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Revealing Common Statistical Behaviors in Heterogeneous Populations

机译:揭示异质人群中的常见统计行为

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In many areas of neuroscience and biological data analysis, it is desired to reveal common patterns among a group of subjects. Such analyses play important roles e.g., in detecting functional brain networks from fMRI scans and in identifying brain regions which show increased activity in response to certain stimuli. Group level techniques usually assume that all subjects in the group behave according to a single statistical model, or that deviations from the common model have simple parametric forms. Therefore, complex subject-specific deviations from the common model severely impair the performance of such methods. In this paper, we propose nonparametric algorithms for estimating the common covariance matrix and the common density function of several variables in a heterogeneous group of subjects. Our estimates converge to the true model as the number of subjects tends to infinity, under very mild conditions. We illustrate the effectiveness of our methods through extensive simulations as well as on real-data from fMRI scans and from arterial blood pressure and photoplethysmogram measurements.
机译:在神经科学和生物数据分析的许多领域,希望揭示一组受试者中的常见模式。这种分析在检测来自FMRI扫描的功能性脑网络和识别脑区响应某些刺激的脑区域时发挥重要作用。组级别技术通常假设组中的所有受试者根据单个统计模型行事,或者与共同模型的偏差具有简单的参数形式。因此,与共同模型的复杂主题特异性偏差严重损害了这些方法的性能。在本文中,我们提出了用于估计共同的协方差矩阵的非参数算法和多相受试者中若干变量的常见密度函数。我们的估计随着受试者的数量倾向于无限,在非常温和的条件下,我们的估计汇集到真实模型。我们通过广泛的模拟以及来自FMRI扫描的实际数据以及动脉血压和光学肉测量测量来说明我们的方法的有效性。

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