We propose recursively imputed survival tree (RIST) regression for right-censored data. This new nonparametric regression procedure uses a novel recursive imputation approach combined with extremely randomized trees that allows significantly better use of censored data than previous tree based methods, yielding improved model fit and reduced prediction error. The proposed method can also be viewed as a type of Monte Carlo EM algorithm which generates extra diversity in the tree-based fitting process. Simulation studies and data analyses demonstrate the superior performance of RIST compared to previous methods
Survival trees and forests are popular non-parametric alternatives to parametric and semiparametric ...
Objectives. (i) to develop a computationally efficient algorithm of tree-growing for censored surviv...
Survival trees are a useful regression tool to model the relationship between a survival time and a...
We propose recursively imputed survival tree (RIST) regression for right-censored data. This new non...
This paper proposes a novel approach to building regression trees and ensemble learning in survival ...
Survival analysis aims to study the occurrence of a particular event during a follow-up period. Rece...
Machine learning techniques have garnered significant popularity due to their capacity to handle hig...
Random forests have become one of the most popular machine learning tools in recent years. The main ...
We propose interval censored recursive forests (ICRF), an iterative tree ensemble method for interva...
AbstractWe propose a unified strategy for estimator construction, selection, and performance assessm...
We propose a unified strategy for estimator construction, selection, and performance assessment in t...
In this article we introduce Random Survival Forests, an ensemble tree method for the analysis of ri...
Estimating a patient's mortality risk is important in making treatment decisions. Survival trees are...
We propose a unified and flexible framework for ensemble learning in the presence of censoring. For ...
Prediction error curves are increasingly used to assess and compare predictions in survival analysis...
Survival trees and forests are popular non-parametric alternatives to parametric and semiparametric ...
Objectives. (i) to develop a computationally efficient algorithm of tree-growing for censored surviv...
Survival trees are a useful regression tool to model the relationship between a survival time and a...
We propose recursively imputed survival tree (RIST) regression for right-censored data. This new non...
This paper proposes a novel approach to building regression trees and ensemble learning in survival ...
Survival analysis aims to study the occurrence of a particular event during a follow-up period. Rece...
Machine learning techniques have garnered significant popularity due to their capacity to handle hig...
Random forests have become one of the most popular machine learning tools in recent years. The main ...
We propose interval censored recursive forests (ICRF), an iterative tree ensemble method for interva...
AbstractWe propose a unified strategy for estimator construction, selection, and performance assessm...
We propose a unified strategy for estimator construction, selection, and performance assessment in t...
In this article we introduce Random Survival Forests, an ensemble tree method for the analysis of ri...
Estimating a patient's mortality risk is important in making treatment decisions. Survival trees are...
We propose a unified and flexible framework for ensemble learning in the presence of censoring. For ...
Prediction error curves are increasingly used to assess and compare predictions in survival analysis...
Survival trees and forests are popular non-parametric alternatives to parametric and semiparametric ...
Objectives. (i) to develop a computationally efficient algorithm of tree-growing for censored surviv...
Survival trees are a useful regression tool to model the relationship between a survival time and a...