and effectively analyze the temporal changes in...