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Estimating Nonlinear Neural Response Functions using GP Priors and Kronecker Methods

机译:使用GP先验和Kronecker方法估计非线性神经响应函数

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Jointly characterizing neural responses in terms of several external variables promises novel insights into circuit function, but remains computationally prohibitive in practice. Here we use gaussian process (GP) priors and exploit recent advances in fast GP inference and learning based on Kronecker methods, to efficiently estimate multidimensional nonlinear tuning functions. Our estimator requires considerably less data than traditional methods and further provides principled uncertainty estimates. We apply these tools to hippocampal recordings during open field exploration and use them to characterize the joint dependence of CA1 responses on the position of the animal and several other variables, including the animal's speed, direction of motion, and network oscillations. Our results provide an unprecedentedly detailed quantification of the tuning of hippocampal neurons. The model's generality suggests that our approach can be used to estimate neural response properties in other brain regions.
机译:根据几个外部变量对神经反应进行联合表征,有望对电路功能产生新见解,但在实践中仍然在计算上难以实现。在这里,我们使用高斯过程(GP)先验,并利用基于Kronecker方法的快速GP推理和学习的最新进展来有效地估计多维非线性调谐函数。与传统方法相比,我们的估算器需要的数据要少得多,并且可以进一步提供有原则的不确定性估算。我们在野外探索期间将这些工具应用于海马记录,并使用它们来表征CA1响应对动物位置和其他几个变量(包括动物的速度,运动方向和网络振荡)的联合依赖性。我们的结果为海马神经元的调节提供了前所未有的详细量化。该模型的一般性表明,我们的方法可用于估计其他大脑区域的神经反应特性。

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