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Impact of Higher-Order Correlations on Coincidence Distributions of Massively Parallel Data

机译:高阶相关对大规模并行数据重合分布的影响

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The signature of neuronal assemblies is the higher-order correlation structure of the spiking activity of the participating neurons. Due to the rapid progress in recording technology the massively parallel data required to search for such signatures are now becoming available. However, existing statistical analysis tools are severely limited by the combinatorial explosion in the number of spike patterns to be considered. Therefore, population measaures need to be constructed reducing the number of tests and the recording time required, potentially for the price of being able to answer only a restricted set of questions.rnHere we investigate the population histogram of the time course of neuronal activity as the simplest example. The amplitude distribution of this histogram is called the complexity distribution. Independent of neuron identity it describes the probability to observe a particular number of synchronous spikes.rnOn the basis of two models we illustrate that in the presence of higher-order correlations already the complexity distribution exhibits characteristic deviations from expectation. The distribution reflects the presence of correlation of a given order in the data near the corresponding complexity. However, depending on the details of the model also the regime of low complexities may be perturbed.rnIn conclusion we propose that, for certain research questions, new statistical tools can overcome the problems caused by the combinatorial explosion in massively parallel recordings by evaluating features of the complexity distribution.
机译:神经元集合的特征是参与的神经元的尖峰活动的高阶相关结构。由于记录技术的飞速发展,搜索这样的签名所需的大量并行数据现在变得可用。但是,现有的统计分析工具受到要考虑的尖峰模式数量的组合爆炸的严重限制。因此,需要构建种群测量方法,以减少测试次数和所需的记录时间,这可能是因为只能回答一组有限的问题。为此,我们调查了神经元活动的时间过程的种群直方图,将其作为最简单的例子。该直方图的振幅分布称为复杂度分布。独立于神经元身份,它描述了观察到特定数量的同步尖峰的可能性。在两个模型的基础上,我们说明了在存在高阶相关性的情况下,复杂度分布已经表现出与预期的特征偏差。该分布反映了数据中给定顺序的相关性在相应复杂度附近的存在。但是,根据模型的细节,低复杂度的体制也可能会受到干扰。总之,我们建议,对于某些研究问题,新的统计工具可以通过评估影像的特征来克服大规模并行记录中组合爆炸引起的问题。复杂度分布。

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