A complete fuzzy decision tree technique
β Scribed by Cristina Olaru; Louis Wehenkel
- Publisher
- Elsevier Science
- Year
- 2003
- Tongue
- English
- Weight
- 626 KB
- Volume
- 138
- Category
- Article
- ISSN
- 0165-0114
No coin nor oath required. For personal study only.
β¦ Synopsis
In this paper, a new method of fuzzy decision trees called soft decision trees (SDT) is presented. This method combines tree growing and pruning, to determine the structure of the soft decision tree, with reΓΏtting and backΓΏtting, to improve its generalization capabilities. The method is explained and motivated and its behavior is ΓΏrst analyzed empirically on 3 large databases in terms of classiΓΏcation error rate, model complexity and CPU time. A comparative study on 11 standard UCI Repository databases then shows that the soft decision trees produced by this method are signiΓΏcantly more accurate than standard decision trees. Moreover, a global model variance study shows a much lower variance for soft decision trees than for standard trees as a direct cause of the improved accuracy.
π SIMILAR VOLUMES
We present a recurrent neural network which learns to suggest the next move during the descent along the branches of a decision tree. More precisely, given a decision instance represented by a node in the decision tree, the network provides the degree of membership of each possible move to the fuzzy