论文标题
非参数通用线性模型
Non-parametric generalized linear model
论文作者
论文摘要
统计神经科学中的一个基本问题是模拟神经元如何通过分析电生理记录来编码信息。一种流行且广泛使用的方法是使用自动回调的点过程模型适合尖峰火车。这些模型的特征是一组卷积的时间过滤器,其后续分析可以帮助揭示神经元如何编码刺激,彼此相互作用和过程信息。在实践中,需要选择足够丰富但很小的时间基础功能来参数化过滤器。但是,获得令人满意的拟合通常需要繁重的模型选择并微调基本功能及其时间跨度的形式。在本文中,我们提出了一种非参数方法,用于使用高斯工艺框架共同推断过滤器和超参数。我们的方法是利用稀疏的变分近似,同时具有柔性和丰富的功能,足以表征连续时间滞后的任意过滤器。此外,我们的方法会自动学习过滤器的时间跨度。对于神经科学中的特定应用,我们为刺激和历史过滤器设计了对尖峰列车有用的先验。我们在模拟和真实的神经尖峰火车数据上比较和验证我们的方法。
A fundamental problem in statistical neuroscience is to model how neurons encode information by analyzing electrophysiological recordings. A popular and widely-used approach is to fit the spike trains with an autoregressive point process model. These models are characterized by a set of convolutional temporal filters, whose subsequent analysis can help reveal how neurons encode stimuli, interact with each other, and process information. In practice a sufficiently rich but small ensemble of temporal basis functions needs to be chosen to parameterize the filters. However, obtaining a satisfactory fit often requires burdensome model selection and fine tuning the form of the basis functions and their temporal span. In this paper we propose a nonparametric approach for jointly inferring the filters and hyperparameters using the Gaussian process framework. Our method is computationally efficient taking advantage of the sparse variational approximation while being flexible and rich enough to characterize arbitrary filters in continuous time lag. Moreover, our method automatically learns the temporal span of the filter. For the particular application in neuroscience, we designed priors for stimulus and history filters useful for the spike trains. We compare and validate our method on simulated and real neural spike train data.