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Some recent statistical learning methods for longitudinal high-dimensional data

机译:纵向高维数据的一些最新统计学习方法

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摘要

Recent studies have collected high-dimensional data longitudinally. Examples include brain images collected during different scanning sessions and time-course gene expression data. Because of the additional information learned from the temporal changes of the selected features, such longitudinal high-dimensional data, when incorporated into appropriate statistical learning techniques, are able to more accurately predict disease status or responses to a therapeutic treatment. In this article, we review recently proposed statistical learning methods dealing with longitudinal high-dimensional data.
机译:最近的研究纵向收集了高维数据。例子包括在不同扫描阶段收集的脑图像和时程基因表达数据。由于从选定特征的时间变化中获悉了额外的信息,因此,将这些纵向高维数据纳入适当的统计学习技术后,便能够更准确地预测疾病状态或对治疗的反应。在本文中,我们回顾了最近提出的处理纵向高维数据的统计学习方法。

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