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Flexible models for spike count data with both over- and under- dispersion

机译:灵活的峰值计数数据模型,具有上色散和下色散

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A key observation in systems neuroscience is that neural responses vary, even in controlled settings where stimuli are held constant. Many statistical models assume that trial-to-trial spike count variability is Poisson, but there is considerable evidence that neurons can be substantially more or less variable than Poisson depending on the stimuli, attentional state, and brain area. Here we examine a set of spike count models based on the Conway-Maxwell-Poisson (COM-Poisson) distribution that can flexibly account for both over- and under-dispersion in spike count data. We illustrate applications of this noise model for Bayesian estimation of tuning curves and peri-stimulus time histograms. We find that COM-Poisson models with group/observation-level dispersion, where spike count variability is a function of time or stimulus, produce more accurate descriptions of spike counts compared to Poisson models as well as negative-binomial models often used as alternatives. Since dispersion is one determinant of parameter standard errors, COM-Poisson models are also likely to yield more accurate model comparison. More generally, these methods provide a useful, model-based framework for inferring both the mean and variability of neural responses.
机译:在系统神经科学中的一个关键观察结果是,即使在刺激保持恒定的受控环境中,神经反应也会变化。许多统计模型都假设试验间的峰值计数变异性是Poisson,但是有相当多的证据表明,神经元可以比Poisson或多或少地具有不同的刺激性,具体取决于刺激,注意力状态和大脑区域。在这里,我们研究了基于Conway-Maxwell-Poisson(COM-Poisson)分布的一组峰值计数模型,该模型可以灵活地解决峰值计数数据中的过度分散和欠分散问题。我们举例说明了该噪声模型在贝叶斯估计曲线和周向刺激时间直方图中的应用。我们发现,与Poisson模型以及通常用作替代方案的负二项式模型相比,具有组/观测级分散度的COM-Poisson模型(其中峰值计数变异性是时间或刺激的函数)对峰值计数产生了更准确的描述。由于离散度是参数标准误差的决定因素,因此COM-Poisson模型也可能会产生更准确的模型比较。更一般而言,这些方法提供了一个有用的,基于模型的框架,可以推断神经反应的均值和变异性。

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