CVSep 29, 2025

S$^2$NN: Sub-bit Spiking Neural Networks

arXiv:2509.24266v21 citationsh-index: 28
Originality Incremental advance
AI Analysis

This work addresses energy-efficient machine intelligence for edge computing applications, representing an incremental advance in compression and acceleration of SNNs.

The paper tackles the challenge of scaling Spiking Neural Networks (SNNs) for resource-limited deployment by proposing Sub-bit Spiking Neural Networks (S²NNs) that represent weights with less than one bit, achieving improved performance and efficiency over existing quantized SNNs on vision tasks.

Spiking Neural Networks (SNNs) offer an energy-efficient paradigm for machine intelligence, but their continued scaling poses challenges for resource-limited deployment. Despite recent advances in binary SNNs, the storage and computational demands remain substantial for large-scale networks. To further explore the compression and acceleration potential of SNNs, we propose Sub-bit Spiking Neural Networks (S$^2$NNs) that represent weights with less than one bit. Specifically, we first establish an S$^2$NN baseline by leveraging the clustering patterns of kernels in well-trained binary SNNs. This baseline is highly efficient but suffers from \textit{outlier-induced codeword selection bias} during training. To mitigate this issue, we propose an \textit{outlier-aware sub-bit weight quantization} (OS-Quant) method, which optimizes codeword selection by identifying and adaptively scaling outliers. Furthermore, we propose a \textit{membrane potential-based feature distillation} (MPFD) method, improving the performance of highly compressed S$^2$NN via more precise guidance from a teacher model. Extensive results on vision tasks reveal that S$^2$NN outperforms existing quantized SNNs in both performance and efficiency, making it promising for edge computing applications.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes