Το work with title Efficient algorithms for constructing decision trees with constraints by Garofalakis Minos, Hyun Dongjoon, Rastogi Rajeev, Shim Kyuseok is licensed under Creative Commons Attribution 4.0 International
Bibliographic Citation
M. Garofalakis, D. Hyun, R. Rastogi and K. Shim, "Efficient algorithms for constructing decision trees with constraints", in Sixth ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, August 2000, pp. 335-339.
Classification is an important problem in data mining. A number of popular classifiers construct decision trees to generate class models. Frequently, however, the constructed trees are complex with hundreds of nodes and thus difficult to comprehend, a fact that calls into question an often-cited benefit that decision trees are easy to interpret. In this paper, we address the problem of constructing "simple" decision trees with few nodes that are easy for humans to interpret. By permitting users to specify constraints on tree size or accuracy, and then building the "best" tree that satisfies the constraints, we ensure that the final tree is both easy to understand and has good accuracy. We develop novel branch-and-bound algorithms for pushing the constraints into the building phase of classifiers, and pruning early tree nodes that cannot possibly satisfy the constraints. Our experimental results with real-life and synthetic data sets demonstrate that significant performance speedups and reductions in the number of nodes expanded can be achieved as a result of incorporating knowledge of the constraints into the building step as opposed to applying the constraints after the entire tree is built.