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首页> 外文期刊>Communications in Statistics. A, Theory and Methods >A Note on Breiman's Random Forest Data Mining Technique and Conventional Cox Modeling of Survival Statistics: The Case of the Phantom 'Induct' Covariate in the Ohio State University Kidney Transplant Database
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A Note on Breiman's Random Forest Data Mining Technique and Conventional Cox Modeling of Survival Statistics: The Case of the Phantom 'Induct' Covariate in the Ohio State University Kidney Transplant Database

机译:关于Breiman的随机森林数据挖掘技术和常规COX建模的核心统计:俄亥俄州大学肾移植数据库幻影“衔接”的案例

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摘要

This note represents a portion of the research that has been conducted using the Ohio State University's large kidney transplant database. Our latest results into understanding the impact of covariates on renal graft success including the impact of drug therapy are discussed. The major result here is that using both the Cox model and Breiman 's Random Forest Data Mining techniques has helped to unravel the mystery of the "induct" immunosuppressant covariate slipping in and out of the list of important variables. We also make the interesting observation that the Random Forest method seems to mimic the clinician's (R.P.) understanding of the importance of variables.
机译:该说明代表了使用俄亥俄州州立大学的大肾移植数据库进行的一部分研究。我们最新成绩理解协变量对肾移植成功的影响,包括药物治疗的影响。这里的主要结果是,使用Cox模型和Breiman的随机林数据挖掘技术有助于解开“诱导”免疫抑制剂的谜团进出重要变量列表中。我们还具有有趣的观察,即随机森林方法似乎模仿临床医生的(R.P.)了解变量的重要性。

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