articleDec 1, 2006Closed access

Quantile Regression Forests

ETH Zurich

Abstract

Random Forests were introduced as a Machine Learning tool in Breiman (2001) and have since proven to be very popular and powerful for high-dimensional regression and classification. For regression, Random Forests give an accurate approximation of the conditional mean of a response variable. It is shown here that Random Forests provide information about the full conditional distribution of the response variable, not only about the conditional mean. Conditional quantiles can be inferred with Quantile Regression Forests, a generalisation of Random Forests. Quantile Regression Forests give a non-parametric and accurate way of estimating conditional quantiles for high-dimensional predictor variables. The algorithm…

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Topics & keywords

Keywords
  • Quantile regression
  • Random forest
  • Quantile
  • Mathematics
  • Conditional probability distribution
  • Statistics
  • Regression
  • Regression analysis
UN Sustainable Development Goals
  • Life in Land
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