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在有监督和无监督学习场景中的神经元集合动力学。

Neuronal assembly dynamics in supervised and unsupervised learning scenarios.

机构信息

Centre for Computational Neuroscience and Robotics, Department of Informatics, University of Sussex, Falmer, Brighton, BN1 9QH, U.K.

出版信息

Neural Comput. 2013 Nov;25(11):2934-75. doi: 10.1162/NECO_a_00502. Epub 2013 Jul 29.

Abstract

The dynamic formation of groups of neurons--neuronal assemblies--is believed to mediate cognitive phenomena at many levels, but their detailed operation and mechanisms of interaction are still to be uncovered. One hypothesis suggests that synchronized oscillations underpin their formation and functioning, with a focus on the temporal structure of neuronal signals. In this context, we investigate neuronal assembly dynamics in two complementary scenarios: the first, a supervised spike pattern classification task, in which noisy variations of a collection of spikes have to be correctly labeled; the second, an unsupervised, minimally cognitive evolutionary robotics tasks, in which an evolved agent has to cope with multiple, possibly conflicting, objectives. In both cases, the more traditional dynamical analysis of the system's variables is paired with information-theoretic techniques in order to get a broader picture of the ongoing interactions with and within the network. The neural network model is inspired by the Kuramoto model of coupled phase oscillators and allows one to fine-tune the network synchronization dynamics and assembly configuration. The experiments explore the computational power, redundancy, and generalization capability of neuronal circuits, demonstrating that performance depends nonlinearly on the number of assemblies and neurons in the network and showing that the framework can be exploited to generate minimally cognitive behaviors, with dynamic assembly formation accounting for varying degrees of stimuli modulation of the sensorimotor interactions.

摘要

神经元群的动态形成——神经元集合——被认为介导了许多层次的认知现象,但它们的详细运作和相互作用机制仍有待揭示。一种假设认为,同步振荡是它们形成和功能的基础,重点是神经元信号的时间结构。在这种情况下,我们在两个互补的场景中研究神经元集合的动力学:第一个是监督的尖峰模式分类任务,其中必须正确标记一组尖峰的噪声变化;第二个是无监督的、最小认知进化机器人任务,其中一个进化的代理必须应对多个可能冲突的目标。在这两种情况下,系统变量的更传统的动力学分析与信息论技术相结合,以便更全面地了解网络内和网络内的正在进行的相互作用。神经网络模型的灵感来自于耦合相振荡器的 Kuramoto 模型,允许微调网络同步动力学和集合配置。实验探索了神经元电路的计算能力、冗余度和泛化能力,证明性能与网络中的集合和神经元的数量呈非线性相关,并表明该框架可用于产生最小认知行为,动态集合形成可解释不同程度的刺激对感觉运动相互作用的调制。

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