Adaptive Gradient Learning for Spiking Neural Networks by Exploiting Membrane Potential Dynamics

May 17, 2025 ยท Declared Dead ยท ๐Ÿ› International Joint Conference on Artificial Intelligence

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Authors Jiaqiang Jiang, Lei Wang, Runhao Jiang, Jing Fan, Rui Yan arXiv ID 2505.11863 Category cs.NE: Neural & Evolutionary Citations 2 Venue International Joint Conference on Artificial Intelligence Last Checked 3 months ago
Abstract
Brain-inspired spiking neural networks (SNNs) are recognized as a promising avenue for achieving efficient, low-energy neuromorphic computing. Recent advancements have focused on directly training high-performance SNNs by estimating the approximate gradients of spiking activity through a continuous function with constant sharpness, known as surrogate gradient (SG) learning. However, as spikes propagate among neurons, the distribution of membrane potential dynamics (MPD) will deviate from the gradient-available interval of fixed SG, hindering SNNs from searching the optimal solution space. To maintain the stability of gradient flows, SG needs to align with evolving MPD. Here, we propose adaptive gradient learning for SNNs by exploiting MPD, namely MPD-AGL. It fully accounts for the underlying factors contributing to membrane potential shifts and establishes a dynamic association between SG and MPD at different timesteps to relax gradient estimation, which provides a new degree of freedom for SG learning. Experimental results demonstrate that our method achieves excellent performance at low latency. Moreover, it increases the proportion of neurons that fall into the gradient-available interval compared to fixed SG, effectively mitigating the gradient vanishing problem.
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