Network architectures and learning principles are key in forming complex functions in artificial neural networks (ANNs) and spiking neural networks (SNNs). SNNs are considered the new-generation artificial networks by incorporating more biological features than ANNs, including dynamic spiking neurons, functionally specified architectures, and efficient learning paradigms. In this paper, we propose a Motif-topology and Reward-learning improved SNN (MR-SNN) for efficient multi-sensory integration. MR-SNN contains 13 types of 3-node Motif topologies which are first extracted from independent single-sensory learning paradigms and then integrated for multi-sensory classification. The experimental results showed higher accuracy and stronger robustness of the proposed MR-SNN than other conventional SNNs without using Motifs. Furthermore, the proposed reward learning paradigm was biologically plausible and can better explain the cognitive McGurk effect caused by incongruent visual and auditory sensory signals.
翻译:网络架构和学习原则是形成人工神经网络和神经网络复杂功能的关键。 SNN被视为新一代人造网络,它包含比ANN更多的生物特征,包括动态跳动神经元、功能性特定结构以及高效学习模式。在本文中,我们建议采用Motif-地形学和奖励-学习改进SNN(MR-SNN),以便高效的多感知整合。MR-SNNN包含13种3节Motif表象学,最初从独立的单感官学习模式中提取,然后整合到多感官分类中。实验结果显示,拟议的MS-SNNN比其他常规SNN的准确性和强。此外,拟议的奖励学习模式在生物学上是可行的,可以更好地解释融合视觉和听觉感官信号造成的认知麦古尔克效应。