基于学习的神经尖峰控制方法

Sensen Liu, Noah M Sock, ShiNung Ching
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引用次数: 0

摘要

我们考虑的问题是利用外在刺激来控制相互连接的神经元群。由于神经元动态的非线性和底层神经元网络结构的高度不可预测性,这个与基础神经科学和脑医学应用相关的问题极具挑战性。而大多数神经刺激技术只提供单一自由度,无法驱动数十到数百个相互连接的神经元,这就加剧了这一难题。为了应对这些挑战,我们在此考虑采用一种基于学习的自适应方法来控制神经尖峰列车。我们并不明确地模拟神经动力学和设计最优控制,而是合成一个所谓的控制网络(CONET),通过最大化它与实现的尖峰输出之间的香农互信息,与尖峰网络互动。因此,CONET 可以学习尖峰网络的表征,随后通过强化型机制学习合适的控制信号。我们通过控制随机尖峰神经元网络证明了这种方法的可行性,其中神经元与执行器的比率超过 10 比 1 时,就能诱导出所需的模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Learning-based Approaches for Controlling Neural Spiking.

Learning-based Approaches for Controlling Neural Spiking.

Learning-based Approaches for Controlling Neural Spiking.

We consider the problem of controlling populations of interconnected neurons using extrinsic stimulation. Such a problem, which is relevant to applications in both basic neuroscience as well as brain medicine, is challenging due to the nonlinearity of neuronal dynamics and the highly unpredictable structure of underlying neuronal networks. Compounding this difficulty is the fact that most neurostimulation technologies offer a single degree of freedom to actuate tens to hundreds of interconnected neurons. To meet these challenges, here we consider an adaptive, learning-based approach to controlling neural spike trains. Rather than explicitly modeling neural dynamics and designing optimal controls, we instead synthesize a so-called control network (CONET) that interacts with the spiking network by maximizing the Shannon mutual information between it and the realized spiking outputs. Thus, the CONET learns a representation of the spiking network that subsequently allows it to learn suitable control signals through a reinforcement-type mechanism. We demonstrate feasibility of the approach by controlling networks of stochastic spiking neurons, wherein desired patterns are induced for neuron-to-actuator ratios in excess of 10 to 1.

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CiteScore
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