| Literature DB >> 35701391 |
Rong Zhao1,2, Zheyu Yang1, Hao Zheng1, Yujie Wu1, Faqiang Liu1, Zhenzhi Wu3, Lukai Li1, Feng Chen4, Seng Song5, Jun Zhu6, Wenli Zhang1, Haoyu Huang1, Mingkun Xu1, Kaifeng Sheng3, Qianbo Yin3, Jing Pei1, Guoqi Li1, Youhui Zhang6, Mingguo Zhao4, Luping Shi7,8.
Abstract
There is a growing trend to design hybrid neural networks (HNNs) by combining spiking neural networks and artificial neural networks to leverage the strengths of both. Here, we propose a framework for general design and computation of HNNs by introducing hybrid units (HUs) as a linkage interface. The framework not only integrates key features of these computing paradigms but also decouples them to improve flexibility and efficiency. HUs are designable and learnable to promote transmission and modulation of hybrid information flows in HNNs. Through three cases, we demonstrate that the framework can facilitate hybrid model design. The hybrid sensing network implements multi-pathway sensing, achieving high tracking accuracy and energy efficiency. The hybrid modulation network implements hierarchical information abstraction, enabling meta-continual learning of multiple tasks. The hybrid reasoning network performs multimodal reasoning in an interpretable, robust and parallel manner. This study advances cross-paradigm modeling for a broad range of intelligent tasks.Entities:
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Year: 2022 PMID: 35701391 PMCID: PMC9198039 DOI: 10.1038/s41467-022-30964-7
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 17.694