Comparison of tree-based methods used in survival data

Q4 Mathematics
A. Yabacı, D. Sığırlı
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引用次数: 1

Abstract

Abstract Survival trees and forests are popular non-parametric alternatives to parametric and semi-parametric survival models. Conditional inference trees (Ctree) form a non-parametric class of regression trees embedding tree-structured regression models into a well-defined theory of conditional inference procedures. The Ctree is applicable in a varietyof regression-related issues, involving nominal, ordinal, numeric, censored, as well as multivariate response variables and arbitrary measurement scales of covariates. Conditional inference forests (Cforest) consitute a survival forest method which combines a large number of Ctrees. The Cforest provides a unified and flexible framework for ensemble learning in the presence of censoring. The random survival forests (RSF) methodology extends the random forests method enabling the approximation of rich classes of functions while maintaining generalisation errors low. In the present study, the Ctree, Cforest and RSF methods are discussed in detail and the performances of the survival forest methods, namely the Cforest and RSF have been compared with a simulation study. The results of the simulation demonstrate that the RSF method with a log-rank score distinction criteria outperforms the Cforest and the RSF with log-rank distinction criteria.
基于树的方法在生存数据中的比较
摘要生存树和森林是参数和半参数生存模型的流行非参数替代品。条件推理树(Ctree)形成了一类非参数回归树,将树结构回归模型嵌入到条件推理过程的定义良好的理论中。Ctree适用于各种与回归相关的问题,包括名义的、有序的、数字的、截尾的,以及多变量响应变量和协变量的任意测量尺度。条件推理森林(Cforest)是一种结合了大量Ctree的生存森林方法。Cforest为在审查的情况下进行集体学习提供了一个统一而灵活的框架。随机生存森林(RSF)方法扩展了随机森林方法,使其能够近似丰富的函数类,同时保持较低的泛化误差。在本研究中,详细讨论了Ctree、Cforest和RSF方法,并将生存林方法,即Cforest方法和RSF的性能与模拟研究进行了比较。仿真结果表明,采用对数秩分数判别准则的RSF方法优于Cforest和采用对数秩判别准则的RS F方法。
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来源期刊
Statistics in Transition
Statistics in Transition Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.00
自引率
0.00%
发文量
0
审稿时长
9 weeks
期刊介绍: Statistics in Transition (SiT) is an international journal published jointly by the Polish Statistical Association (PTS) and the Central Statistical Office of Poland (CSO/GUS), which sponsors this publication. Launched in 1993, it was issued twice a year until 2006; since then it appears - under a slightly changed title, Statistics in Transition new series - three times a year; and after 2013 as a regular quarterly journal." The journal provides a forum for exchange of ideas and experience amongst members of international community of statisticians, data producers and users, including researchers, teachers, policy makers and the general public. Its initially dominating focus on statistical issues pertinent to transition from centrally planned to a market-oriented economy has gradually been extended to embracing statistical problems related to development and modernization of the system of public (official) statistics, in general.
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