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Bias-corrected random forests in regression

机译:偏差校正后的随机森林回归

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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.
机译:众所周知,与单棵树相比,随机森林会减少回归预测变量的方差,同时保持偏差不变。在许多情况下,风险中的主要成分被证明是偏差的平方,这导致必须进行偏差校正。在本文中,使用随机森林来估计回归函数。提出并讨论了五种不同的估计偏差的方法。模拟和真实数据用于研究这些方法的性能。我们提出的方法在减少回归背景下的偏差方面非常有效。

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