Koyama Shinsuke
Department of Statistical Modeling, The Institute of Statistical Mathematics, Tokyo 190-8562, Japan; ERATO Sato Live Bio-Forecasting Project, Japan Science and Technology Agency, Kyoto 619-0237, Japan; and Advanced Telecommunications Research Institute International, Kyoto 619-0237, Japan
Neural Comput. 2015 Jul;27(7):1530-48. doi: 10.1162/NECO_a_00748. Epub 2015 May 14.
We propose a statistical method for modeling the non-Poisson variability of spike trains observed in a wide range of brain regions. Central to our approach is the assumption that the variance and the mean of interspike intervals are related by a power function characterized by two parameters: the scale factor and exponent. It is shown that this single assumption allows the variability of spike trains to have an arbitrary scale and various dependencies on the firing rate in the spike count statistics, as well as in the interval statistics, depending on the two parameters of the power function. We also propose a statistical model for spike trains that exhibits the variance-to-mean power relationship. Based on this, a maximum likelihood method is developed for inferring the parameters from rate-modulated spike trains. The proposed method is illustrated on simulated and experimental spike trains.
我们提出了一种统计方法,用于对在广泛的脑区中观察到的尖峰序列的非泊松变异性进行建模。我们方法的核心假设是,峰峰间隔的方差和均值由一个幂函数相关联,该幂函数由两个参数表征:比例因子和指数。结果表明,这一单一假设允许尖峰序列的变异性具有任意尺度,并在尖峰计数统计以及间隔统计中对 firing 率具有各种依赖性,这取决于幂函数的两个参数。我们还提出了一种用于尖峰序列的统计模型,该模型表现出方差与均值的幂关系。基于此,开发了一种最大似然方法,用于从速率调制的尖峰序列中推断参数。所提出的方法在模拟和实验尖峰序列上进行了说明。