A Review of Ensemble Technique for Improving Majority Voting for Classifier

نویسنده

  • Sadhna K. Mishra
چکیده

Data classification plays important role in the field of data mining. The increasing rate of data diversity and size decrease the performance and efficiency of classifier. The decreasing performance of classifier compromised with unvoted data of classifier. Now the merging of two or more classifier for better prediction and voting of data are used, such techniques are called Ensemble classifier. Initially the resembling of classifier used bogging and boosting technique and later on used random Forest technique. The process of classifier improved the performance and efficiency of data classification. But feature selection process of ensemble technique has important part of classifier. In this paper we present various technique of ensemble classifier for binary classification as well as multi-class

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تاریخ انتشار 2013