Rough set based approach for inducing decision trees

@article{Wei2007RoughSB,
  title={Rough set based approach for inducing decision trees},
  author={Jinmao Wei and Shuqin Wang and Ming-Yang Wang and Junping You and Dayou Liu},
  journal={Knowl.-Based Syst.},
  year={2007},
  volume={20},
  pages={695-702}
}
This paper presents a new approach for inducing decision trees based on Variable Precision Rough Set Model. The presented approach is aimed at handling uncertain information during the process of inducing decision trees and generalizes the rough set based approach to decision tree construction by allowing some extent misclassification when classifying objects. In the paper, two concepts, i.e. variable precision explicit region, variable precision implicit region, and the process for inducing… CONTINUE READING

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