The representation of the natural-density, heterogeneous connectivity of neuronal network models at relevant spatial scales remains a challenge for Computational Neuroscience and Neuromorphic Computing. In particular, the memory demands imposed by the vast number of synapses in brain-scale network simulations constitutes a major obstacle. Limiting the number resolution of synaptic weights appears to be a natural strategy to reduce memory and compute load. In this study, we investigate the effects of a limited synaptic-weight resolution on the dynamics of recurrent spiking neuronal networks resembling local cortical circuits, and develop strategies for minimizing deviations from the dynamics of networks with high-resolution synaptic weights...
We propose a new model of the read-out of spike trains that exploits the multivariate structure of r...
Recurrently connected neural networks, in which synaptic connections between neurons can form direc...
In motor-related brain regions, movement intention has been successfully decoded from in-vivo spike ...
The representation of the natural-density, heterogeneous connectivity of neuronalnetwork models at r...
The representation of the natural-density, heterogeneous connectivity of neuronal network models at ...
<div><p>The manner in which different distributions of synaptic weights onto cortical neurons shape ...
The manner in which different distributions of synaptic weights onto cortical neurons shape their sp...
Network models are routinely downscaled because of a lack of computational resources, often without ...
Dynamics and function of neuronal networks are determined by their synaptic connectivity. Current ex...
Pattern formation, i.e., the generation of an inhomogeneous spatial activity distribution in a dynam...
Learning synaptic weights of spiking neural network (SNN) models that can reproduce target spike tra...
Large-scale neuromorphic hardware systems typically bear the trade-off between detail level and requ...
Large-scale cortical networks employing homeostatic mechanisms and synaptic plasticity rules have be...
Simultaneous recordings from the cortex have revealed that neural activity is highly variable and th...
∗ equal contribution. While spike timing has been shown to carry detailed stimulus information at th...
We propose a new model of the read-out of spike trains that exploits the multivariate structure of r...
Recurrently connected neural networks, in which synaptic connections between neurons can form direc...
In motor-related brain regions, movement intention has been successfully decoded from in-vivo spike ...
The representation of the natural-density, heterogeneous connectivity of neuronalnetwork models at r...
The representation of the natural-density, heterogeneous connectivity of neuronal network models at ...
<div><p>The manner in which different distributions of synaptic weights onto cortical neurons shape ...
The manner in which different distributions of synaptic weights onto cortical neurons shape their sp...
Network models are routinely downscaled because of a lack of computational resources, often without ...
Dynamics and function of neuronal networks are determined by their synaptic connectivity. Current ex...
Pattern formation, i.e., the generation of an inhomogeneous spatial activity distribution in a dynam...
Learning synaptic weights of spiking neural network (SNN) models that can reproduce target spike tra...
Large-scale neuromorphic hardware systems typically bear the trade-off between detail level and requ...
Large-scale cortical networks employing homeostatic mechanisms and synaptic plasticity rules have be...
Simultaneous recordings from the cortex have revealed that neural activity is highly variable and th...
∗ equal contribution. While spike timing has been shown to carry detailed stimulus information at th...
We propose a new model of the read-out of spike trains that exploits the multivariate structure of r...
Recurrently connected neural networks, in which synaptic connections between neurons can form direc...
In motor-related brain regions, movement intention has been successfully decoded from in-vivo spike ...