A dynamical memory with only one spiking neuron
A dynamical memory with only one spiking neuron
Common wisdom indicates that to implement a Dynamical Memory with spiking neurons two ingredients are necessary: recurrence and a neuron population. Here we shall show that the second requirement is not needed. We shall demonstrate that under very general assumptions a single recursive spiking neuron can realize a robust model of a dynamical memory. We demonstrate the implementation of a dynamical memory in both, software and hardware. In the former case, we introduce trivial extensions of the popular aQIF and AdEx models. In the latter, we show traces obtained in a circuit model with a recently proposed memristive spiking neuron. We show that the bistability of the theoretical models can be understood in terms of a self-consistent problem that can be represented geometrically. Our minimal dynamical memory model provides a simplest implementation of an important neuro-computational primitive, which can be useful in navigation system models based on purely spiking dynamics. A one neuron dynamical memory may also provides a natural explanation to the surprising recent observation that the excitation bump in Drosophila's ellipsoidal body is made by just a handful of neurons.
Damien Depannemaecker、Adrien d'Hollande、Jiaming Wu、Marcelo J. Rozenberg
生物科学理论、生物科学方法生物科学研究方法、生物科学研究技术生理学计算技术、计算机技术
Damien Depannemaecker,Adrien d'Hollande,Jiaming Wu,Marcelo J. Rozenberg.A dynamical memory with only one spiking neuron[EB/OL].(2025-05-21)[2025-06-07].https://arxiv.org/abs/2505.15453.点此复制
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