This paper proposes a new feature screening method for the multi-response ultrahigh dimensional linear model by empirical likelihood. Through a multivariate moment condition, the empirical likelihood induced ranking statistics can exploit the joint effect among responses, and thus result in a much better performance than the methods considering responses individually. More importantly, by the use of empirical likelihood, the new method adapts to the heterogeneity in the conditional variance of random error. The sure screening property of the newly proposed method is proved with the model size controlled within a reasonable scale. Additionally, the new screening method is also extended to a conditional version so that it can recover the hidden predictors which are easily missed by the unconditional method. The corresponding theoretical properties are also provided. Finally, both numerical studies and real data analysis are provided to illustrate the effectiveness of the proposed methods.
翻译:本文件根据经验可能性为多反应超高维线性模型提出了一个新的特征筛选方法。通过多变时刻条件,经验诱发的排名统计可以利用各答复之间的联合效应,从而产生比个别答复方法更好的业绩。更重要的是,通过使用经验可能性,新方法适应随机误差条件差异的异质性。新提议方法的确实特性通过控制在合理范围内的模型大小得到证明。此外,新的筛选方法还扩展为有条件版本,以便它能够回收无条件方法容易遗漏的隐藏预测器。还提供了相应的理论属性。最后,提供了数字研究和真实数据分析,以说明拟议方法的有效性。