Learning flow functions of spiking systems
Miguel Aguiar, Amritam Das, Karl H. Johansson
TL;DR
The spiking nature of the signals makes for a data-heavy and computationally hard training process; thus, two methods to mitigate these difficulties are described to mitigate these difficulties.
Abstract
We propose a framework for surrogate modelling of spiking systems. These systems are often described by stiff differential equations with high-amplitude oscillations and multi-timescale dynamics, making surrogate models an attractive tool for system design and simulation. We parameterise the flow function of a spiking system using a recurrent neural network architecture, allowing for a direct continuous-time representation of the state trajectories. The spiking nature of the signals makes for a data-heavy and computationally hard training process; thus, we describe two methods to mitigate these difficulties. We demonstrate our framework on two conductance-based models of biological neurons, showing that we are able to train surrogate models which accurately replicate the spiking behaviour.
