Institute of Automation, Chinese Academy of Sciences, Beijing 100190, China.
School of Artificial Intelligence, University of Chinese Academy of Sciences, Beijing 100049, China.
Sci Adv. 2023 Aug 25;9(34):eadi2947. doi: 10.1126/sciadv.adi2947.
Neuromodulators in the brain act globally at many forms of synaptic plasticity, represented as metaplasticity, which is rarely considered by existing spiking (SNNs) and nonspiking artificial neural networks (ANNs). Here, we report an efficient brain-inspired computing algorithm for SNNs and ANNs, referred to here as neuromodulation-assisted credit assignment (NACA), which uses expectation signals to induce defined levels of neuromodulators to selective synapses, whereby the long-term synaptic potentiation and depression are modified in a nonlinear manner depending on the neuromodulator level. The NACA algorithm achieved high recognition accuracy with substantially reduced computational cost in learning spatial and temporal classification tasks. Notably, NACA was also verified as efficient for learning five different class continuous learning tasks with varying degrees of complexity, exhibiting a markedly mitigated catastrophic forgetting at low computational cost. Mapping synaptic weight changes showed that these benefits could be explained by the sparse and targeted synaptic modifications attributed to expectation-based global neuromodulation.
大脑中的神经调质在多种形式的突触可塑性中发挥全局作用,表现为超可塑性,这在现有的尖峰(SNN)和非尖峰人工神经网络(ANN)中很少被考虑。在这里,我们报告了一种用于 SNN 和 ANN 的高效脑启发计算算法,称为神经调质辅助信用分配(NACA),它使用期望信号在选择性突触中诱导定义水平的神经调质,从而根据神经调质水平以非线性方式修改长期突触增强和抑制。NACA 算法在学习空间和时间分类任务时,以大大降低的计算成本实现了高识别精度。值得注意的是,NACA 还被证明对于学习具有不同复杂程度的五个不同类连续学习任务也是有效的,在低计算成本下表现出明显减轻的灾难性遗忘。映射突触权重变化表明,这些好处可以通过基于期望的全局神经调质的稀疏和有针对性的突触修饰来解释。