论文标题
Wilcoxon型多元群集弹性网
Wilcoxon-type Multivariate Cluster Elastic Net
论文作者
论文摘要
我们提出了一种用于高维多元回归的方法,该方法对重尾或包含异常值的随机误差分布具有鲁棒性,同时保留了正常随机误差分布的估计精度。我们将Wilcoxon型回归扩展到多元回归模型,作为一种无调的鲁棒方法。此外,提出的方法基于k均值将聚类的L1和L2项定期,该量从多元群集弹性网延伸。回归系数和可变选择的估计是同时产生的。此外,考虑到通过聚类的响应变量相关性之间的关系有望提高估计性性能。数值模拟表明,在重尾误差分布和异常值的情况下,我们所提出的方法过于表现多变量群集方法和其他多元回归方法。它还显示出正常误差分布的稳定性。最后,我们使用与乳腺癌相关的基因的数据示例确认了我们提出的方法的功效。
We propose a method for high dimensional multivariate regression that is robust to random error distributions that are heavy-tailed or contain outliers, while preserving estimation accuracy in normal random error distributions. We extend the Wilcoxon-type regression to a multivariate regression model as a tuning-free approach to robustness. Furthermore, the proposed method regularizes the L1 and L2 terms of the clustering based on k-means, which is extended from the multivariate cluster elastic net. The estimation of the regression coefficient and variable selection are produced simultaneously. Moreover, considering the relationship among the correlation of response variables through the clustering is expected to improve the estimation performance. Numerical simulation demonstrates that our proposed method overperformed the multivariate cluster method and other methods of multiple regression in the case of heavy-tailed error distribution and outliers. It also showed stability in normal error distribution. Finally, we confirm the efficacy of our proposed method using a data example for the gene associated with breast cancer.