神经元原型耦合的建模与形式化验证

Elisabetta De Maria, Thibaud L'Yvonnet, D. Gaffé, Annie Ressouche, F. Grammont
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引用次数: 6

摘要

在文献中,神经网络通常用图形表示,其中每个节点代表一个神经元,每个弧线代表一个突触连接。一些特定的神经元图具有生物学上相关的结构和行为,我们称之为原型。其中六个已经用形式化方法进行了表征和验证。在这项工作中,我们处理下一个逻辑步骤,并继续研究它们耦合的性质。为此,我们依靠Leaky integration和Fire神经元建模,并使用同步编程语言Lustre来实现神经元原型并形式化它们的预期属性。然后,我们利用一个名为kind2的关联模型检查器来自动验证这些行为。我们表明,当原型耦合时,这些行为要么被轻微调整,要么被一种全新的行为所取代。我们还可以观察到,不同的原型耦合可以产生严格相同的行为。我们的研究结果表明,时间编码模型比速率编码模型更适合于这类研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling and Formal Verification of Neuronal Archetypes Coupling
In the literature, neuronal networks are often represented as graphs where each node symbolizes a neuron and each arc stands for a synaptic connection. Some specific neuronal graphs have biologically relevant structures and behaviors and we call them archetypes. Six of them have already been characterized and validated using formal methods. In this work, we tackle the next logical step and proceed to the study of the properties of their couplings. For this purpose, we rely on Leaky Integrate and Fire neuron modeling and we use the synchronous programming language Lustre to implement the neuronal archetypes and to formalize their expected properties. Then, we exploit an associated model checker called kind2 to automatically validate these behaviors. We show that, when the archetypes are coupled, either these behaviors are slightly modulated or they give way to a brand new behavior. We can also observe that different archetype couplings can give rise to strictly identical behaviors. Our results show that time coding modeling is more suited than rate coding modeling for this kind of studies.
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