Optimal dyadic decision trees

作者:G. Blanchard, C. Schäfer, Y. Rozenholc, K.-R. Müller

摘要

We introduce a new algorithm building an optimal dyadic decision tree (ODT). The method combines guaranteed performance in the learning theoretical sense and optimal search from the algorithmic point of view. Furthermore it inherits the explanatory power of tree approaches, while improving performance over classical approaches such as CART/C4.5, as shown on experiments on artificial and benchmark data.

论文关键词:Decision tree, Oracle inequality, Adaptive convergence rate, Classification, Density estimation

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10994-007-0717-6