Gradient-Free Continual Learning in Spiking Neural Networks via Inter-Spike Interval Regularization
Samrendra Roy, Kazuma Kobayashi, Souvik Chakraborty, Sajedul Talukder, Syed Bahauddin Alam

TL;DR
This paper introduces ISI-CV, a gradient-free importance metric for spiking neural networks in continual learning, enabling effective task retention on neuromorphic hardware without backpropagation.
Contribution
It proposes ISI-CV, the first gradient-free importance measure based on inter-spike interval variability, suitable for neuromorphic hardware and improving continual learning performance.
Findings
Achieves near-zero forgetting on multiple benchmarks.
Performs best on real neuromorphic DVS data.
Outperforms gradient-based methods on N-MNIST.
Abstract
Continual learning, the ability to acquire new tasks sequentially without forgetting prior knowledge, is essential for deploying neural networks in dynamic real-world environments, from nuclear digital twin monitoring to grid-edge fault detection. Existing synaptic importance methods, such as Elastic Weight Consolidation (EWC) and Synaptic Intelligence (SI), rely on gradient computation, making them incompatible with neuromorphic hardware that lacks backpropagation support. We propose ISI-CV, the first gradient-free synaptic importance metric for SNN continual learning, derived from the Coefficient of Variation (CV) of Inter-Spike Intervals (ISIs). Neurons that fire regularly (low CV) encode stable, task-relevant features and are protected from overwriting; neurons with irregular firing are permitted to adapt freely. ISI-CV requires only spike time counters and integer arithmetic, all…
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