cs.AI updates on arXiv.org 08月20日
Multi-Plasticity Synergy with Adaptive Mechanism Assignment for Training Spiking Neural Networks
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本文提出一种基于生物灵感的多机制协同训练框架,用于提升脉冲神经网络(SNN)的性能和鲁棒性,通过评估静态图像和动态神经形态数据集,证明该方法比传统学习机制模型更有效。

arXiv:2508.13673v1 Announce Type: cross Abstract: Spiking Neural Networks (SNNs) are promising brain-inspired models known for low power consumption and superior potential for temporal processing, but identifying suitable learning mechanisms remains a challenge. Despite the presence of multiple coexisting learning strategies in the brain, current SNN training methods typically rely on a single form of synaptic plasticity, which limits their adaptability and representational capability. In this paper, we propose a biologically inspired training framework that incorporates multiple synergistic plasticity mechanisms for more effective SNN training. Our method enables diverse learning algorithms to cooperatively modulate the accumulation of information, while allowing each mechanism to preserve its own relatively independent update dynamics. We evaluated our approach on both static image and dynamic neuromorphic datasets to demonstrate that our framework significantly improves performance and robustness compared to conventional learning mechanism models. This work provides a general and extensible foundation for developing more powerful SNNs guided by multi-strategy brain-inspired learning.

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脉冲神经网络 训练框架 生物灵感 性能提升 鲁棒性
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