The algorithm of text classification based on rough set and support vector machine

@article{Zhuo2010TheAO,
  title={The algorithm of text classification based on rough set and support vector machine},
  author={Wang Zhuo and Chu Lili},
  journal={2010 2nd International Conference on Future Computer and Communication},
  year={2010},
  volume={1},
  pages={V1-365-V1-368}
}
Support Vector Machine (SVM) is a new technology of classification in data mining, which is a small sample of statistical learning theory based on structural risk minimization principle and VC theory. It has simple structure and good classification ability, but its processing speed is slow when we deal with large amount of data, affecting classification performance. In order to overcome the shortcoming that SVM is better adaptability, combining rough sets of attribute reduction algorithm with… CONTINUE READING

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