Pawlas Zbynek, Klebanov Lev B, Prokop Martin, Lansky Petr
Department of Probability and Mathematical Statistics, Faculty of Mathematics and Physics, Charles University, 186 75 Prague 8, Czech Republic.
Neural Comput. 2008 May;20(5):1325-43. doi: 10.1162/neco.2007.01-07-442.
We study the estimation of statistical moments of interspike intervals based on observation of spike counts in many independent short time windows. This scenario corresponds to the situation in which a target neuron occurs. It receives information from many neurons and has to respond within a short time interval. The precision of the estimation procedures is examined. As the model for neuronal activity, two examples of stationary point processes are considered: renewal process and doubly stochastic Poisson process. Both moment and maximum likelihood estimators are investigated. Not only the mean but also the coefficient of variation is estimated. In accordance with our expectations, numerical studies confirm that the estimation of mean interspike interval is more reliable than the estimation of coefficient of variation. The error of estimation increases with increasing mean interspike interval, which is equivalent to decreasing the size of window (less events are observed in a window) and with decreasing the number of neurons (lower number of windows).
我们基于在许多独立短时间窗口内对脉冲计数的观测,研究脉冲间隔统计矩的估计。这种情况对应于目标神经元出现的情形。它从许多神经元接收信息,并且必须在短时间间隔内做出响应。我们考察了估计程序的精度。作为神经元活动的模型,考虑了平稳点过程的两个例子:更新过程和双随机泊松过程。研究了矩估计器和最大似然估计器。不仅估计了均值,还估计了变异系数。与我们的预期一致,数值研究证实,平均脉冲间隔的估计比变异系数的估计更可靠。估计误差随着平均脉冲间隔的增加而增加,这等同于窗口大小减小(在一个窗口中观测到的事件更少)以及神经元数量减少(窗口数量更低)。