Ahmed Syed Ejaz, Arabi Belaghi Reza, Hussein Abdulkhadir Ahmed
Department of Mathematics and Statistics, Brock University, St. Catharines, ON L2S 3A1, Canada.
Department of Energy and Technology, Swedish University of Agricultural Sciences, P.O. Box 7032, 750 07 Uppsala, Sweden.
Entropy (Basel). 2025 Feb 28;27(3):254. doi: 10.3390/e27030254.
Regularization methods such as LASSO, adaptive LASSO, Elastic-Net, and SCAD are widely employed for variable selection in statistical modeling. However, these methods primarily focus on variables with strong effects while often overlooking weaker signals, potentially leading to biased parameter estimates. To address this limitation, Gao, Ahmed, and Feng (2017) introduced a corrected shrinkage estimator that incorporates both weak and strong signals, though their results were confined to linear models. The applicability of such approaches to survival data remains unclear, despite the prevalence of survival regression involving both strong and weak effects in biomedical research. To bridge this gap, we propose a novel class of post-selection shrinkage estimators tailored to the Cox model framework. We establish the asymptotic properties of the proposed estimators and demonstrate their potential to enhance estimation and prediction accuracy through simulations that explicitly incorporate weak signals. Finally, we validate the practical utility of our approach by applying it to two real-world datasets, showcasing its advantages over existing methods.
诸如LASSO、自适应LASSO、弹性网络和SCAD等正则化方法在统计建模中的变量选择中被广泛应用。然而,这些方法主要关注具有强效应的变量,而常常忽略较弱的信号,这可能导致参数估计有偏差。为了解决这一局限性,高、艾哈迈德和冯(2017年)引入了一种校正收缩估计器,该估计器同时纳入了弱信号和强信号,不过他们的结果仅限于线性模型。尽管在生物医学研究中,同时涉及强效应和弱效应的生存回归很普遍,但此类方法对生存数据的适用性仍不明确。为了弥补这一差距,我们提出了一类专门针对Cox模型框架的新型选择后收缩估计器。我们建立了所提出估计器的渐近性质,并通过明确纳入弱信号的模拟,证明了它们提高估计和预测准确性的潜力。最后,我们将该方法应用于两个真实世界的数据集,验证了其实际效用,展示了它相对于现有方法的优势。