Selection of accurate and diverse trees based on individual and collective performance in an ensemble has recently been studied for classification and regression problems. Following this notion, the possibility of selecting optimal survival trees is considered in this work. Initially, a large set of survival trees are grown by the method of random survival forest. Using out-of-bag observations for each corresponding survival tree, the trees grown are ranked in ascending order with respect to their prediction errors. A certain number of the top ranked survival trees are selected to be assessed for their collective performance in an ensemble. An ensemble is initiated from the top ranked selected survival tree and further trees are tested one ...
Recent expansions of technology led to growth and availability of different types of data. This, thu...
Classification is a process where a classifier predicts a class label to an object using the set of ...
Survival analysis methods are a mainstay of the biomedical fields but are finding increasing use in ...
This paper proposes a novel approach to building regression trees and ensemble learning in survival ...
Machine learning techniques have garnered significant popularity due to their capacity to handle hig...
Predictive performance of a random forest ensemble is highly associated with the strength of individ...
Survival trees and forests are popular non-parametric alternatives to parametric and semiparametric ...
The predictive performance of a random forest ensemble is highly associated with the strength of ind...
Tree ensembles have proven to be a popular and powerful tool for predictive modeling tasks. The theo...
Survival analysis aims to study the occurrence of a particular event during a follow-up period. Rece...
Machine learning methods can be used for estimating the class membership probability of an observati...
In this article we introduce Random Survival Forests, an ensemble tree method for the analysis of ri...
Survival trees are a useful regression tool to model the relationship between a survival time and a...
Random forests have become one of the most popular machine learning tools in recent years. The main ...
Access to thesis permanently restricted to Ball State community onlySurvival analysis, which is the ...
Recent expansions of technology led to growth and availability of different types of data. This, thu...
Classification is a process where a classifier predicts a class label to an object using the set of ...
Survival analysis methods are a mainstay of the biomedical fields but are finding increasing use in ...
This paper proposes a novel approach to building regression trees and ensemble learning in survival ...
Machine learning techniques have garnered significant popularity due to their capacity to handle hig...
Predictive performance of a random forest ensemble is highly associated with the strength of individ...
Survival trees and forests are popular non-parametric alternatives to parametric and semiparametric ...
The predictive performance of a random forest ensemble is highly associated with the strength of ind...
Tree ensembles have proven to be a popular and powerful tool for predictive modeling tasks. The theo...
Survival analysis aims to study the occurrence of a particular event during a follow-up period. Rece...
Machine learning methods can be used for estimating the class membership probability of an observati...
In this article we introduce Random Survival Forests, an ensemble tree method for the analysis of ri...
Survival trees are a useful regression tool to model the relationship between a survival time and a...
Random forests have become one of the most popular machine learning tools in recent years. The main ...
Access to thesis permanently restricted to Ball State community onlySurvival analysis, which is the ...
Recent expansions of technology led to growth and availability of different types of data. This, thu...
Classification is a process where a classifier predicts a class label to an object using the set of ...
Survival analysis methods are a mainstay of the biomedical fields but are finding increasing use in ...