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Large scale parameter estimation for nonlinear dynamic systems: Application on spike-in, spike-out neural models

机译:非线性动力学系统的大规模参数估计:在尖峰,尖峰神经模型中的应用

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This paper presents a general method of parameter estimation for large-scale non-linear dynamic models a with particular focus on parameter estimation for spike-in, spike-out neural models. The aim is to provide a convex optimization algorithm for tuning parameters of such a model which enables solving large-scale estimation problem in a linear time. Parameter estimation for a single layer neural network containing hundreds of synapses is addressed and efficiency/performance of the proposed methodology is demonstrated by solving a few examples. It will be also demonstrated that parameters of the model for mapping CA3 output of hippocampus cell into CA1 output, under patch clamp experiment, can be successfully estimated by utilizing the methodology of this paper.
机译:本文提出了一种用于大型非线性动力学模型的参数估计的通用方法,尤其着重于尖峰,尖峰神经模型的参数估计。目的是提供用于调整这种模型的参数的凸优化算法,该算法能够在线性时间内解决大规模估计问题。解决了包含数百个突触的单层神经网络的参数估计问题,并通过解决一些示例证明了所提出方法的效率/性能。还将证明,在膜片钳实验下,利用本文的方法可以成功地估计将海马细胞CA3输出映射为CA1输出的模型参数。

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