Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers
Winsorize tree is a modified tree that reformed from classification and regression tree (CART). It lays on the strategy of handling and accommodating the outliers simultaneously in all nodes while generating the subsequence branches of tree. Normally, due to the existence of outlier, the accuracy ra...
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my.uum.repo.269252020-03-19T06:17:50Z http://repo.uum.edu.my/26925/ Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers Chee, Keong Ch’ng QA75 Electronic computers. Computer science Winsorize tree is a modified tree that reformed from classification and regression tree (CART). It lays on the strategy of handling and accommodating the outliers simultaneously in all nodes while generating the subsequence branches of tree. Normally, due to the existence of outlier, the accuracy rate of most of the classifiers will be affected. Therefore, we propose winsorize tree which could resist to anomaly data. It protects the originality of the data while performing the splitting process. In this study, winsorize tree was compared to other classifiers. The results obtained from five real datasets indicate that the proposed winsorize tree performs as good as or even better compare to the other data mining techniques based on the misclassification rate. Blue Eyes Intelligence Engineering & Sciences Publication 2019 Article PeerReviewed application/pdf en http://repo.uum.edu.my/26925/1/IJRTE%208%202S2%202019%20197%20201.pdf Chee, Keong Ch’ng (2019) Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers. International Journal of Recent Technology and Engineering, 8 (2S2). pp. 197-201. ISSN 2277-3878 http://doi.org/10.35940/ijrte.B1036.0782S219 doi:10.35940/ijrte.B1036.0782S219 |
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QA75 Electronic computers. Computer science Chee, Keong Ch’ng Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers |
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Winsorize tree is a modified tree that reformed from classification and regression tree (CART). It lays on the strategy of handling and accommodating the outliers simultaneously in all nodes while generating the subsequence branches of tree. Normally, due to the existence of outlier, the accuracy rate of most of the classifiers will be affected. Therefore, we propose winsorize tree which could resist to anomaly data. It protects the originality of the data while performing the splitting process. In this study, winsorize tree was compared to other classifiers. The results obtained from five real datasets indicate that the proposed winsorize tree performs as good as or even better compare to the other data mining techniques based on the misclassification rate. |
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Article |
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Chee, Keong Ch’ng |
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Chee, Keong Ch’ng |
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Chee, Keong Ch’ng |
title |
Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers |
title_short |
Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers |
title_full |
Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers |
title_fullStr |
Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers |
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Comparing the performance of winsorize tree to other data mining techniques for cases involving outliers |
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comparing the performance of winsorize tree to other data mining techniques for cases involving outliers |
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Blue Eyes Intelligence Engineering & Sciences Publication |
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2019 |
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http://repo.uum.edu.my/26925/1/IJRTE%208%202S2%202019%20197%20201.pdf http://repo.uum.edu.my/26925/ http://doi.org/10.35940/ijrte.B1036.0782S219 |
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