Estimating summary statistics in the spike-train space

被引:0
作者
Wei Wu
Anuj Srivastava
机构
[1] Florida State University,Department of Statistics
来源
Journal of Computational Neuroscience | 2013年 / 34卷
关键词
Estimation; Summary statistics; Spike-train space; Data-driven; Time warping; Euclidean metric;
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学科分类号
摘要
Estimating sample averages and sample variability is important in analyzing neural spike trains data in computational neuroscience. Current approaches have focused on advancing the use of parametric or semiparametric probability models of the underlying stochastic process, where the probabilistic distribution is characterized at each time point with basic statistics such as mean and variance. To directly capture and analyze the average and variability in the observation space of the spike trains, we focus on a data-driven approach where statistics are defined and computed in a function space in which the spike trains are viewed as individual points. Based on the definition of a “Euclidean” metric, a recent paper introduced the notion of the mean of a set of spike trains and developed an efficient algorithm to compute it under some restrictive conditions. Here we extend this study by: (1) developing a novel algorithm for mean computation that is quite general, and (2) introducing a notion of covariance of a set of spike trains. Specifically, we estimate the covariance matrix using the geometry of the warping functions that map the mean spike train to each of the spike trains in the dataset. Results from simulations as well as a neural recording in primate motor cortex indicate that the proposed mean and covariance successfully capture the observed variability in spike trains. In addition, a “Gaussian-type” probability model (defined using the estimated mean and covariance) reasonably characterizes the distribution of the spike trains and achieves a desirable performance in the classification of the spike trains.
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页码:391 / 410
页数:19
相关论文
共 81 条
[1]  
Aronov D(2003)Fast algorithm for the metric-space analysis of simultaneous responses of multiple single neurons Journal of Neuroscience Methods 124 175-179
[2]  
Aronov D(2004)Non-Euclidean properties of spike train metric spaces Physical Review E 69 61905-3327
[3]  
Victor J(2003)Neural coding of spatial phase in v1 of the macaque monkey Journal of Neurophysiology 89 3304-227
[4]  
Aronov D(2008)Regularized estimation of large covariance matrices The Annals of Statistics 36 199-346
[5]  
Reich DS(2002)The time-rescaling theorem and its applicationto neural spike train data analysis Neural Computation 14 325-1123
[6]  
Mechler F(2009)Non-Euclidean statistics for covariance matrices, with applications to diffusion tensor imaging Annals of Applied Statistics 3 1102-2808
[7]  
Victor J(2010)A fast Neural Computation 22 2785-155
[8]  
Bickel PJ(2009) spike alighment metric Journal of Computational Neuroscience 26 149-1511
[9]  
Levina E(2008)Studying spike trains using a van rossum metric with a synapse-like filter Neural Computation 20 1495-394
[10]  
Brown EN(2003)A new multineuron spike train metric Journal of Neurophysiology 90 387-541