Neuronal networks encode information through patterns of activity that define the networks' function. The neurons' activity relies on specific connectivity structures, yet the link between structure and function is not fully understood. Here, we tackle this structure-function problem with a new conceptual approach. Instead of manipulating the connectivity directly, we focus on upper triangular matrices, which represent the network dynamics in a given orthonormal basis obtained by the Schur decomposition. This abstraction allows us to independently manipulate the eigenspectrum and feedforward structures of a connectivity matrix. Using this method, we describe a diverse repertoire of non-normal transient amplification, and to complement the a...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
Previous explanations of computations performed by recurrent networks have focused on symmetrically ...
We use upper triangular matrices as abstract representations of neuronal networks and directly manip...
In dynamical models of cortical networks, the recurrent con-nectivity can amplify the input given to...
In dynamical models of cortical networks, the recurrent connectivity can amplify the input given to ...
In dynamical models of cortical networks, the recurrent connectivity can amplify the input given to ...
In dynamical models of cortical networks, the recurrent connectivity can amplify the input given to ...
In dynamical models of cortical networks, the recurrent connectivity can amplify the input given to ...
The brain consists of complex interacting networks of excitatory and inhibitory neurons. The spatio-...
The brain consists of complex interacting networks of excitatory and inhibitory neurons. The spatio-...
We study the effect of network structure on the dynamical response of networks of coupled discrete-s...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
Unraveling the interplay between connectivity and spatio-temporal dynamics in neuronal networks is a...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
Previous explanations of computations performed by recurrent networks have focused on symmetrically ...
We use upper triangular matrices as abstract representations of neuronal networks and directly manip...
In dynamical models of cortical networks, the recurrent con-nectivity can amplify the input given to...
In dynamical models of cortical networks, the recurrent connectivity can amplify the input given to ...
In dynamical models of cortical networks, the recurrent connectivity can amplify the input given to ...
In dynamical models of cortical networks, the recurrent connectivity can amplify the input given to ...
In dynamical models of cortical networks, the recurrent connectivity can amplify the input given to ...
The brain consists of complex interacting networks of excitatory and inhibitory neurons. The spatio-...
The brain consists of complex interacting networks of excitatory and inhibitory neurons. The spatio-...
We study the effect of network structure on the dynamical response of networks of coupled discrete-s...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
Unraveling the interplay between connectivity and spatio-temporal dynamics in neuronal networks is a...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
Previous explanations of computations performed by recurrent networks have focused on symmetrically ...