Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of a dynamical system. Not only they quantify how chaotic a dynamical system is, but since their sum is an upper bound for the rate of information production, they also provide a convenient way to quantify the complexity of a dynamical network. We conjecture based on numerical evidences that for a large class of dynamical networks composed by equal nodes, the sum of the positive Lyapunov exponents is bounded by the sum of all the positive Lyapunov exponents of both the synchronization manifold and its transversal directions, the last quantity being in principle easier to compute than the latter. As applications of our conjecture we: (i) show tha...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of ...
Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of ...
Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of ...
Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of ...
International audienceRandom neural networks are dynamical descriptions of randomly interconnected n...
International audienceRandom neural networks are dynamical descriptions of randomly interconnected n...
International audienceRandom neural networks are dynamical descriptions of randomly interconnected n...
International audienceRandom neural networks are dynamical descriptions of randomly interconnected n...
6 pages, 4 figuresWe compute how small input perturbations affect the output of deep neural networks...
"We investigate how changes of specific topological features result on transitions among different b...
We analyze the properties of networks obtained from the trajectories of unimodal maps at the transi-...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of ...
Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of ...
Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of ...
Positive Lyapunov exponents measure the asymptotic exponential divergence of nearby trajectories of ...
International audienceRandom neural networks are dynamical descriptions of randomly interconnected n...
International audienceRandom neural networks are dynamical descriptions of randomly interconnected n...
International audienceRandom neural networks are dynamical descriptions of randomly interconnected n...
International audienceRandom neural networks are dynamical descriptions of randomly interconnected n...
6 pages, 4 figuresWe compute how small input perturbations affect the output of deep neural networks...
"We investigate how changes of specific topological features result on transitions among different b...
We analyze the properties of networks obtained from the trajectories of unimodal maps at the transi-...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...
We study chaotic systems with multiple time delays that range over several orders of magnitude. We s...