Title of article :
Experiments with Two New Boosting Algorithms
Author/Authors :
Xiaowei Sun، نويسنده , , Hongbo Zhou، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Boosting is an effective classifier combination method, which can improve classification performance of an
unstable learning algorithm. But it dose not make much more improvement of a stable learning algorithm. In
this paper, multiple TAN classifiers are combined by a combination method called Boosting-MultiTAN that
is compared with the Boosting-BAN classifier which is boosting based on BAN combination. We describe
experiments that carried out to assess how well the two algorithms perform on real learning problems. Finally,
experimental results show that the Boosting-BAN has higher classification accuracy on most data sets,
but Boosting-MultiTAN has good effect on others. These results argue that boosting algorithm deserve more
attention in machine learning and data mining communities.
Keywords :
Boosting , Combination method , TAN , BAN , Bayesian network classifier
Journal title :
Intelligent Information Management
Journal title :
Intelligent Information Management