Soltoggio A, Stanley KO. From modulated Hebbian plasticity to simple behavior learning through noise and weight saturation. Neural Networks. 2012;34:28-41.Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models struggle to link local synaptic changes to the acquisition of behaviors. The aim of this paper is to demonstrate a computational relationship between local Hebbian plasticity and behavior learning by exploiting two traditionally unwanted features: neural noise and synaptic weight saturation. A modulation signal is employed to arbitrate the sign of plasticity: when the modulation is positive, the synaptic weights saturate to express exploitative behavior; when it is negative, the weights conve...
Plasticity is usually classified into two distinct categories: Hebbian or homeostatic. Hebbian is dr...
A fundamental aspect of learning in biological neural networks is the plasticity property which allo...
The search for biologically faithful synaptic plasticity rules has resulted in a large body of model...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
It has recently been shown in a brain–computer interface experiment that motor cortical neurons chan...
It has recently been shown in a brain–computer interface experiment that motor cortical neurons chan...
The plasticity property of biological neural networks allows them to perform learning and optimize t...
From the propagation of neural activity through synapses, to the integration of signals in the dendr...
<p>(A) Raster plot showing network spiking during learning () and auto-associative recall (). The ve...
Hebbian learning has been implicated as a possible mech-anism in a wide range of learning and memory...
Despite an abundance of computational models for learning of synaptic weights, there has been relati...
Unconstrained growth of synaptic activity and lack of references to synaptic depression in Hebb‟s po...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
Plasticity is usually classified into two distinct categories: Hebbian or homeostatic. Hebbian is dr...
A fundamental aspect of learning in biological neural networks is the plasticity property which allo...
The search for biologically faithful synaptic plasticity rules has resulted in a large body of model...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
It has recently been shown in a brain–computer interface experiment that motor cortical neurons chan...
It has recently been shown in a brain–computer interface experiment that motor cortical neurons chan...
The plasticity property of biological neural networks allows them to perform learning and optimize t...
From the propagation of neural activity through synapses, to the integration of signals in the dendr...
<p>(A) Raster plot showing network spiking during learning () and auto-associative recall (). The ve...
Hebbian learning has been implicated as a possible mech-anism in a wide range of learning and memory...
Despite an abundance of computational models for learning of synaptic weights, there has been relati...
Unconstrained growth of synaptic activity and lack of references to synaptic depression in Hebb‟s po...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
Plasticity is usually classified into two distinct categories: Hebbian or homeostatic. Hebbian is dr...
A fundamental aspect of learning in biological neural networks is the plasticity property which allo...
The search for biologically faithful synaptic plasticity rules has resulted in a large body of model...