Performance of the Hybrid Approach based on Rough Set Theory
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Published:2020-05-31
Issue:
Volume:
Page:217-224
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ISSN:2220-5810
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Container-title:Pakistan Journal of Statistics and Operation Research
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language:
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Short-container-title:Pak.j.stat.oper.res.
Author:
Kan Kilinc BetulORCID,
YAZIRLI Yonca
Abstract
One of the essential problems in data mining is the removal of negligible variables from the data set. This paper proposes a hybrid approach that uses rough set theory based algorithms to reduct the attribute selected from the data set and utilize reducts to raise the classification success of three learning methods; multinomial logistic regression, support vector machines and random forest using 5-fold cross validation. The performance of the hybrid approach is measured by related statistics. The results show that the hybrid approach is effective as its improved accuracy by 6-12% for the three learning methods.
Publisher
Pakistan Journal of Statistics and Operation Research
Subject
Management Science and Operations Research,Statistics, Probability and Uncertainty,Modeling and Simulation,Statistics and Probability
Cited by
1 articles.
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