具有结构可塑性和权重的脉冲神经系统。

IF 1.9 4区 生物学 Q2 BIOLOGY
Guimin Ning , Shihan Huang , Yang Deng , Zhang Sun , Xiaoxiao Song
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引用次数: 0

摘要

脉冲神经(snp)系统是受生物神经元和神经系统的功能和结构属性启发的计算模型。利用生物学研究的见解,这些系统结合了有趣的机制,这些机制因其计算能力和通用性而被研究。在我们目前的研究中,我们将结构可塑性和突触权同步整合,称为结构可塑性和权的SN - P系统(SNP-SPW系统)。这些系统利用可塑性尖峰规则来修改其结构并动态地产生新的尖峰。突触后神经元接收到的脉冲数量可以通过突触权来调节。我们证明了SNP-SPW系统可以生成所有递归可枚举的数集,从而建立了它们的计算通用性。此外,我们提出了一个小的通用SNP-SPW系统,它只需要9个神经元来计算所有的图灵可计算函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spiking neural P systems with structural plasticity and weights
Spiking neural (SN) P systems are computational models inspired by the functional and structural attributes of biological neurons and nervous systems. Drawing on insights from biological research, these systems incorporate intriguing mechanisms that have been studied for their computational capabilities and universality. In our current research, we integrate structural plasticity and synaptic weights in synchronous mode, termed as SN P systems with structural plasticity and weights (SNP-SPW systems). These systems utilize plasticity spiking rules to modify their architecture and generate new spikes dynamically. The number of spikes received by post-synaptic neurons could be modulated by the synaptic weights. We have demonstrated that SNP-SPW systems can generate all recursively enumerable sets of numbers, thus establishing their computational universality. Furthermore, we present a small universal SNP-SPW system that requires only nine neurons to perform computing all Turing-computable functions.
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来源期刊
Biosystems
Biosystems 生物-生物学
CiteScore
3.70
自引率
18.80%
发文量
129
审稿时长
34 days
期刊介绍: BioSystems encourages experimental, computational, and theoretical articles that link biology, evolutionary thinking, and the information processing sciences. The link areas form a circle that encompasses the fundamental nature of biological information processing, computational modeling of complex biological systems, evolutionary models of computation, the application of biological principles to the design of novel computing systems, and the use of biomolecular materials to synthesize artificial systems that capture essential principles of natural biological information processing.
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