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Maximum likelihood parameter estimation in a stochastic resonate-and-fire neuronal model

机译:随机共振和消防神经元模型中的最大似然参数估计

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Recent work has shown that resonate-and-fire model is both computationally efficient and suitable for large network simulations. In this paper, we examine the estimation problem of a resonate-and-fire model with random threshold. The model parameters are divided into two sets. The first set is associated with subthreshold behavior and can be optimized by a nonlinear least squares algorithm. The other set contains threshold and reset parameters and its estimation is formulated in terms of maximum likelihood formulation. We evaluate such a formulation with detailed Hodgkin-Huxley model data.
机译:最近的工作表明,谐振和消防模型既有计算高效,适用于大型网络仿真。在本文中,我们用随机阈值检查共振和消防模型的估计问题。模型参数分为两组。第一组与亚阈值行为相关联,并且可以通过非线性最小二乘算法进行优化。另一组包含阈值和复位参数,并且其估计在最大似然制剂方面配制。我们评估了详细的Hodgkin-Huxley模型数据的制定。

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