Spatial Spiking Neural Networks Enable Efficient and Robust Temporal Computation
Lennart P. L. Landsmeer, Amirreza Movahedin, Mario Negrello, Said Hamdioui, Christos Strydis

TL;DR
Spatial Spiking Neural Networks (SpSNNs) learn neuron positions in space to encode delays, reducing parameters and enhancing efficiency and robustness in temporal computation, with strong results on benchmark tasks.
Contribution
Introducing SpSNNs, a novel framework where delays emerge from neuron spatial positions, significantly reducing parameters while maintaining or improving performance.
Findings
SpSNNs outperform unconstrained delay SNNs on benchmarks.
Performance peaks in 2D and 3D spatial layouts.
SpSNNs maintain accuracy at 90% sparsity with 18x fewer parameters.
Abstract
The efficiency of modern machine intelligence depends on high accuracy with minimal computational cost. In spiking neural networks (SNNs), synaptic delays are crucial for encoding temporal structure, yet existing models treat them as fully trainable, unconstrained parameters, leading to large memory footprints, higher computational demand, and a departure from biological plausibility. In the brain, however, delays arise from physical distances between neurons embedded in space. Building on this principle, we introduce Spatial Spiking Neural Networks (SpSNNs), a framework in which neurons learn coordinates in a finite-dimensional Euclidean space and delays emerge from inter-neuron distances. This replaces per-synapse delay learning with position learning, substantially reducing parameter count while retaining temporal expressiveness. Across the Yin-Yang and Spiking Heidelberg Digits…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · Neural Networks and Reservoir Computing
