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On the Computational Power of Spiking Neural P Systems with Self-Organization

机译:自组织的尖峰神经P系统的计算能力

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摘要

Neural-like computing models are versatile computing mechanisms in the field of artificial intelligence. Spiking neural P systems (SN P systems for short) are one of the recently developed spiking neural network models inspired by the way neurons communicate. The communications among neurons are essentially achieved by spikes, i. e. short electrical pulses. In terms of motivation, SN P systems fall into the third generation of neural network models. In this study, a novel variant of SN P systems, namely SN P systems with self-organization, is introduced, and the computational power of the system is investigated and evaluated. It is proved that SN P systems with self-organization are capable of computing and accept the family of sets of Turing computable natural numbers. Moreover, with 87 neurons the system can compute any Turing computable recursive function, thus achieves Turing universality. These results demonstrate promising initiatives to solve an open problem arisen by Gh Păun.
机译:类神经计算模型是人工智能领域的通用计算机制。尖峰神经P系统(简称SN P系统)是受神经元通信方式启发而开发的尖峰神经网络模型之一。神经元之间的通讯基本上是通过尖峰实现的,即e。短电脉冲。在动机方面,SN P系统属于第三代神经网络模型。在这项研究中,介绍了一种新型的SN P系统变体,即具有自组织的SN P系统,并研究和评估了该系统的计算能力。证明具有自组织性的SN P系统具有计算能力,并且可以接受图灵可计算自然数集的族。而且,利用87个神经元,系统可以计算任何图灵可计算的递归函数,从而实现了图灵通用性。这些结果证明了有希望的倡议可以解决GhPăun提出的一个开放性问题。

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