Simple and complex spiking neurons: perspectives and analysis in a simple STDP scenario
Davide Liberato Manna, Alex Vicente Sola, Paul Kirkland, Trevor Bihl,, Gaetano Di Caterina

TL;DR
This paper compares simple and complex spiking neuron models within SNNs trained with STDP, showing that complex models perform better on data with richer spatio-temporal features, guiding model selection based on data complexity.
Contribution
It provides a comparative analysis of LIF, QIF, and EIF neuron models in SNNs, highlighting how model complexity affects performance depending on data richness.
Findings
Complex neurons achieve similar accuracy on simple datasets as simpler models.
More complex neurons outperform simpler ones on datasets with richer features.
Model choice should consider the data's spatio-temporal complexity for optimal performance.
Abstract
Spiking neural networks (SNNs) are largely inspired by biology and neuroscience and leverage ideas and theories to create fast and efficient learning systems. Spiking neuron models are adopted as core processing units in neuromorphic systems because they enable event-based processing. The integrate-and-fire (I&F) models are often adopted, with the simple Leaky I&F (LIF) being the most used. The reason for adopting such models is their efficiency and/or biological plausibility. Nevertheless, rigorous justification for adopting LIF over other neuron models for use in artificial learning systems has not yet been studied. This work considers various neuron models in the literature and then selects computational neuron models that are single-variable, efficient, and display different types of complexities. From this selection, we make a comparative study of three simple I&F neuron models,…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural dynamics and brain function · Neuroscience and Neural Engineering
