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Density-based clustering: A ‘landscape view’ of multi-channel neural data for inference and dynamic complexity analysis

机译:基于密度的聚类:用于推理和动态复杂性分析的多通道神经数据的横向视图

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摘要

Two, partially interwoven, hot topics in the analysis and statistical modeling of neural data, are the development of efficient and informative representations of the time series derived from multiple neural recordings, and the extraction of information about the connectivity structure of the underlying neural network from the recorded neural activities. In the present paper we show that state-space clustering can provide an easy and effective option for reducing the dimensionality of multiple neural time series, that it can improve inference of synaptic couplings from neural activities, and that it can also allow the construction of a compact representation of the multi-dimensional dynamics, that easily lends itself to complexity measures. We apply a variant of the ‘mean-shift’ algorithm to perform state-space clustering, and validate it on an Hopfield network in the glassy phase, in which metastable states are largely uncorrelated from memories embedded in the synaptic matrix. In this context, we show that the neural states identified as clusters’ centroids offer a parsimonious parametrization of the synaptic matrix, which allows a significant improvement in inferring the synaptic couplings from the neural activities. Moving to the more realistic case of a multi-modular spiking network, with spike-frequency adaptation inducing history-dependent effects, we propose a procedure inspired by Boltzmann learning, but extending its domain of application, to learn inter-module synaptic couplings so that the spiking network reproduces a prescribed pattern of spatial correlations; we then illustrate, in the spiking network, how clustering is effective in extracting relevant features of the network’s state-space landscape. Finally, we show that the knowledge of the cluster structure allows casting the multi-dimensional neural dynamics in the form of a symbolic dynamics of transitions between clusters; as an illustration of the potential of such reduction, we define and analyze a measure of complexity of the neural time series.
机译:在神经数据的分析和统计建模中,有两个部分交织的热门话题,包括开发从多个神经记录得出的时间序列的有效且信息丰富的表示形式,以及从中提取有关基础神经网络的连通性结构的信息。记录的神经活动。在本文中,我们表明状态空间聚类可以为减少多个神经时间序列的维数提供一种简单有效的选择,可以改善神经活动对突触耦合的推断,并且还可以构建神经网络。多维动力学的紧凑表示形式,很容易使其适用于复杂性度量。我们应用“均值移位”算法的一种变体来执行状态空间聚类,并在玻化阶段的Hopfield网络上对其进行验证,其中亚稳态与嵌入在突触矩阵中的内存基本无关。在这种情况下,我们表明,被识别为簇质心的神经状态提供了突触矩阵的简化参数化,从而可以从神经活动推断突触耦合方面取得显着改善。转向更现实的多模尖峰网络案例,利用尖峰频率自适应引起历史依赖效应,我们提出了一种受玻耳兹曼学习启发的方法,但扩展了其应用范围,以学习模块间突触耦合,从而尖峰网络再现规定的空间相关性模式;然后,我们将在尖峰网络中说明聚类如何有效地提取网络状态空间格局的相关特征。最后,我们表明,对簇结构的了解允许以簇之间过渡的符号动力学形式来转换多维神经动力学。为了说明这种减少方法的潜力,我们定义并分析了神经时间序列复杂性的度量。

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