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Adaptive Cox Proportional Hazards×Random Survival Forest×
分野疫学生存時間解析
系統Process / pipelineSurvival analysis
提唱年2007 (adaptive LASSO variant); base Cox model 19722008
提唱者Hao Helen Zhang & Wenbin Lu (adaptive LASSO formulation); base Cox model by David R. CoxIshwaran, H., Kogalur, U.B., Blackstone, E.H. & Lauer, M.S.
種類Penalized semi-parametric survival regressionEnsemble machine learning survival model
原典Zhang, H. H., & Lu, W. (2007). Adaptive Lasso for Cox's proportional hazards model. Biometrika, 94(3), 691–703. DOI ↗Ishwaran, H., Kogalur, U.B., Blackstone, E.H. & Lauer, M.S. (2008). Random Survival Forests. Annals of Applied Statistics, 2(3), 841–860. DOI ↗
別名adaptive Cox model, adaptive LASSO Cox regression, penalized Cox proportional hazards, adaptive regularized survival regressionRSF, Rastgele Sağkalım Ormanı (RSF), survival random forest
関連52
概要The Adaptive Cox Proportional Hazards model extends the classic Cox regression for time-to-event outcomes by adding adaptive LASSO (or related) penalization. It simultaneously estimates hazard ratios and performs variable selection, shrinking irrelevant covariate coefficients exactly to zero. This makes it especially valuable in high-dimensional clinical or genomic datasets where the number of candidate predictors is large relative to the number of events.Random Survival Forest (RSF), introduced by Ishwaran, Kogalur, Blackstone, and Lauer in 2008, is an ensemble machine learning method that adapts the Random Forest algorithm to time-to-event (survival) data. Trees are grown using log-rank splitting to handle censored observations naturally, and the ensemble aggregates cumulative hazard functions across hundreds of trees to produce predictions and variable importance rankings.
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ScholarGate手法を比較: Adaptive Cox Proportional Hazards · Random Survival Forest. 2026-06-20に以下より取得 https://scholargate.app/ja/compare