Sun Yinqian, Zhao Feifei, Zhao Zhuoya, Zeng Yi
Brain-inspired Cognitive Intelligence Lab, Institute of Automation, Chinese Academy of Sciences, Beijing, 100190, China.
Brain-inspired Cognitive Intelligence Lab, Institute of Automation, Chinese Academy of Sciences, Beijing, 100190, China; Center for Long-term Artificial Intelligence, Beijing, 100190, China; University of Chinese Academy of Sciences, Beijing, 100049, China; Key Laboratory of Brain Cognition and Brain-inspired Intelligence Technology, Chinese Academy of Sciences, Shanghai, 200031, China.
Neural Netw. 2025 Feb;182:106898. doi: 10.1016/j.neunet.2024.106898. Epub 2024 Nov 17.
Inspired by the brain's information processing using binary spikes, spiking neural networks (SNNs) offer significant reductions in energy consumption and are more adept at incorporating multi-scale biological characteristics. In SNNs, spiking neurons serve as the fundamental information processing units. However, in most models, these neurons are typically simplified, focusing primarily on the leaky integrate-and-fire (LIF) point neuron model while neglecting the structural properties of biological neurons. This simplification hampers the computational and learning capabilities of SNNs. In this paper, we propose a brain-inspired deep distributional reinforcement learning algorithm based on SNNs, which integrates a bio-inspired multi-compartment neuron (MCN) model with a population coding approach. The proposed MCN model simulates the structure and function of apical dendritic, basal dendritic, and somatic compartments, achieving computational power comparable to that of biological neurons. Additionally, we introduce an implicit fractional embedding method based on population coding of spiking neurons. We evaluated our model on Atari games, and the experimental results demonstrate that it surpasses the vanilla FQF model, which utilizes traditional artificial neural networks (ANNs), as well as the Spiking-FQF models that are based on ANN-to-SNN conversion methods. Ablation studies further reveal that the proposed multi-compartment neuron model and the quantile fraction implicit population spike representation significantly enhance the performance of MCS-FQF while also reducing power consumption.
受大脑使用二进制脉冲进行信息处理的启发,脉冲神经网络(SNN)在能耗方面有显著降低,并且更善于整合多尺度生物特征。在SNN中,脉冲神经元作为基本的信息处理单元。然而,在大多数模型中,这些神经元通常被简化,主要关注泄漏积分发放(LIF)点神经元模型,而忽略了生物神经元的结构特性。这种简化阻碍了SNN的计算和学习能力。在本文中,我们提出了一种基于SNN的受大脑启发的深度分布强化学习算法,该算法将受生物启发的多室神经元(MCN)模型与群体编码方法相结合。所提出的MCN模型模拟了顶树突、基底树突和体细胞室的结构和功能,实现了与生物神经元相当的计算能力。此外,我们引入了一种基于脉冲神经元群体编码的隐式分数嵌入方法。我们在雅达利游戏上评估了我们的模型,实验结果表明它优于使用传统人工神经网络(ANN)的香草FQF模型,以及基于ANN到SNN转换方法的脉冲FQF模型。消融研究进一步表明,所提出的多室神经元模型和分位数分数隐式群体脉冲表示显著提高了MCS - FQF的性能,同时还降低了功耗。