Nature has always inspired the human spirit and scientists frequently developed new methods based on observations from nature. Recent advances in imaging and sensing technology allow fascinating insights into biological neural processes. With the objective of finding new strategies to enhance the learning capabilities of neural networks, we focus on a phenomenon that is closely related to learning tasks and neural stability in biological neural networks, called homeostatic plasticity. Among the theories that have been developed to describe homeostatic plasticity, synaptic scaling has been found to be the most mature and applicable. We systematically discuss previous studies on the synaptic scaling theory and how they could be applied to art...
Biological brains are composed of neurons, interconnected by synapses to create large complex networ...
Inspired by the physiology of neuronal systems in the brain, artificial neural networks have become ...
Deemed as the third generation of neural networks, the event-driven Spiking Neural Networks(SNNs) co...
textAbstract The synaptic input received by neurons in cortical circuits is in constant flux. From b...
Abstract Learning continually without forgetting might be one of the ultimate goals for building ar...
We introduce a novel, biologically plausible local learning rule that provably increases the robustn...
In experimental and theoretical neuroscience, synaptic plasticity has dominated the area of neural p...
Conventional synaptic plasticity in combination with synaptic scaling is a biologically plausible pl...
Conventional synaptic plasticity in combination with synaptic scaling is a biologically plausible pl...
The plastic character of brain synapses is considered to be one of the foundations for the formation...
Plasticity circuits in the brain are known to be influenced by the distribution of the synaptic weig...
In this work, I study the relationship between a local, intrinsic update mechanism and a synaptic, e...
Synaptic plasticity is a crucial neuronal mechanism for learning and memory. It allows synapses to c...
Self-organization in biological nervous systems during the lifetime is known to largely occur throug...
Homeostatic plasticity can globally scale the strength of all synapses on a neuron, but whether a si...
Biological brains are composed of neurons, interconnected by synapses to create large complex networ...
Inspired by the physiology of neuronal systems in the brain, artificial neural networks have become ...
Deemed as the third generation of neural networks, the event-driven Spiking Neural Networks(SNNs) co...
textAbstract The synaptic input received by neurons in cortical circuits is in constant flux. From b...
Abstract Learning continually without forgetting might be one of the ultimate goals for building ar...
We introduce a novel, biologically plausible local learning rule that provably increases the robustn...
In experimental and theoretical neuroscience, synaptic plasticity has dominated the area of neural p...
Conventional synaptic plasticity in combination with synaptic scaling is a biologically plausible pl...
Conventional synaptic plasticity in combination with synaptic scaling is a biologically plausible pl...
The plastic character of brain synapses is considered to be one of the foundations for the formation...
Plasticity circuits in the brain are known to be influenced by the distribution of the synaptic weig...
In this work, I study the relationship between a local, intrinsic update mechanism and a synaptic, e...
Synaptic plasticity is a crucial neuronal mechanism for learning and memory. It allows synapses to c...
Self-organization in biological nervous systems during the lifetime is known to largely occur throug...
Homeostatic plasticity can globally scale the strength of all synapses on a neuron, but whether a si...
Biological brains are composed of neurons, interconnected by synapses to create large complex networ...
Inspired by the physiology of neuronal systems in the brain, artificial neural networks have become ...
Deemed as the third generation of neural networks, the event-driven Spiking Neural Networks(SNNs) co...