Neural computation in biological and artificial networks relies on the nonlinear summation of many inputs. The structural connectivity matrix of synaptic weights between neurons is a critical determinant of overall network function, but quantitative links between neural network structure and function are complex and subtle. For example, many networks can give rise to similar functional responses, and the same network can function differently depending on context. Whether certain patterns of synaptic connectivity are required to generate specific network-level computations is largely unknown. Here we introduce a geometric framework for identifying synaptic connections required by steady-state responses in recurrent networks of threshold-line...
International audienceThe appropriate function of the nervous system relies on precise patterns of c...
Advances in technology are opening new windows on the structural connectivity and functional dynamic...
International audienceStructure–function studies of neuronal networks have recently benefited from c...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
Understanding how the statistical and geometric properties of neural activations relate to network p...
This work was supported by funding from the ETH Domain for the Blue Brain Project and the Laboratory...
One major challenge of neuroscience is finding interesting structures in a seemingly disorganized ne...
We study the structure of multistable recurrent neural networks. The activation function is simplifi...
Over the past decade, scientific interest in the properties of large-scale spontaneous neural dynami...
A central question for neuroscience is how to characterize brain representations of perceptual and c...
This much is certain: neurons are coupled, and they exhibit covariations in their output. The extent...
Funding: This study was supported by funding to the Blue Brain Project, a research center of the Eco...
This paper proposes a novel topological learning framework that integrates networks of different siz...
A statement like “$N_\text{s}$ source neurons and $N_\text{t}$ target neurons are connected randomly...
The brain’s structural connectivity plays a fundamental role in determining how neuron networks gene...
International audienceThe appropriate function of the nervous system relies on precise patterns of c...
Advances in technology are opening new windows on the structural connectivity and functional dynamic...
International audienceStructure–function studies of neuronal networks have recently benefited from c...
Many networks in the brain exhibit internally-generated dynamics—patterned activity that does not re...
Understanding how the statistical and geometric properties of neural activations relate to network p...
This work was supported by funding from the ETH Domain for the Blue Brain Project and the Laboratory...
One major challenge of neuroscience is finding interesting structures in a seemingly disorganized ne...
We study the structure of multistable recurrent neural networks. The activation function is simplifi...
Over the past decade, scientific interest in the properties of large-scale spontaneous neural dynami...
A central question for neuroscience is how to characterize brain representations of perceptual and c...
This much is certain: neurons are coupled, and they exhibit covariations in their output. The extent...
Funding: This study was supported by funding to the Blue Brain Project, a research center of the Eco...
This paper proposes a novel topological learning framework that integrates networks of different siz...
A statement like “$N_\text{s}$ source neurons and $N_\text{t}$ target neurons are connected randomly...
The brain’s structural connectivity plays a fundamental role in determining how neuron networks gene...
International audienceThe appropriate function of the nervous system relies on precise patterns of c...
Advances in technology are opening new windows on the structural connectivity and functional dynamic...
International audienceStructure–function studies of neuronal networks have recently benefited from c...