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Spontaneous activity emerging from an inferred network model captures complex spatio-temporal dynamics of spike data

机译:从推断网络模型中出现的自发活动捕获了尖峰数据的复杂时空动态

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Inference methods are widely used to recover effective models from observed data. However, few studies attempted to investigate the dynamics of inferred models in neuroscience, and none, to our knowledge, at the network level. We introduce a principled modification of a widely used generalized linear model (GLM), and learn its structural and dynamic parameters from in-vitro spike data. The spontaneous activity of the new model captures prominent features of the non-stationary and non-linear dynamics displayed by the biological network, where the reference GLM largely fails, and also reflects fine-grained spatio-temporal dynamical features. Two ingredients were key for success. The first is a saturating transfer function: beyond its biological plausibility, it limits the neuron’s information transfer, improving robustness against endogenous and external noise. The second is a super-Poisson spikes generative mechanism; it accounts for the undersampling of the network, and allows the model neuron to flexibly incorporate the observed activity fluctuations.
机译:推断方法广泛用于从观察到的数据中恢复有效模型。然而,很少有研究试图调查神经科学中推断模型的动态,以及我们知识在网络级别。我们引入了广泛使用的广义线性模型(GLM)的原则性修改,并从体外尖峰数据学习其结构和动态参数。新模型的自发活动捕获了生物网络显示的非静止和非线性动力学的突出特征,其中参考GLM在很大程度上失效,并且还反映了细粒度的时空动态特征。两种成分是成功的关键。首先是饱和转移功能:超出其生物合理性,它限制了神经元的信息转移,提高了对内源性和外部噪声的鲁棒性。第二种是超级泊松尖峰生成机制;它考虑了网络的欠采样,并允许模型神经元灵活地纳入观察到的活动波动。

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