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Feature screening for ultrahigh-dimensional additive logistic models

机译:用于超高压添加物流模型的功能筛选

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摘要

This paper introduces a sure screening method for ultrahigh-dimensional additive logistic models. With binary response variable, additive logistic model is very useful in social and biological research such as disease detection. The proposed feature screening procedure, ALNIS (nonparametric independence screening for additive logistic models), employs B-spline approximation to model the marginal effect, transforming nonparametric problems into parametric ones. This screening process ranks the nonparametric components according to their norms of the marginal likelihood estimate. Under appropriate conditions, the proposed method is shown to possess sure screening property with a vanishing false selection rate. In numerical studies, we use simulated data to compare the performance of the proposed approach with other seven methods that allow the existence of binary response. We further illustrate the proposed procedure by a real data analysis. Numerical comparison indicates that the proposed approach enjoys robustness and effectiveness under ultrahigh-dimensional additive logistic models. (C) 2019 Elsevier By. All rights reserved.
机译:本文介绍了用于超高维附加物流模型的识别筛选方法。通过二进制响应变量,添加物逻辑模型对于疾病检测等社会和生物学研究非常有用。所提出的特征筛选程序,Alnis(添加性物流模型的非参数独立筛选)采用B样条近似来模拟边际效果,将非参数问题转化为参数效果。该筛选过程根据其边缘似然估计的规范排列非参数组分。在适当的条件下,所提出的方法被证明具有肯定的筛选性,具有消失的假选择率。在数值研究中,我们使用模拟数据来比较所提出的方法的性能与其他七种方法允许存在二进制响应。我们进一步通过实际数据分析说明了所提出的程序。数值比较表明,在超高维附加物流模型下,该方法享有鲁棒性和有效性。 (c)2019 Elsevier。版权所有。

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