Improving the Performance of Boosting for Naive Bayesian Classification

  title={Improving the Performance of Boosting for Naive Bayesian Classification},
  author={Kai Ming Ting and Zijian Zheng},
This paper investigates boosting naive Bayesian classiica-tion. It rst shows that boosting cannot improve the accuracy of the naive Bayesian classiier on average in a set of natural domains. By analyzing the reasons of boosting's failures, we propose to introduce tree structures into naive Bayesian classiication to improve the performance of boosting when working with naive Bayesian classiication. The experimental results show that although introducing tree structures into naive Bayesian… CONTINUE READING

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