尖峰神经网络中的双稳态存储器和二进制计数器

J. Ranhel, Cacilda V. Lima, J. Monteiro, J. E. Kögler, M. Netto
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引用次数: 12

摘要

在尖峰神经网络(SNN)中,信息可以通过精确的尖峰时间关系进行编码。这个假设可以解释细胞组装的形成,比如多时群(PNG),这个概念是用来解释神经元群是如何相互锁定时间的,而不一定是同步的。在本文中,我们提出了一组能够在双稳态状态下保留触发事件的png。触发事件可以是数据或计算控制。数据和控制信号都是基于PNG的固有操作属性而被记忆的,不涉及神经可塑性机制。这种行为可能是snn中几种计算操作的基础。展示了双稳态神经池如何执行二进制和类堆栈计数等任务,以及它们如何在并行计算中实现分层组织。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bistable memory and binary counters in spiking neural network
Information can be encoded in spiking neural network (SNN) by precise spike-time relations. This hypothesis can explain cell assembly formation, such as polychronous group (PNG), a notion created to explain how groups of neurons fire time-locked to each other, not necessarily synchronously. In this paper we present a set of PNGs capable of retaining triggering events in bistable states. Triggering events may be data or computational controls. Both, data and control signals are memorized as a result of intrinsic operational PNG attributes, and no neural plasticity mechanisms are involved. This behavior can be fundamental for several computational operations in SNNs. It is shown how bistable neural pools can perform tasks such as binary and stack-like counting, and how they can realize hierarchical organization in parallel computing.
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