Inverse stochastic resonance in adaptive small-world neural networks.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Marius E Yamakou, Jinjie Zhu, Erik A Martens
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引用次数: 0

Abstract

Inverse stochastic resonance (ISR) is a counterintuitive phenomenon where noise reduces the oscillation frequency of an oscillator to a minimum occurring at an intermediate noise intensity, and sometimes even to the complete absence of oscillations. In neuroscience, ISR was first experimentally verified with cerebellar Purkinje neurons [Buchin et al., PLOS Comput. Biol. 12, e1005000 (2016)]. These experiments showed that ISR enables a locally optimal information transfer between the input and output spike train of neurons. Subsequent studies have further demonstrated the efficiency of information processing and transfer in neural networks with small-world network topology. We have conducted a numerical investigation into the impact of adaptivity on ISR in a small-world network of noisy FitzHugh-Nagumo (FHN) neurons, operating in a bi-metastable regime consisting of a metastable fixed point and a metastable limit cycle. Our results show that the degree of ISR is highly dependent on the value of the FHN model's timescale separation parameter ε. The network structure undergoes dynamic adaptation via mechanisms of either spike-time-dependent plasticity (STDP) with potentiation-/depression-domination parameter P or homeostatic structural plasticity (HSP) with rewiring frequency F. We demonstrate that both STDP and HSP amplify the effect of ISR when ε lies within the bi-stability region of FHN neurons. Specifically, at larger values of ε within the bi-stability regime, higher rewiring frequencies F are observed to enhance ISR at intermediate (weak) synaptic noise intensities, while values of P consistent with depression-domination (potentiation-domination) consistently enhance (deteriorate) ISR. Moreover, although STDP and HSP control parameters may jointly enhance ISR, P has a greater impact on improving ISR compared to F. Our findings inform future ISR enhancement strategies in noisy artificial neural circuits, aiming to optimize local information transfer between input and output spike trains in neuromorphic systems and prompt venues for experiments in neural networks.

自适应小世界神经网络中的逆随机共振
反向随机共振(ISR)是一种反直觉现象,在这种现象中,噪声会将振荡器的振荡频率降低到在中间噪声强度下出现的最小值,有时甚至完全没有振荡。在神经科学领域,ISR 首次在小脑浦肯野神经元上得到实验验证[Buchin 等人,PLOS Comput. Biol. 12, e1005000 (2016)]。这些实验表明,ISR 能够实现神经元输入和输出尖峰序列之间的局部最优信息传递。随后的研究进一步证明了具有小世界网络拓扑结构的神经网络中信息处理和传递的效率。我们对一个由 FitzHugh-Nagumo(FHN)噪声神经元组成的小世界网络中自适应性对 ISR 的影响进行了数值研究。我们的研究结果表明,ISR 的程度高度依赖于 FHN 模型的时间尺度分离参数 ε 的值。网络结构通过具有电位增强/压抑配位参数 P 的尖峰时间相关可塑性(STDP)或具有重布线频率 F 的同态结构可塑性(HSP)机制进行动态适应。具体来说,在双稳态机制中,当ε的值较大时,可以观察到较高的重布线频率F在中等(弱)突触噪声强度下增强了ISR,而与抑制-表位(电位-表位)一致的P值则持续增强(恶化)了ISR。此外,尽管 STDP 和 HSP 控制参数可共同增强 ISR,但与 F 相比,P 对改善 ISR 的影响更大。我们的发现为未来噪声人工神经回路中的 ISR 增强策略提供了参考,旨在优化神经形态系统中输入和输出尖峰列车之间的局部信息传递,并为神经网络实验提供场所。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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