Predicting Nearly As Well As the Best Pruning of a Decision Tree

作者:David P. Helmbold, Robert E. Schapire

摘要

Many algorithms for inferring a decision tree from data involve a two-phase process: First, a very large decision tree is grown which typically ends up “over-fitting” the data. To reduce over-fitting, in the second phase, the tree is pruned using one of a number of available methods. The final tree is then output and used for classification on test data.

论文关键词:decision trees, pruning, prediction, on-line learning

论文评审过程:

论文官网地址:https://doi.org/10.1023/A:1007396710653