首页> 外文期刊>The Annals of applied statistics >FEATURE SCREENING FOR TIME-VARYING COEFFICIENT MODELS WITH ULTRAHIGH-DIMENSIONAL LONGITUDINAL DATA
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FEATURE SCREENING FOR TIME-VARYING COEFFICIENT MODELS WITH ULTRAHIGH-DIMENSIONAL LONGITUDINAL DATA

机译:具有高维纵向数据的时变系数模型的特征筛选

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摘要

Motivated by an empirical analysis of the Childhood Asthma Management Project, CAMP, we introduce a new screening procedure for varying coefficient models with ultrahigh-dimensional longitudinal predictor variables. The performance of the proposed procedure is investigated via Monte Carlo simulation. Numerical comparisons indicate that it outperforms existing ones substantially, resulting in significant improvements in explained variability and prediction error. Applying these methods to CAMP, we are able to find a number of potentially important genetic mutations related to lung function, several of which exhibit interesting nonlinear patterns around puberty.
机译:根据对儿童哮喘管理项目CAMP的实证分析,我们引入了一种针对具有超高维纵向预测变量的变系数模型的新筛选程序。通过蒙特卡洛模拟研究了所提出程序的性能。数值比较表明,它的性能明显优于现有的,从而大大提高了解释的变异性和预测误差。将这些方法应用于CAMP,我们能够发现许多与肺功能相关的潜在重要基因突变,其中一些在青春期周围表现出有趣的非线性模式。

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