We initiate a line of investigation into biological neural networks from an algorithmic perspective. We develop a simplified but biologically plausible model for distributed computation in stochastic spiking neural networks and study tradeoffs between computation time and network complexity in this model. Our aim is to abstract real neural networks in a way that, while not capturing all interesting features, preserves high-level behavior and allows us to make biologically relevant conclusions. In this paper, we focus on the important 'winner-Take-All' (WTA) problem, which is analogous to a neural leader election unit: A network consisting of n input neurons and n corresponding output neurons must converge to a state in which a single output...
We study distributed algorithms implemented in a simplified biologically inspired model for stochast...
In this paper, we propose a fast winner-take-all (WTA) neural network. The fast winner-take-all neur...
© Nancy Lynch, Cameron Musco, and Merav Parter;. We study distributed algorithms implemented in a si...
We initiate a line of investigation into biological neural networks from an algorithmic perspective....
We initiate a line of investigation into biological neural networks from an algorithmic perspective....
An elemental computation in the brain is to identify the best in a set of options and report its val...
An elemental computation in the brain is to identify the best in a set of options and report its val...
© 2019 Massachusetts Institute of Technology. Winner-take-all (WTA) refers to the neural operation t...
The neocortex has a remarkably uniform neuronal organization, suggesting that common principles of p...
The neocortex has a remarkably uniform neuronal organization, suggesting that common principles of p...
The neocortex has a remarkably uniform neuronal organization, suggesting that common principles of p...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
[[abstract]]In this paper, we propose a fast winner-take-all (WTA) neural network. The fast winner-t...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
We study distributed algorithms implemented in a simplified biologically inspired model for stochast...
In this paper, we propose a fast winner-take-all (WTA) neural network. The fast winner-take-all neur...
© Nancy Lynch, Cameron Musco, and Merav Parter;. We study distributed algorithms implemented in a si...
We initiate a line of investigation into biological neural networks from an algorithmic perspective....
We initiate a line of investigation into biological neural networks from an algorithmic perspective....
An elemental computation in the brain is to identify the best in a set of options and report its val...
An elemental computation in the brain is to identify the best in a set of options and report its val...
© 2019 Massachusetts Institute of Technology. Winner-take-all (WTA) refers to the neural operation t...
The neocortex has a remarkably uniform neuronal organization, suggesting that common principles of p...
The neocortex has a remarkably uniform neuronal organization, suggesting that common principles of p...
The neocortex has a remarkably uniform neuronal organization, suggesting that common principles of p...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
[[abstract]]In this paper, we propose a fast winner-take-all (WTA) neural network. The fast winner-t...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
We study distributed algorithms implemented in a simplified biologically inspired model for stochast...
In this paper, we propose a fast winner-take-all (WTA) neural network. The fast winner-take-all neur...
© Nancy Lynch, Cameron Musco, and Merav Parter;. We study distributed algorithms implemented in a si...