Stacked regressions

作者:Leo Breiman

摘要

Stacking regressions is a method for forming linear combinations of different predictors to give improved prediction accuracy. The idea is to use cross-validation data and least squares under non-negativity constraints to determine the coefficients in the combination. Its effectiveness is demonstrated in stacking regression trees of different sizes and in a simulation stacking linear subset and ridge regressions. Reasons why this method works are explored. The idea of stacking originated with Wolpert (1992).

论文关键词:Stacking, Non-negativity, Trees, Subset regression, Combinations

论文评审过程:

论文官网地址:https://doi.org/10.1007/BF00117832