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Rule based base classifier selection for bagging algorithm

conference contribution
posted on 2017-12-06, 00:00 authored by A B M Shawkat Ali, Kevin Tickle, B Pang
Bagging is a popular method that improves the classification accuracy for any learning algorithm. A trial and error classifier feeding with the Bagging algorithm is a regular practice for classification tasks in the machine learning community. In this research we propose a rule based method using statistical information for unique classifier selection. The generated rules are verified using 113 classification problem with cross validation approach. That makes Bagging is a computationally faster algorithm and optimal solution for classification performance.

Funding

Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)

History

Parent Title

DMIN 2008 : Proceedings of the Data Mining 2008 International Conference, CSREA Press, [Las Vegas, Nevada]

Start Page

26

End Page

29

Number of Pages

4

Start Date

2008-01-01

ISBN-10

1601320604

Location

Las Vegas, USA

Publisher

CSREA Press

Place of Publication

United States of America

Peer Reviewed

  • Yes

Open Access

  • No

External Author Affiliations

Australian Bureau of Statistics; Faculty of Business and Informatics;

Era Eligible

  • Yes

Name of Conference

International Conference on Data Mining

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