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Goodness-of-Fit Tests and Nonparametric Adaptive Estimation for Spike Train Analysis

机译:尖峰列车分析的拟合优度检验和非参数自适应估计

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When dealing with classical spike train analysis, the practitioner often performs goodness-of-fit tests to test whether the observed process is a Poisson process, for instance, or if it obeys another type of probabilistic model (Yana et?al. in Biophys. J. 46(3):323–330, 1984; Brown et?al. in Neural Comput. 14(2):325–346, 2002; Pouzat and Chaffiol in Technical report, http://arxiv.org/abs/arXiv:0909.2785, 2009). In doing so, there is a fundamental plug-in step, where the parameters of the supposed underlying model are estimated. The aim of this article is to show that plug-in has sometimes very undesirable effects. We propose a new method based on subsampling to deal with those plug-in issues in the case of the Kolmogorov–Smirnov test of uniformity. The method relies on the plug-in of good estimates of the underlying model that have to be consistent with a controlled rate of convergence. Some nonparametric estimates satisfying those constraints in the Poisson or in the Hawkes framework are highlighted. Moreover, they share adaptive properties that are useful from a practical point of view. We show the performance of those methods on simulated data. We also provide a complete analysis with these tools on single unit activity recorded on a monkey during a sensory-motor task.Electronic Supplementary MaterialThe online version of this article (doi:10.1186/2190-8567-4-3) contains supplementary material.
机译:在处理经典峰值序列分析时,从业人员通常会进行拟合优度测试,以测试观察到的过程是否是例如Poisson过程,或者它是否服从另一种概率模型(Biophys中的Yana等人。 J. 46(3):323-330,1984; Brown等人在《神经计算》 14(2):325-346,2002; Pouzat和Chaffiol在技术报告中,http://arxiv.org/abs/ arXiv:0909.2785,2009)。在此过程中,有一个基本的插入步骤,在该步骤中估计了假定的基础模型的参数。本文的目的是表明插件有时会产生非常不利的影响。对于Kolmogorov-Smirnov一致性测试,我们提出了一种基于子采样的新方法来处理这些插件问题。该方法依赖于必须与受控收敛速率一致的基础模型的良好估计的插件。强调了满足泊松或霍克斯框架中那些约束的一些非参数估计。此外,它们共享从实际角度来看有用的自适应属性。我们展示了这些方法在模拟数据上的性能。我们还使用这些工具对在感觉运动任务期间猴子身上记录的单个单位活动进行了全面分析。电子补充材料本文的在线版本(doi:10.1186 / 2190-8567-4-3)包含补充材料。

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