We introduce a novel, biologically plausible local learning rule that provably increases the robustness of neural dynamics to noise in nonlinear recurrent neural networks with homogeneous nonlinearities. Our learning rule achieves higher noise robustness without sacrificing performance on the task and without requiring any knowledge of the particular task. The plasticity dynamics -- an integrable dynamical system operating on the weights of the network -- maintains a multiplicity of conserved quantities, most notably the network's entire temporal map of input to output trajectories. The outcome of our learning rule is a synaptic balancing between the incoming and outgoing synapses of every neuron. This synaptic balancing rule is consistent ...
Reinforcement learning in neural networks requires a mechanism for exploring new network states in r...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
In experimental and theoretical neuroscience, synaptic plasticity has dominated the area of neural p...
Nature has always inspired the human spirit and scientists frequently developed new methods based on...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
The brain uses spikes in neural circuits to perform many dynamical computations. The computations ar...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
In this work, I study the relationship between a local, intrinsic update mechanism and a synaptic, e...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
The search for biologically faithful synaptic plasticity rules has resulted in a large body of model...
It is a long-established fact that neuronal plasticity occupies the central role in generating neura...
Generating functionals may guide the evolution of a dynamical system and constitute a possible route...
International audienceHomeostatic intrinsic plasticity (HIP) is a ubiquitous cellular mechanism regu...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
Synaptic plasticity is a crucial neuronal mechanism for learning and memory. It allows synapses to c...
Reinforcement learning in neural networks requires a mechanism for exploring new network states in r...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
In experimental and theoretical neuroscience, synaptic plasticity has dominated the area of neural p...
Nature has always inspired the human spirit and scientists frequently developed new methods based on...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
The brain uses spikes in neural circuits to perform many dynamical computations. The computations ar...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
In this work, I study the relationship between a local, intrinsic update mechanism and a synaptic, e...
Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory ne...
The search for biologically faithful synaptic plasticity rules has resulted in a large body of model...
It is a long-established fact that neuronal plasticity occupies the central role in generating neura...
Generating functionals may guide the evolution of a dynamical system and constitute a possible route...
International audienceHomeostatic intrinsic plasticity (HIP) is a ubiquitous cellular mechanism regu...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
Synaptic plasticity is a crucial neuronal mechanism for learning and memory. It allows synapses to c...
Reinforcement learning in neural networks requires a mechanism for exploring new network states in r...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
In experimental and theoretical neuroscience, synaptic plasticity has dominated the area of neural p...