Generalized Linear Models (GLMs) have been used extensively in statistical models of spike train data. However, the IRLS algorithm, which is often used to fit such models, can fail to converge in situations where response and non-response can be separated by a single predictor or a linear combination of multiple predictors. Such situations are likely to arise in many neural systems due to properties such as refractoriness and incomplete sampling of the signals that influence spiking. In this paper, we describe multiple classes of approaches to address this problem: Standard IRLS with a fixed iteration limit, computing the maximum likelihood solution in the limit, Bayesian estimation, regularization, change of basis, and modifying the search parameters. We demonstrate a specific application of each of these methods to spiking data from rat somatosensory cortex and discuss the advantages and disadvantages of each. We also provide an example of a roadmap for selecting a method based on the problem's particular analysis issues and scientific goals.
翻译:通用线性模型(GLMs)被广泛用于峰值列车数据的统计模型中,然而,经常用于适应此类模型的IRLS算法可能无法在单个预测器或多个预测器的线性组合可以分离反应和不反应的情况下趋同,这种情况可能在许多神经系统中出现,因为其特性,如耐受性和影响喷发的信号抽样不完全。我们本文描述了解决这一问题的多种办法:标准IRLS, 具有固定的迭代限制, 计算限额中的最大可能性解决办法、 贝叶斯估计、 正规化、 基础改变 和修改 搜索参数。我们展示了这些方法中每一种方法的具体应用, 以从大鼠皮质皮层中提取数据, 并讨论每一种的利弊。我们还提供了根据问题的特定分析问题和科学目标选择一种方法的路线图的例子。