A Selective Review on Random Survival Forests for High Dimensional Data

Quant Biosci. 2017;36(2):85-96. doi: 10.22283/qbs.2017.36.2.85.

Abstract

Over the past decades, there has been considerable interest in applying statistical machine learning methods in survival analysis. Ensemble based approaches, especially random survival forests, have been developed in a variety of contexts due to their high precision and non-parametric nature. This article aims to provide a timely review on recent developments and applications of random survival forests for time-to-event data with high dimensional covariates. This selective review begins with an introduction to the random survival forest framework, followed by a survey of recent developments on splitting criteria, variable selection, and other advanced topics of random survival forests for time-to-event data in high dimensional settings. We also discuss potential research directions for future research.

Keywords: Censoring; Random survival forest; Survival ensemble; Survival tree; Time-to-event data.