Several recent studies have shown that neural activity in vivo tends to be constrained to a low-dimensional manifold. Such activity does not arise in simulated neural networks with homogeneous connectivity and it has been suggested that it is indicative of some other connectivity pattern in neuronal networks. In particular, this connectivity pattern appears to be constraining learning so that only neural activity patterns falling within the intrinsic manifold can be learned and elicited. Here, we use three different models of spiking neural networks (echo-state networks, the Neural Engineering Framework and Efficient Coding) to demonstrate how the intrinsic manifold can be made a direct consequence of the circuit connectivity. Using this re...
Recent developments in experimental neuroscience make it possible to simultaneously record the activ...
While artificial machine learning systems achieve superhuman performance in specific tasks such as l...
Most existing studies on computational modeling of neural plasticity have focused on synaptic plasti...
Several recent studies have shown that neural activity in vivo tends to be constrained to a low-dime...
Several recent studies have shown that neural activity in vivo tends to be constrained to a low-dime...
Two different perspectives have informed efforts to explain the link between the brain and behaviour...
Recurrent network models are instrumental in investigating how behaviorally-relevant computations em...
In motor-related brain regions, movement intention has been successfully decoded from in-vivo spike ...
The dimensionality of a network's collective activity is of increasing interest in neuroscience. Thi...
We consider a statistical framework for learning in a class of net-works of spiking neurons. Our aim...
Providing the neurobiological basis of information processing in higher animals, spiking neural netw...
Neural activity is often low dimensional and dominated by only a few prominent neural covariation pa...
How does the size of a neural circuit influence its learning performance? Larger brains tend to be f...
The connectivity of mammalian brains exhibits structure at a wide variety of spatial scales, from th...
Neural activity is often low dimensional and dominated by only a few prominent neural covariation pa...
Recent developments in experimental neuroscience make it possible to simultaneously record the activ...
While artificial machine learning systems achieve superhuman performance in specific tasks such as l...
Most existing studies on computational modeling of neural plasticity have focused on synaptic plasti...
Several recent studies have shown that neural activity in vivo tends to be constrained to a low-dime...
Several recent studies have shown that neural activity in vivo tends to be constrained to a low-dime...
Two different perspectives have informed efforts to explain the link between the brain and behaviour...
Recurrent network models are instrumental in investigating how behaviorally-relevant computations em...
In motor-related brain regions, movement intention has been successfully decoded from in-vivo spike ...
The dimensionality of a network's collective activity is of increasing interest in neuroscience. Thi...
We consider a statistical framework for learning in a class of net-works of spiking neurons. Our aim...
Providing the neurobiological basis of information processing in higher animals, spiking neural netw...
Neural activity is often low dimensional and dominated by only a few prominent neural covariation pa...
How does the size of a neural circuit influence its learning performance? Larger brains tend to be f...
The connectivity of mammalian brains exhibits structure at a wide variety of spatial scales, from th...
Neural activity is often low dimensional and dominated by only a few prominent neural covariation pa...
Recent developments in experimental neuroscience make it possible to simultaneously record the activ...
While artificial machine learning systems achieve superhuman performance in specific tasks such as l...
Most existing studies on computational modeling of neural plasticity have focused on synaptic plasti...