About 50-80% of total energy is consumed by signaling in neural networks. A neural network consumes much energy if there are many active neurons in the network. If there are few active neurons in a neural network, the network consumes very little energy. The ratio of active neurons to all neurons of a neural network, that is, the sparseness, affects the energy consumption of a neural network. Laughlin’s studies show that the sparseness of an energy-efficient code depends on the balance between signaling and fixed costs. Laughlin did not give an exact ratio of signaling to fixed costs, nor did they give the ratio of active neurons to all neurons in most energy-efficient neural networks. In this paper, we calculated the ratio of signaling cos...
The energy efficiency of neuromorphic hardware is greatly affected by the energy of storing, accessi...
International audienceThe activity of a neural network is defined by patterns of spiking and silence...
studies of mammalian cortex argue that efficient neural codes should be sparse. However, theoretical...
Mammalian brains consist of billions of neurons, each capable of independent electrical activity. In...
Selective pressure may drive neural systems to process as much information as possible with the lowe...
Human and animal experiments have shown that acquiring and storing information can require substanti...
Neuronal networks in the brain are the structural basis of human cognitive function, and the plastic...
Identifying the determinants of neuronal energy consumption and their relationship to information co...
Information measures are often used to assess the efficacy of neural networks, and learning rules ca...
It is believed that energy efficiency is an important constraint in brain evolution. As synaptic tra...
Neural circuits can produce similar activity patterns from vastly different combinations of channel ...
Neural morphology and membrane properties vary greatly between cell types in the nervous system. The...
It is believed that energy efficiency is an important constraint in brain evolution. As synaptic tra...
Most biological networks are modular but previous work with small model networks has indicated that ...
For most neurons, the information the neuron passes on is contained within the times of sending out ...
The energy efficiency of neuromorphic hardware is greatly affected by the energy of storing, accessi...
International audienceThe activity of a neural network is defined by patterns of spiking and silence...
studies of mammalian cortex argue that efficient neural codes should be sparse. However, theoretical...
Mammalian brains consist of billions of neurons, each capable of independent electrical activity. In...
Selective pressure may drive neural systems to process as much information as possible with the lowe...
Human and animal experiments have shown that acquiring and storing information can require substanti...
Neuronal networks in the brain are the structural basis of human cognitive function, and the plastic...
Identifying the determinants of neuronal energy consumption and their relationship to information co...
Information measures are often used to assess the efficacy of neural networks, and learning rules ca...
It is believed that energy efficiency is an important constraint in brain evolution. As synaptic tra...
Neural circuits can produce similar activity patterns from vastly different combinations of channel ...
Neural morphology and membrane properties vary greatly between cell types in the nervous system. The...
It is believed that energy efficiency is an important constraint in brain evolution. As synaptic tra...
Most biological networks are modular but previous work with small model networks has indicated that ...
For most neurons, the information the neuron passes on is contained within the times of sending out ...
The energy efficiency of neuromorphic hardware is greatly affected by the energy of storing, accessi...
International audienceThe activity of a neural network is defined by patterns of spiking and silence...
studies of mammalian cortex argue that efficient neural codes should be sparse. However, theoretical...