4.5 Article

Accuracy and Efficiency in Fixed- Point Neural ODE Solvers

Related references

Note: Only part of the references are listed.
Article Engineering, Electrical & Electronic

The SpiNNaker Project

Steve B. Furber et al.

PROCEEDINGS OF THE IEEE (2014)

Article Computer Science, Artificial Intelligence

On the Simulation of Nonlinear Bidimensional Spiking Neuron Models

Jonathan Touboul

NEURAL COMPUTATION (2011)

Article Mathematics, Applied

On explicit two-derivative Runge-Kutta methods

Robert P. K. Chan et al.

NUMERICAL ALGORITHMS (2010)

Article Computer Science, Theory & Methods

Enhancing the implementation of mathematical formulas for fixed-point and floating-point arithmetics

Matthieu Martel

FORMAL METHODS IN SYSTEM DESIGN (2009)

Article Mathematical & Computational Biology

Spiking neural network simulation: numerical integration with the Parker-Sochacki method

Robert D. Stewart et al.

JOURNAL OF COMPUTATIONAL NEUROSCIENCE (2009)

Article Computer Science, Artificial Intelligence

Importance of the Cutoff Value in the Quadratic Adaptive Integrate-and-Fire Model

Jonathan Touboul

NEURAL COMPUTATION (2009)

Article Computer Science, Artificial Intelligence

Solution methods for a new class of simple model neurons

Mark D. Humphries et al.

NEURAL COMPUTATION (2007)

Review Mathematical & Computational Biology

Simulation of networks of spiking neurons:: A review of tools and strategies

Romain Brette et al.

JOURNAL OF COMPUTATIONAL NEUROSCIENCE (2007)

Article Mathematics, Applied

Two-stage explicit Runge-Kutta type methods using derivatives

H Ono et al.

JAPAN JOURNAL OF INDUSTRIAL AND APPLIED MATHEMATICS (2004)

Article Computer Science, Artificial Intelligence

Reliability of spike timing is a general property of spiking model neurons

R Brette et al.

NEURAL COMPUTATION (2003)

Article Computer Science, Artificial Intelligence

Simple model of spiking neurons

EM Izhikevich

IEEE TRANSACTIONS ON NEURAL NETWORKS (2003)