Bias-corrected random forests in regression 论文

2011Journal of Applied Statistics引用 215
Advanced Statistical Methods and ModelsFace and Expression RecognitionStatistical Methods and Inference

摘要

It is well known that random forests reduce the variance of the regression predictors compared to a single tree, while leaving the bias unchanged. In many situations, the dominating component in the risk turns out to be the squared bias, which leads to the necessity of bias correction. In this paper, random forests are used to estimate the regression function. Five different methods for estimating bias are proposed and discussed. Simulated and real data are used to study the performance of these methods. Our proposed methods are significantly effective in reducing bias in regression context.