NCLGAug 1, 2025

HetSyn: Versatile Timescale Integration in Spiking Neural Networks via Heterogeneous Synapses

arXiv:2508.11644v11 citations
Originality Incremental advance
AI Analysis

This work addresses a gap in SNN modeling for temporal processing, offering insights into brain-inspired computation, though it is incremental in extending existing neuron models.

The authors tackled the problem of modeling synaptic heterogeneity in Spiking Neural Networks (SNNs) by introducing HetSyn, a framework with synapse-specific time constants, which improved performance across tasks like speech and visual recognition, showing enhanced robustness and efficiency.

Spiking Neural Networks (SNNs) offer a biologically plausible and energy-efficient framework for temporal information processing. However, existing studies overlook a fundamental property widely observed in biological neurons-synaptic heterogeneity, which plays a crucial role in temporal processing and cognitive capabilities. To bridge this gap, we introduce HetSyn, a generalized framework that models synaptic heterogeneity with synapse-specific time constants. This design shifts temporal integration from the membrane potential to the synaptic current, enabling versatile timescale integration and allowing the model to capture diverse synaptic dynamics. We implement HetSyn as HetSynLIF, an extended form of the leaky integrate-and-fire (LIF) model equipped with synapse-specific decay dynamics. By adjusting the parameter configuration, HetSynLIF can be specialized into vanilla LIF neurons, neurons with threshold adaptation, and neuron-level heterogeneous models. We demonstrate that HetSynLIF not only improves the performance of SNNs across a variety of tasks-including pattern generation, delayed match-to-sample, speech recognition, and visual recognition-but also exhibits strong robustness to noise, enhanced working memory performance, efficiency under limited neuron resources, and generalization across timescales. In addition, analysis of the learned synaptic time constants reveals trends consistent with empirical observations in biological synapses. These findings underscore the significance of synaptic heterogeneity in enabling efficient neural computation, offering new insights into brain-inspired temporal modeling.

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