Brian 2, an intuitive and efficient neural simulator
Brian 2 allows scientists to simply and efficiently simulate spiking neural network models.
These models can feature novel dynamical equations, their interactions with the …
These models can feature novel dynamical equations, their interactions with the …
Is realistic neuronal modeling realistic?
M Almog, A Korngreen - Journal of neurophysiology, 2016 - journals.physiology.org
Scientific models are abstractions that aim to explain natural phenomena. A successful
model shows how a complex phenomenon arises from relatively simple principles while …
model shows how a complex phenomenon arises from relatively simple principles while …
Memory and information processing in neuromorphic systems
A striking difference between brain-inspired neuromorphic processors and current von
Neumann processor architectures is the way in which memory and processing is organized …
Neumann processor architectures is the way in which memory and processing is organized …
A survey on dendritic neuron model: Mechanisms, algorithms and practical applications
Research on dendrites has been conducted for decades, providing valuable information for
the development of dendritic computation. Creating an ideal neuron model is crucial for …
the development of dendritic computation. Creating an ideal neuron model is crucial for …
Generalized leaky integrate-and-fire models classify multiple neuron types
There is a high diversity of neuronal types in the mammalian neocortex. To facilitate
construction of system models with multiple cell types, we generate a database of point …
construction of system models with multiple cell types, we generate a database of point …
Spike-Threshold Adaptation Predicted by Membrane Potential Dynamics In Vivo
Neurons encode information in sequences of spikes, which are triggered when their
membrane potential crosses a threshold. In vivo, the spiking threshold displays large …
membrane potential crosses a threshold. In vivo, the spiking threshold displays large …
Computational models in the age of large datasets
Highlights•Computational models will prove increasingly useful for understanding large
datasets.•Substantial challenges exist for fitting detailed models to data.•Conceptual and …
datasets.•Substantial challenges exist for fitting detailed models to data.•Conceptual and …
What is the most realistic single-compartment model of spike initiation?
R Brette - PLoS computational biology, 2015 - journals.plos.org
A large variety of neuron models are used in theoretical and computational neuroscience,
and among these, single-compartment models are a popular kind. These models do not …
and among these, single-compartment models are a popular kind. These models do not …
Fitting neuron models to spike trains
Computational modeling is increasingly used to understand the function of neural circuits in
systems neuroscience. These studies require models of individual neurons with realistic …
systems neuroscience. These studies require models of individual neurons with realistic …
Simulating spiking neural networks on GPU
Modern graphics cards contain hundreds of cores that can be programmed for intensive
calculations. They are beginning to be used for spiking neural network simulations. The goal …
calculations. They are beginning to be used for spiking neural network simulations. The goal …