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Classification of high‐dimensional electroencephalography data with location selection using structured spike‐and‐slab prior

机译:使用结构尖峰板的位置选择对高维脑电图数据进行分类

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With the advent of modern technologies, it is increasingly common to deal with data of large dimensions in various scientific fields of study. In this paper, we develop a Bayesian approach for the classification of multi‐subject high‐dimensional electroencephalography (EEG) data. In this EEG data, we have a matrix of covariates corresponding to each subject from either the alcoholic or control group. The matrix covariates have a natural spatial correlation based on the locations of the brain, and temporal correlation as the measurements are taken over time. We employ a divide and conquer strategy by building multiple local Bayesian models at each time point separately. We incorporate the spatial structure through the structured spike‐and‐slab prior, which has inherent variable selection properties. The temporal structure is incorporated within the prior by learning from the local model from the previous time point. We pool the information from the local models and use a weighted average to design a prediction method. We perform simulation studies to show the efficiency of our approach and demonstrate the local Bayesian modeling with a case study on EEG data.
机译:随着现代技术的出现,越来越普遍普遍能够处理各种科学研究领域的大维数据。在本文中,我们开发了贝叶斯方法,用于分类多对象高维脑电图(EEG)数据。在该EEG数据中,我们具有与来自醇或对照组的每个受试者对应的协变量的基质。基质协变量基于大脑的位置具有自然的空间相关性,以及随时间拍摄的测量时的时间相关性。我们通过分别在每个时间点建立多个本地贝叶斯模型来雇用鸿沟和征服策略。我们通过现有的结构化Spike和Slab融合了空间结构,其具有固有的变量选择属性。通过从先前的时间点从本地模型学习,在先前的内容中并入时间结构。我们汇集来自本地模型的信息,并使用加权平均值来设计预测方法。我们执行仿真研究,以展示我们的方法效率,并展示当地贝叶斯建模,以eEG数据为例。

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