Zhou Lifeng, Wang Hong, Xu Qingsong
School of Mathematics and Statistics, Central South University, South Shaoshan Road, Changsha, 410075 Hunan China.
Springerplus. 2016 Aug 26;5(1):1425. doi: 10.1186/s40064-016-3113-5. eCollection 2016.
Recently, rotation forest has been extended to regression and survival analysis problems. However, due to intensive computation incurred by principal component analysis, rotation forest often fails when high-dimensional or big data are confronted. In this study, we extend rotation forest to high dimensional censored time-to-event data analysis by combing random subspace, bagging and rotation forest. Supported by proper statistical analysis, we show that the proposed method random rotation survival forest outperforms state-of-the-art survival ensembles such as random survival forest and popular regularized Cox models.
最近,旋转森林已扩展到回归和生存分析问题。然而,由于主成分分析带来的密集计算,当面对高维或大数据时,旋转森林常常失效。在本研究中,我们通过结合随机子空间、装袋法和旋转森林,将旋转森林扩展到高维删失事件发生时间数据分析。在适当的统计分析支持下,我们表明所提出的随机旋转生存森林方法优于诸如随机生存森林和流行的正则化Cox模型等现有最先进的生存集成方法。