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首页> 外文期刊>The Annals of applied statistics >A FOCUSED INFORMATION CRITERION FOR GRAPHICAL MODELS IN FMRI CONNECTIVITY WITH HIGH-DIMENSIONAL DATA
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A FOCUSED INFORMATION CRITERION FOR GRAPHICAL MODELS IN FMRI CONNECTIVITY WITH HIGH-DIMENSIONAL DATA

机译:具有高维数据的FMRI连接中图形模型的重点信息准则

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摘要

Connectivity in the brain is the most promising approach to explain human behavior. Here we develop a focused information criterion for graphical models to determine brain connectivity tailored to specific research questions. All efforts are concentrated on high-dimensional settings where the number of nodes in the graph is larger than the number of samples. The graphical models may include autoregressive times series components, they can relate graphs from different subjects or pool data via random effects. The proposed method selects a graph with a small estimated mean squared error for a user-specified focus. The performance of the proposed method is assessed on simulated data sets and on a resting state functional magnetic resonance imaging (fMRI) data set where often the number of nodes in the estimated graph is equal to or larger than the number of samples.
机译:大脑中的连通性是解释人类行为的最有前途的方法。在这里,我们为图形模型开发了一个集中的信息标准,以确定针对特定研究问题量身定制的大脑连接性。所有工作都集中在高维设置上,其中图形中的节点数大于样本数。图形模型可以包括自回归时间序列组件,它们可以通过随机效应关联来自不同主题的图或池数据。所提出的方法选择具有小的估计均方误差的图作为用户指定的焦点。在模拟数据集和静止状态功能磁共振成像(fMRI)数据集上评估提出的方法的性能,在这些状态下,估计图中的节点数通常等于或大于样本数。

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