Recurrent network models are instrumental in investigating how behaviorally-relevant computations emerge from collective neural dynamics. A recently developed class of models based on low-rank connectivity provides an analytically tractable framework for understanding of how connectivity structure determines the geometry of low-dimensional dynamics and the ensuing computations. Such models however lack some fundamental biological constraints, and in particular represent individual neurons in terms of abstract units that communicate through continuous firing rates rather than discrete action potentials. Here we examine how far the theoretical insights obtained from low-rank rate networks transfer to more biologically plausible networks of sp...
A basic-yet nontrivial-function which neocortical circuitry must satisfy is the ability to maintain ...
Low-dimensional attractive manifolds with flows prescribing the evolution of state variables are com...
Mean-field theory for networks of spiking neurons based on the so-called diffusion approximation has...
The cerebral cortex exhibits distinct connectivity patterns on different length scales. Long range c...
There is broad consent that understanding the brain's function relies on the investigation of the mu...
Fast oscillations of the population firing rate in the gamma range (50-200 Hz), where each individua...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
Pattern formation, i.e., the generation of an inhomogeneous spatial activity distribution in a dynam...
Accurate population models are needed to build very large-scale neural models, but their derivation ...
An emerging paradigm proposes that neural computations can be understood at the level of dynamic sys...
The question of how the structure of a neuronal network affects its functionality has gained a lot o...
Several recent studies have shown that neural activity in vivo tends to be constrained to a low-dime...
A major goal of neuroscience, statistical physics, and nonlinear dynamics is to understand how brain...
A major goal of neuroscience, statistical physics, and nonlinear dynamics is to understand how brain...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
A basic-yet nontrivial-function which neocortical circuitry must satisfy is the ability to maintain ...
Low-dimensional attractive manifolds with flows prescribing the evolution of state variables are com...
Mean-field theory for networks of spiking neurons based on the so-called diffusion approximation has...
The cerebral cortex exhibits distinct connectivity patterns on different length scales. Long range c...
There is broad consent that understanding the brain's function relies on the investigation of the mu...
Fast oscillations of the population firing rate in the gamma range (50-200 Hz), where each individua...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
Pattern formation, i.e., the generation of an inhomogeneous spatial activity distribution in a dynam...
Accurate population models are needed to build very large-scale neural models, but their derivation ...
An emerging paradigm proposes that neural computations can be understood at the level of dynamic sys...
The question of how the structure of a neuronal network affects its functionality has gained a lot o...
Several recent studies have shown that neural activity in vivo tends to be constrained to a low-dime...
A major goal of neuroscience, statistical physics, and nonlinear dynamics is to understand how brain...
A major goal of neuroscience, statistical physics, and nonlinear dynamics is to understand how brain...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
A basic-yet nontrivial-function which neocortical circuitry must satisfy is the ability to maintain ...
Low-dimensional attractive manifolds with flows prescribing the evolution of state variables are com...
Mean-field theory for networks of spiking neurons based on the so-called diffusion approximation has...